Showing posts with label OEB. Show all posts
Showing posts with label OEB. Show all posts

Wednesday, 27 November 2019

Why is #AI useful to pro-actively prepare #learners in a changing world? #skills

Preparing for my talk today at Online Educa Berlin, after a great workshop-filled day yesterday (one of the workshops was on preparing for the 4th industrial revolution guided by Gilly Salmonhttps://www.gillysalmon.com/presentations.html ) and a wonderfully inspiring and ideas provoking workshop with Bryan Alexander looking at methods to predict parts of the future).

Below you can find my slides for the session at Online Educa Berlin looking at ways that Artificial Intelligence can be used to pro-actively prepare learners for the skills of the future.

It covers the steps we have tackled at InnoEnergy with the skills engine. In the talk I will share our approach, and how this differs from what was previously done. The slides are rather minimal, but if you download the talk, you can look at the notes in the slides to get the full picture.



Thursday, 6 December 2018

Data driven #education session #OEB18 @oebconference #data @m_a_s_c

From the session on data driven education, with great EU links and projects.

Carlos Delgado Kloos: using analytics in education
Opportunities
Khan academy system is a proven system, with one of the best visualisations of how the students are advancing. With a lot of stats and graphs. Carlos used this approach for their 0 courses (courses on basic knowledge that students must know before moving on in higher ed).
Based on the Khan stats, they built a high level analytics system.
Predictions in MOOCs (see paper of Kloos), focusing on drop-out.
Monitoring in SPOCs (small private online courses)
Measurement of Real Workload of the students, the tool adapts the workload to the reality.
FlipApp (to gamify flipped classroom), remember and to notify the students that they need to see the videos before class, or they will not be able to follow. (Inge: sent to Barbara).
Creation of Educational Material using Google classroom. Google classroom sometimes knows what the answer of a quiz will be, which can save time for the teacher.
Learning analytics to improve teacher content delivery.
Use of IRT (Item Response Theory) to see which quizzes are more useful and effective, interesting to select quizzes.
Coursera define skills, match it to the jobs and based on that recommend courses.
Industry 4.0 (big data, AI…) for industry, can be transferred to Education 4.0 (learning analytics based on machine learning). (Education3.0 is using the cloud, where both learners and teachers go to).
Machine learning infers the rules from getting answers which are data analysed (in comparison to computer learning, which is just the opposite, based on rules, giving answers).
Dangers:
Correlations: correlations are not necessary correct conclusions. (see spurious correlations for fun links).
Bias: e.g. decisions for giving credit based on redlining and weblining.
Decisions for recruitment: eg. Amazon recruits that the automation of their recruiting system resulted in a biase leading to recruiting more men than women.
Decisions in trials: eg. Compas is used by judges to calculate repeat offenders, but color of skin was a clear bias in this program.
Chinese social credit system which gives minor points if you do something that is seen as not being ‘proper’. Also combined with facial recognition, and monitoring attention in class (Hangzhou number 11 high school).
Monitoring (gaggle, …)
Challenges
Luca challenge: responsible use of AI.
GDPR Art 22: automated individual decision-making, including profiling.
Sheilaproject.eu : identifying policies to adopt learning analytics. Bit.ly/sheilaMOOC is the course on the project.
Atoms and bits comparison. As with atoms you can use it for the better, or for the worse (like atomic bombs).


Maren Scheffel on Getting the trust into trusted learning analytics @m_a_s_c
(Welten Institute of Open University, Netherlands)
Learning analytics: Siemens (2011) definition still the norm. But nowadays it is a lot about analytics, but only little about learning.

Trust: currently we believe that something is reliable, the truth, or ability. Multiple definitions of trust, it is multidimensional and multidisciplinary construct. Luhmanndefined trust as a way to cope with risk, complexity, and a lack of system understanding. For Luhmann the concept of trust compensates for insufficient capabilities for fully understanding the complexity of the world (Luhmann, 1979, trust and …)
 For these reasons we must be transparent, reliable, and be integer to attract the trust of learners. There should not be a black box, but it should be a transparent box with algorithms (transparent indicators, open algorithms, full access to data, knowing who accesses your data).

Policies: see https://sheilaproject.eu   

User involvement and co-creation: see the competen-SEA project see http://competen-sea.eu capacity building projects for remote areas or sensitive learner groups. One of the outcomes was to co-design to create MOOCs (and trust) getting all the stakeholders together in order to come to an end product. MOOCs for people, by people.  Twitter #competenSEA

Wednesday, 5 December 2018

@oebconference workshop notes and documents #instructionalDesign #learningTools

After being physically out of the learning circuit for about a year and a half, it is really nice to get active again. And what better venue to rekindle professional interests than at Online Educa Berlin.

Yesterday I lead a workshop on using an ID instrument I call the Instructional Design Variation matrix (IDVmatrix). It is an instrument to reflect on the learning architecture (including tools and approaches) that you are currently using, to see whether these tools enable you to build a more contextualized or standardized type of learning (the list organises learning tools according to 5 parameters: informal - formal, simple - complex, free - expensive, standardized to contextualized, and more aimed at individual learning - social learning). The documents of the workshop can be seen here.

The workshop started of with an activity called 'winning a workshop survival bag', where the attendees could win a bag with cookies, nuts, and of course the template and lists of the IDVmatrix.
We then proceeded to give a bit of background on the activity, and how it related to the IDVmatrix.
Afterwards focusing on learning cases, and particularly challenges that the participants of the workshop were facing.
And we ended up trying to find solutions for these cases, sharing information, connections, ideas (have a look at this engaging crowd - movie recorded during the session).
The workshop was using elements from location-based learning, networking, mobile learning, machine learning, just-in-time learning, social learning, social media, multimedia, note taking, and a bit of gamification.

It was a wonderful crowd, so everyone went away with ideas. The networking part went very well also due to the icebreaker activity at the beginning. This was the icebreaker:

The WorkShop survival bag challenge!
Four actions, 1 bag for each team!

Action 1
Which person of your group has the longest first name?
Write down that name in the first box below.

Action 2

  • Choose two person prior to this challenge: a person who will record a short (approx. 6 seconds)
  • video with their phone and tweet it, and a person/s who will talk in that video.
  • Record a 6 second video which includes a booth at the OEB exhibition (shown in the
  • background) and during which a person gives a short reason why this particular learning solution
  • (the one represented by the booth) would be of use to that persons learning environment
  • (either personal or professional).
  • Once you have recorded the video, share it on twitter using the following hashtags: #OEB #M5
  • #teamX (with X being the number of your team, e.g. #team1) . This share is necessary to get the
  • next word of your WS survival bag challenge.
  • Once you upload the movie, you will get a response tweet on #OEB #M5 #teamX (again with the
  • number of your team).

Write down the word you received in response to your video in the second box below.

Action 3

  • Go to the room which is shown in the 360° picture in twitter (see #M5 #OEBAllTeams).
  • Find the spot where 5 pages are lined up, each of them with another language sign written on
  • them.
  • Each team has to ‘translate’ the sign assigned to their team. You can use the Google Translateapp for this (see google play, the app is free!).
Write down the translation in the third box below.

Action 4
Say the following words into the Google Home device which is located in the WS room

“OK Google 'say word box 1', say word box 2, say word box 3“

If Google answers, you will get your WS survival bag!

And although the names were not always very English, with a bit of tweaking using the IFTTT app, all the teams were able to get Google home mini to congratulate them for getting all the challenges right. 

Wednesday, 7 December 2016

How can we be safe in an online environment? #oeb16 workshop

Workshops tend to take at least half a day to come to a result. But at OnlineEduca I had the pleasure of meeting Christian Friedrich and it is amazing what this man can inspire people to do in just 60 minutes time!

To tackle the subject of 'how can we be safe in an online environment' and let people come up with ideas they did not know they had before in such a small period of time... is amazing. Admittedly, his material would enable a flipped workshop approach. Where - as an ideal participant - you would read up on all the material before coming to the workshop, but in this case, the participants simply did not have the time. OnlineEduca was packed with sessions, and this workshop was organised at the end of day 1, meaning that most of the participants were already slightly tired.
But somehow this did not affect Christian, for he got us to come up with a short statement on how we could safeguard our own ideas and writings while sharing ideas online.

If you can get Christian in your conference, I am sure that the resulting workshop will give the attending participants ideas, let them think about privacy, security, identity and contemporary digital traces.

For this workshop, the participants need to identify with a specific target group, then think about potential online risks they might face, and how to counter these risks. So, in a way it was all about openness versus privacy & security. Some interesting links provided by Christian: the ethics of big data in higher education, an introduction to online privacy, and Lawrie Phipps with a great analysis on the effect of algorithms, and an audio recording with Audrey Waters and Kin Lane on Online Ownership.

This was the result from the team effort of Jeanine Reuteman, Luca Morini, Christian Glahn and Marit from Denmark (sorry, I did not remember the full name) and myself.

Tuesday, 6 December 2016

Hybrid presence an emerging format #OEB16

Last week I had the pleasure of being part of a virtual connecting meeting at OnlineEducaBerlin. The initiative came from the VConnecting group. For this session, onsite buddies Christian Friedrich, Hoda Mostafa, and I spoke with guests Jeanine Reutemann (Jeanine researches the affordances of video and has great insights on it!). Ilona Buchem (Ilona has a long standing tech record, her latest research looks at open badges) and Aziza Ellozy (Aziza is a leader in faculty development, and making learning visible). The recording can be seen below (it was a hangout).

For those who are not familiar with the concept of Virtually Connecting through online buddies, have a look at the website. During Online Educa Berlin 2016 there were four virtual connecting meetings (I only could attend one, as I was chairing or speaking at the other moments), and it really provides an additional layer of interest to conferences. I had a previous experience with Whitney Kilgore at eMOOCs2015 which I blogged about here, and which worked inspiring as well.

The format has a basic idea behind it: connecting people with similar interests across conference boundaries (so those who can attend a conference, share knowledge that is provided within the conference to others who are unable to attend the venue).

Although the idea is simple enough, what is interesting is the emerging layer of knowledge that is transmitted. In some way those who attend get a meta layer going. Or at least that was what I felt when joining one of the virtual connecting sessions. When reflecting on why this extra - and to me meaningful layer of learning emerges - I had the idea that it might come from the available expertise in all who entered the conversation. The shared yet complementary expertise gave spice to the conversation, sparking new ideas and links to previous experiences on topic. And I think it was also related to similar interests that come together at that point, and drive the conversation forward. 

In the session that I was in, the conversation covered the plenary keynotes, some ideas coming from the keynote speakers and how we (participants in the virtual meeting) agreed or disagreed, the overall feeling of the conference, the formats and the consequent results of the sessions...

#OEB16 results from personalised learning session #personalLearning

This session, which I facilitated at OEB16, had one of the ‘slow cooking’ formats. It takes time for all the elements to come together, and you work with those elements you find in the room (so thank you to all the participants) and … somehow magic happened as you can see from the results shared below. Each of the participants got this synopsis sent to them. The participants had a background in volunteering (and supporting the volunteers across the country through offering online solutions to their questions), corporate environments (ranging from actual online developers, to medical support professionals, to management), and academics & teachers. All of us are faced with similar challenges as the world keeps coming up with technical solutions and keeps changing, where our task as educational technologists/trainers is to keep bridging the divides created by change and innovative technology.

The aim of this OEB session: enabling personalised learning by sharing experiences/knowledge
In this blogpost, I will first share the list of challenges that we (all who participated) came up with (pictures), then share the actions that could lead to solutions (also 5 pictures from the flip papers), and finally the way I interpret those challenges and solutions. To all, feel free to add your interpretation, as many brains make stronger solutions.

The list from the challenges we face: grouped as learning characteristics, technology and media, individual & collaborative learning, contexts, and organising learning.

The list of solutions we started to think off:

How can we enable personalised learning looking at what the participants shared. My interpretation of what we came up with:

From trainer/teacher perspective:
  • Try to cater to intrinsic motivation: solutions for the learner, adding to the interest of the learner, using tools the learner feels comfortable with.
  • Provide options for just-in-time learning (the concept comes from mobile learning, but the reality is that we live in a constantly connected world where just-in-time is more broadly available, yet under-used).
  • Deliver authentic learning opportunities. This includes selecting people in the field/workfloor to become trainers/teachers (eg. Offer action cam to record actual processes).
  • Crowdsourcing the learners for needs and solutions. Start from learning goals the learners might have: start from their learning goals to direct them to solutions, or – if the solutions is not yet existing – allow them to share a solution once they found it. This means following up on problems put forward by the learner. Maybe built a channel or list with problems or needs voiced by the learners.
  • The learner-generated products (movies, written problem solving options… all media) must be made retrievable afterwards in order for these materials to be found: meaningful meta tagging, offer strands of learning (see next point).
  • Offer strands of learning: e.g. offer Continued Professional Development options per field, where learners can register for updates on particular fields (e.g. if they work on language learning, provide a push-solution that notifies them when a new bit of information is available (a push-solution is a messaging service that pushes news towards either a mobile or internet-connected device to which people are registered. For instance: registering for an online list which only shares new information in one particular field). Another strand of learning is a blockchain learning option that can be build: one learner finds a solution for learning how to draw in YouTube (and shares it on a central list), another learner begins advanced learning by following a MOOC on it (and shares it)… where at the end the learners have collaboratively set up an informal curriculum for learning how to draw and become really good at it. Use micro-learning as a way to solve small needs, yet be able to organise these micro-learning moments into a larger learning pathway.
  • Stimulate informal as well as formal learning inside and outside the institute/company/organisation: if someone faces a problem, but they found a solution outside the company/university… then tell them where they can share that location or solutions.
  • Increase literacy skills by a variety of ways: using fun games, and formal dry options, … when digital literacy skills increase, more tech solutions can come from the learner.
  • Make learners aware of copyright options.


From a manager perspective:
  • We need to activate the experts: enabling durable sharing of expertise. Reach those who are willing to become champions for specific topics or skills.
  • A sharing culture is something that needs to be visible and used at all levels: top managers sharing what they learn, as well as volunteers. Leadership in sharing and collaborating must happen at all levels.
  • Make the outcomes of learning visible (indicators, productivity…) to show that investment in learning pays off.
  • Provide socializing spaces and times: on many occasions people keep information to themselves, until they hear others are also facing the same problems. By creating more social spaces, more information exchange can take place.
  • Allow learner-generated production time to take place (this is a way to compensate those learners who are willing to be champions in a specific field and allow them to deliver useful material).
  • Set up a learning support task force (a new product is launched, or a new production line or workflow needs to be implemented; the support task force can help with building change enablers or customised content with the help of the learners/workers/volunteers): instructional designers, media savvy people that can help to make learner-generated media/products be disseminated across the group/department/peer experts.
  • Provide a clear pathway from the moment a problem arises at the learner/worker/volunteer level: if something is a problem, to whom must they convey the problem and how. And once the problem is communicated, how will it be solved/acted upon (and by whom). Making these learning/teaching pathways transparent to all.
  • Designate content curators: allow people with expertise to curate content for a group. Make the curated content available to the rest of the group, like digital newspapers that highlight potentially useful new insights.


From developers perspective:
  • Integrate self-evaluation or visible learning options inside learning apps/designs/hard-& software.
  • Allow inside and outside information to be gathered or linked to: to enable learners to add additional information that might help others.
  • Use more learning solutions from the mobile learning evidence-based theories: make learning seamingless, use augmented/alternate reality options, just-in-time learning, provide access to immediate sharing of knowledge opportunities (e.g. mobile movies streaming from a device, sharing descriptions to an easily retrievable specific field content area).
  • Allow collaborative learning to take place: enable group formation to communicate more efficiently or intuitively to work on a problem.
  • Allow integration of existing tools (that way the learner can come into your tool, while still using their own preferred media).
  • Make the data that users produce secure, yet allowing them to share on other platforms (if it is allowed, and they want to).
  • Provide a granular approach, that can be embedded into existing systems, yet adds easy micro-learning options.
  • Create ways to indicate the usefulness of any part of the solution.


From a learner perspective:
  • Make learning visible for the learner: showing them the progress they have made (projects, building digital or real life artefacts), provide self-evaluation options (e.g. reflecting on the process, thus increasing meta learning skills).
  • Learning how to describe an existing need: knowing how to isolate the problem, where to go to next, and describing it to others that might be able to help.
  • Share with others (in corporate terms: Work Out Loud). Sharing can be quite scary at first, but sharing makes your own learning visible, it allows others to see you as a champion, and it increases your skills and knowledge as you automatically reflect deeper on any subject as you share with others.
  • Daring to fail: learn that it is okay to fail at first, but simply keep doing something if you think it will be useful in the end.
  • Built a network of people that are expert in your field of interest.


When looking at the above, I think that in most cases information is available, but enabling people to be able to find (and distinguish) good quality information, and resharing that new knowledge is still a challenge. The thought that sharing is caring, and will help all of us, must be either reinforced or reignited. 

Thursday, 1 December 2016

#OEB16 the exhibition ideas and a great peer reviewing tool

What do you look for, when you are wandering through multiple online learning stands at a conference? I start out looking around just out of curiosity, but as soon as I get a few stalls further… I get ideas. Positive and negative one’s.

Let me start with a really nice surprise. The Peergrade was the best surprise (for me). David Kofoed Wind (from Denmark) built this during his PhD years. It is a truly practical, amazingly efficient and directly applicable peer reviewing software. And, any teacher can use it for free. The software is written in python, with some java scripting… and it looks magnificent.
You can use the software to let students or learning peers of any kind to review the work of others. The software offers:
·        A really easy to use option for setting up a comprehensive rubric (yes/no questions, commenting feedback, scaling options)
·        A nice interface to use these rubrics for evaluation, and nice additions for grading these learner reviews
·        Dashboard visuals that let you see disparities at a glance. Useful meta visuals to see where a potential discussion happens (good from teacher perspective)
So, as a teacher, you can see in just a couple of glances which projects or documents are creating skewed reviews/discussions, where you might need to add your own feedback to clear the air of a discussion, you can also immediately see how good the reviewing process is of each learner, you can even discuss meta reviewing data… I was truly impressed by the scale of the options and the practical use of the program. So have a look if you are searching for a peer review option with multiple uses. The dashboards are really worthwhile to have a look at, such meta-learning visualisation options… Really, great. Especially, as learners will get more feedback on their work and get a deeper understanding of what the actual process from different angles.

Another option which triggered an idea, was provided by LinkLearning. The development of this self-contained software is still in progress, but it made me think. The software enables courses to be built in the cloud, but the learner can use the courses both online and offline (nice and necessary contemporary element for every type of LMS). They also use a very visual layer for courses, which helps to stay on top of content. But what got me excited was the fact that you could build your own course, and than integrate it in any type of LMS (if I understood correctly). This means you could let students/learners build a course or part of a curriculum, by using (creative commons based) course content from the web, not only curating content, but constructing it into an actual course, while letting you keep that course set-up as you move to other platforms. So, I thought that would be something nice, being able to build your own curriculum. This would be useful for training teachers ... I think I might go for something like that in a future class. A long project, asking students/learners to build me part of a curriculum that would be useful for them later on as well, so closely related to a niche topic of their choice, that they could simply use (either immediately, offering them authentic teaching credentials, or later, saving lesson prep time).

On another note, most of the stalls at exhibition events look magnificent, they are made out of big colourful cardboard … just to make an impression. And most of those stall carry big hype-driven words: personalised learning (which is interpreted on many occasion as: it is available on any mobile, truly funny), or take control of your own learning (which is mostly not what I would consider it to be actual curating your own content for learning, but rather meaning: we provide you the content, and you plan when to learn it). This year I also started looking at stalls that I simply do not get.

Companies (more then one!) that offer assessment ID security… Why?! For if we need such software’s, than it is clear to me that education is not at all as disrupted as some say it is. Software that will keep an assessment taker from using any type of solution that might help her/him in solving problems at hand in a test is more an expression of bad assessment tests. First of all, a test of any kind should be so well conceived, that a) you would never be able to solve it without already existing deep knowledge, even if you had 3 hours of any type of internet access and b) that those type of assessments should only make up a fraction of any complete curriculum testing. Why would assessment without access to any type of help be considered as the ultimate testing option ?! It is completely non-social, and thus non-human – thank you Aristotle.  


Wednesday, 2 March 2016

Keynote excerpt on 2 Big Data facts impacting #education #learninganalytics #data

About a year ago I was asked to be part of a keynote debate at Online Educa Berlin. The excerpt was part of the keynote debate that is a much loved item at the Online Educa Berlin conference. The idea behind the keynote debate is to discuss in a parliamentary fashion a specific online learning motion. Each panel member can attempt to interrupt the speaker who has the floor, and it is each of the speakers challenge to keep on top of what they want to say, while stopping the other panel members to interrupt.

This keynote was on Big Data and its impact on education; Big data is changing all aspects of society, as Online Educa Berlin is one of the leading eLearning conferences, this debate put forward the motion: "big data is corrupting education". During the keynote debate an argument for or against the motion is made, each time by two speakers. The speakers in this keynote debate were Ellen Wagner, Victor Mayer Schönberger, George Siemens and myself. Together with Ellen Wagner I was supporting the motion.

The full debate can be seen here, if you scroll to the right in the keynote section. OEB offers a wide collection of recorded material from keynote speakers, and it is a treat.

As each speaker only gets 8 - 10 minutes to defend or reject a motion, I decided to focus on two aspects of Big Data impacting education: creating a bigger digital divide, and reproducing the norm. So here is the video of this keynote.

Tuesday, 1 December 2015

#OEB15 Chairing the New versus Old Schools session #SPL07

This Friday I am chairing a session on New versus Old schools during Online Educa Berlin, looking at the emerging schools and learning centres. In the session I have the opportunity to listen to, and moderate debates with Maurice de Hond and David Cummins. If you are interested, or if you are an un-schooler, new educational thinker... join the session on Friday 4 December, between 12 - 13 o'clock on the spotlight stage room Potsdam III.

Now in preparing this session, I contacted both speakers. And admittedly when I was reading the name of Maurice's new school (The Steve Jobs School), I was thinking "oh no, wondering why they used that name... marketing!" .... but in less then a minute that man enlightened me and got me enthusiastic. This is not just a hyped name, it is a truly well-build concept. Maurice's school concept is actually making a start of personalised learning from primary school onward. While still checking the boxes and demands asked by government (mandatory curriculum) he manages to refurbish established schools into a new concept school that allows young pupils to choose their own focus of subjects, plan their week, and learn by slowly (or quickly) building autonomous learning skills. In order to achieve this, he has twisted the school lessons a bit (e.g. using stamgroepen (something like kernel groups)) and he has built software that enables planning, assessment, and scheduling including learners, teachers and parents alike. Nice one! To give an idea of what one of the schools looks like, I am embedding a nice video (English subtitles). 

David Cummins will focus on the Hacker school, which has also stolen my heart by their conscious aim to attract the less common learners as future programmers. They really put energy and zest into the concept of diversity and culture. Which to me is always a positive action. 

#OEB15 MOOCs in Schools adding a lifelong learning experience #OPN19

On Thursday 3 December 2015 during Online Educa Berlin, Kathy Demeulenaere, Heidi Steegen and myself will be leading a session looking into MOOC and how they can be used in secondary schools (high schools, K12) to enhance lifelong learning skills and put more students on route to find their own meaningful, professional life. The session is an open session, where we will start off with our own project. In brief, our project is about supporting 16 - 17 year old students to start learning with MOOCs, and then letting them choose the MOOC they want to follow, in a non-native language, specifically in French or English).

This means that teachers need to let go: they are guides, no longer teachers; and it means that students need to enhance critical thinking and autonomous learning, which can be quite scary. But while doing this, and might I add that the three teachers who are leading this project obtain amazing results (looking at self-esteem and motivation of students). But there are also many challenges, as well as new opportunities that might be good to find answers too or to explore. In this session we want to look for answers to these challenges (maybe we can find answers in the experiences from participants in the session), and also explore options that might help in getting these lifelong learning skills somehow manifested or strengthened by educational technologies.

So feel free to join this session (it is planned for 90 minutes, with our project highlighted for the first 30 minutes and then gathering answers and options for challenges). The session is #OPN19 on Thursday 3 December, from 14.15 - 15.45 o'clock in room Lincke at the OEB conference hotel.

These are the slides for the session (with links to more information):


Tuesday, 9 December 2014

#OEB14 session initiating Unified Learning Theory brainstorm #education

During the last Online Educa Berlin conference, I tried to see whether an open format would work. The general idea was: all of us eLearning experts coming together to find a solution for an existing challenge (I know, I still need to work on shortening the format description :-)

Format of session: peer-to-peer experience sharing
The process was based on talking among ourselves as peers, and at the same time experts, after haven given an eLearning or learning challenge.
The challenge was that current eLearning and learning in general is completely dispersed, and disconnected from a central learning model/framework/theory. How do we - as experts, as practitioners - look upon this disconnected amalgam of different models, and specifically: would there be a way to combine all of these learning types.

Towards a Unified Learning Theory
So what did I have in mind with the suggestion that there are multiple models for different types of (e)Learning, yet no one model - or as I had it in my mind: Unified Learning Theory, an analog for the Unified Field Theory, in combination with String Theory, although I must confess that the idea I have in mind is more related to String theory (if a non-physicist can make that assumption). As an example of why I feel the Unified Learning Theory might parallel String theory approach: the magnification levels (now, I now this is still very sketchy, so feel free to share shortcomings or positive additions:

Different levels:

  • Learning overall
  • Educational field (e.g. mobile learning)
  • Models related to those particular fields (e.g. FRAME model)
  • The elements put forward in those frameworks/models (e.g. device aspect, learner aspect, social aspect)
  • And breaking those elements down to their basic parts: 
    • either the stimuli or patterns that influence these elements of the models (e.g. with regard to learner aspect: prior knowledge, financial options)
    • or the base elements of these elements: neural pathways, social drive, ...

As you can see, and if I tried with different learning fields, it seems I cannot break all the elements down to the same base elements, which then again points more towards Unified Field theory where things co-exist one next to the other (again, seen from a simple pedagogy/techy educated mind). Or maybe the full breakdown logic should be viewed differently?

The reason I wanted to explore this peers-talking-on-a-topic format, was indeed because I have been tampering with this idea of the Unified Education Theory for some months now, but I could not connect the dots. So, more people needed to become part of this quest.

Below, I share the notes of the ideas that filled the room as an increasing amount of people joined the dialogue. (and I am grateful for all of the participant inputs!)

  • The brain cannot help but learn (unless the learning gene is missing)
  • learning can be attributes (conditions of learning, paths of learning)
  • Models simplify learning, yet learning is very complex (note from myself: which pleads for an approach using complexity theory)
  • neural pathways are influenced by elements
  • there is an intention connected with learning, so how do we decide where and when to learn what?
  • where do we situate incidental learning, and how much influence does this incidental learning have on our overall learning?
  • What do we know about what makes learning effective in multiple learning contexts?
  • The conditions for learning differ from types of learning, the conditions for learning and teaching must differ to reach the different learning goals put forward by the actual learning
  • Different learning fields, result in different learning models that are needed, and different learning interactions (e.g. a discussion for language learning purposes, has a different learning outcome (writing, understanding...) then a discussion used in a math field (exchanging solutions, approaches).
  • Personal learning strategies can be very varied as well. 
  • Learning can have multiple forms, and not all these forms are understood, or not all the outcomes of these forms are understood: e.g. leisure learning, serendipitous learning. Although these are not taken up fully in the learning canon, they do resonate with 'the flow' that can accompany learning as put forward by Mihaly Csikszentmihalyi 
  • Contextual learning, which relates to the actor/network theory is an important theory in media studies.
  • The identity of the learner: as part of being, or acting competent, the same for the identity of a project. 
  • The choices in learning are in part elite due to abundance or scarcity of learning options and needs. 
  • Learning is based on personal competency and being able to evaluate and direct the process
  • Time and personal readiness influence learning, and the ability to learn
  • There are reoccurring elements in learning: motivation, frustration, self-esteem, trust in one's self, trust in others, passion and emotion accompanying learning, current state of mind, being open to learning ...


Dichotomies were coming up as the peer-to-peer session went on:

  • specific learning versus generic learning
  • deep learning versus leisure learning
  • autonomous learning versus curriculum learning
  • curiosity as driver (frequently seen in children's learning, some school systems) versus intention as driver for learning (curriculum and training based learning) - but it might also be that curiosity instigated initial learning, and is followed by intentional learning
  • content abundance versus flattening of the learner construct
  • Perseverance and discipline versus serendipitous learning
  • Professional versus personal outcomes

There retrospect, I do think all of us participating in the session felt there was a multitude of aspects related to learning. As such it might be that an attempt to bring them into a coherent (or even incoherent yet mapped out) format might be of interest to allow all of us to talk about specific learning, within the full architecture of learning. At this point, and thanks to the session I feel a Unified Learning Theory might be something to go for.

Parallel with online and f-2-f appreciation/emotion. 
A sort of PS: suddenly, as the brainstorm was happening, an emerging idea came to mind. It suddenly dawned on me that what the participants were sharing, the emotions (e.g. "I really liked the fact that this was an open session", "Can we keep the conversation going afterwards?") were similar in content to that of MOOC participants who had been engaged in open discussions on a particular subject matter. So again it seemed that you cannot take the human out of human, in which ever virtual or real world the interaction is taking place.

Friday, 5 December 2014

#oeb14 Ellen Wagner @edwsonoma on PAR and #data are changing everything

This was a very illuminating session by Ellen Wagner, as it provided real options to tackle educational challenges (on the level of institutes as well as learners) on the basis of common educational data retrieved from a varied amount of higher ed institutions. REALLY interesting.

Analytics are taking the world by storm.
parframework.org

Learning analytics, big data is at its vanguard.
Staggering revelations about big data: in just 5 years we will look at 40 zetabytes information, that is HUGE.

All these data that are floating around are not being analysed that much as we think. It takes an amazing amount of time, tech talent, and human interpretation to find value from the data.

The full effect of data can not be envisioned today, as it hits all of society.

Where are we heading?
Pushing the data in LMS, in comprehensive analytics is very complex.
Big data landscape is getting bigger every month. But virtually no company on big data is involved in education.
there is a specific reason why: money of course, but in education - despite of the fact we talk about it - we do not use it yet. We cannot process it using normal analytical tools. Most of data comes in spreadsheets, so there is a big step to figure out of the big data solutions compared to our educational analytics.

While big data raise expectations, student data drive big decisions in .edu.
Because it is new, we do not really know where we will go.

Ellen shares some US cases, to show which work is being done.

In US there is an educational problem. There is more student dept than there is house doubt, this is unsustainable, and people sometimes cannot pay it back within their lifetime
Some schools have 'open enrollment', which results in very high drop out rates unfortunately.
So colleges are now given score cards. But this means there must be standards. The metrics at present are focused on the first time freshman... but this means 85% of the contemporary learners do not fit that profile.

Public education has dropped dramatically. Performance metrics are the basis for funding, but as standards do not exist it means that it is tough to get the expectations and hit targets.

So the score card metrics need to be reviewed.

Additionally, pedagogy are not mentioned on the score cards.
In California: license of student textbooks must be tied to student performance, but this effects universities lives.

Metrics have ramped up expectations of what analytics can do. But the challenge is to build metrics that are constructive for both students and educators.

Education is helping people to grow.

Prescriptive analytics: proscribing educational treatment.

Use case: predictive analytics reporting framework (PAR)
a national, non-profit, multi-institutional collaborative focusesd on institutional effectiveness and student success
a massive data anlysis effor using predictive analytics to identify drivers related to student risk
Par uses descriptive, inferential and predictive analyses to create benchmarks, institutional predictive models and to inventory, map and measure student success interventions that have direct positive impact on behaviors correlated with success.

If you - as an educators - do not know what happens with your learners, than how can we suspect to change education for the better?

pedagogy is important, but the emotional effects of education and the feel of education must be taken into account as well.

The privacy issues related to the learner data are staggering.

First meeting with Bill and Melinda Gates Foundation: NO, we do not think you can do it. So she went on a school circle to see what they wanted, could offer, needed. 700.000 student records, from multiple institutes. The data setup was upped to 8 million records.. this got the YES from Bill and Melinda. Granted, the data were nothing compared to weather data, business data.

But descriptive benchmarks can now be done, for each institutions predictive data can be given based on their student records.

something unexpected emerged: making a prediction is not enough. Finding how this can address the challenges is the most important thing.

It is difficult to get the open, transparent to work with due to educational ethica student related issues around their data.

First three years: building the data resources to get started with analytics.
Now: start the analysis.

The institutes varied: community colleges (done rarely), schools that were considered progressive, as well as 'old school', competency based universities.

We tried to collect data that was available for every student, every school: the simple things that could get hands on => common data definitions.

All data is anonymised (both learners, as well as schools. But the schools keep the encryption to link data to learners (VERY important cfr InBloom project for k12 schools, which resulted in a big emotional issue around data)

If solutions are found to improve learners education, that would be delivered to all. so every action taken by the school is questioned for impact, enabling to make the actual impactful strategies visible.

So they used structured, readily availbale data. Openly published via a cc license
https://public.datacookbook.com/public/institutions/par

One of the things that happened: they can now make comparible conclusions.

Great point on online versus f-2-f colleges (note to self: add movie)

Descriptive benchmarks (cross instittutional) and predictive insights (institutional specific), all with specific filters, e.g. isolate subgroups.

Predictive models reduce guesswork to find students at risk.

For those institutes that have open enrollment and attract all students, these predictive insights can be complimented by different other factors that you - as an institute can research: for instance the inpredictability of humanity (no paycheck in time, death, health issues)

Putting it all together
determine student probability of failure
determine which students respond to interventions
determine which interventions are most effective
allocate resources accordingly

Now also (based on John Campbell work)
inventorying and categorizing student success interventions / supports using a commmon framework
based on known predictors of risk and success
in the context of the academic life cycle

addresses "now what?" by linking predictions to action
enables cross institutional benchmarking
supports local and cross institutional

[Ellen: very hard time to turn down a dare :-)  ]

#oeb14 Ola Rosling with a #flipped keynote approach


These are the notes I took during Ola Rosling's keynote at Online Educa Berlin. Yesterday Ola Rosling made a very important remark on Big data and power, as big data is in the hands of the few, that same data is under the power influence of that few. This means that as long as big data is not made transparent and public, data use risks at being distorted by the power of those who own the big data. I liked that. So inevitably I was looking forward to this appearance at the keynote panel this morning during Online Educa Berlin.

He merges his previously acquired knowledge from google, and is now taking it to education. He works now for Gapminder… think it is related to Hans Rosling (his father, as Ola pointed out).
In his keynote approach he tried to explore a flipped keynote approach. At the end of his keynote, I did have the feeling that it was not completely flipped. There was interaction, but no discussion, not learning from each other. But a very nice experiment, and useful to work on as a concept.

Flipped keynote: got homework out before conference.
Answer the following two question to improve the conference itself
How did deaths per year from natural disasters change in the last century?
More than doubled
Remained about the same
Decreased to less than half
Answer: 12% so less than half

In the last 20 years the percent of people living in extreme poverty has …
Almost doubled
Remained about the same
Almost halved
Answer it almost halved

Women aged 30 spent how many years in school? (Men of same age spent 8 years)
7 years
5 years
3 years
Answer: 7 years

Let’s analyse the answers:  main conclusion: intuition distorts reality and our opinions.

Now the same questions were asked the chimpansees. This is because the people might be assumed by something, where chimpansees do not.


After this he looked at the fact based reality, and our assumptions based on emotions, not facts. As an example he looks at demographics of the world and its facts (amount of people per continent now and in the near future, money as it has evaluated over the years). 

#oeb14 Stephen Downes on personalised #learning

These are liveblogging notes from Stephen Downes keynote.

Preoccupations around the learner, and how they seem to be pro-active online, but rather passive in face-to-face situations. The idea of the learners as citizens and learners as consumers.
How do we equip the learners of today for the jobs today and in the future.

Stephen Downes on reclaiming personalised learning
The overall theme is that education is in for a reality check. The reality check he wants to share is that education and educational companies must face the fact that they no longer own the learners nor their learning.
The learner is no longer the customer, the learner is now the product. Maybe in the form of tuition fees, maybe in the form of big data.
When they talk about the learning process, the core concept is about being interactive, repurposing, about personal learning.
To teach is to model and demonstrate, to learn is to reflect and construct.
Learning is a form of recognition. It is something that feels natural, and that grows following patterns, this enables recognition.

Reclaiming the web, means it is important to have his own space, this is what is meant by reclaiming. The concept of bringing back to us of what is ours.
Education has been the march of the LMS – the giant silos of learning. Once you leave the LMS institution, your own content is lost. Education as a discipline where the personal content is no longer personal in many occasions. We must not only reclaiming the content, but we must reclaim the production, the process.

Stephen distinguishes between personal learning and personalized learning. Personal learning is all your own learning. Personalized you take from the shelf and tweek and then say: it is personalised. Metaphor: caramel and caramelized.

The web is not a platform, it is a bunch of personal spaces. This is the basis for the cMOOCs in 2008. The fact that these mooc were distributed added to the fact that this learning was personal. This created a network where the participants genuiinly owned their learning. But what followed took the learning away from the personal to the personalized again, where the data was no longer personal.

Learning data, learning data are important, but should not be commoditised. Not everything needs to be commercialized. Institutions need to learn this distinction: let it go. Platforms and proprietors do not own the  data. The data should belong to the person.
Why? They do not own this market no matter what they think. But a person should be able to choose from ALL sources, if you are locked into a platform what you can see is not visible. This is top down control, which is something we do not need for learning. Learning is not acquiring something, but becoming something. We do not become something by consuming prehashed content, but by resharing, creating, recreating content that is of importance to us as a personal learner.

Analytics purports to tell you who you are. All humans are put into 16 categories, There is a distinction between big data and personal data. Big data= many people using one service, personal data is the one person using many data services = deep analysis. This truly tells the story of ‘me’. And who would want that all this personal data would be given to outsiders.
Personal network versus institutional library. Personal network of connections, resources and content that you as a person aggregate.
Education as the commodity, not the student. The things we do belong to us, the person.

With that in mind that Stephen supports the idea of reclaiming personal learning

LPSS – learning and performance support systmes: It is a network of personal learning environments.
http://lpss.me – prototype PLE – it does instantiate the end to end solution of personal learning, and storing it in a space of your choice.
The design is based on putting the learner at the center connecting to services and institutes. It is not a platform, but a connector of resources and services. To be used for your own purposes and goods. The idea of Ed Net Neutrality.
No matter which provider, they should not indicate what you should do. The personal learning record – data owned by the individual, shared only with persmissions.
Look at downes eporfolio-and-bades-workshop-oeb14.hml

Relevant PLR (personal learning projects). Third parties can provide analytics services, but they do not get free unfettered access
Analytics as a service….
(inge check out owncloud)

We collectively need to decide whether our own personal data is something that needs to be commoditised or should be reclaimed as a person, as an individual.


Thursday, 4 December 2014

#OEB2014 keynote debate #data corrupts #education

This is the transcript of what I plan to say during the OEB14 debate... but it will depend on my brain power and time itself (a bit of a long text). Feel free to share ideas and comments on it. Text follows the slides.

For those wanting to co-author on the potential negative effects of data on education, feel free to have a look at what I call 'the big data ramble, a plea for more human indicators' (beware that is a draft, so more chaotic than the text I bring below, but ... I want to use the chaotic draft as the basis of starting up a position paper with any of you who have an idea on the subject as co-author). 

Introduction

I will focus on two topics: how does data risk to add to the digital divide? And why does data replicate existing societal norms?

Digital divide

One of the reasons that data is currently corrupting education, is because big data increases the digital divide. Let me give you some examples.

The have and the have not’s … institutes - Digital divide dividing our educational institutes
As big companies retain more and more data, they are now looking for educational partners to use that data. But which partners are they choosing, and how does this affect the other educational institutes?

The digital divide – or the data divide - trickles down from the big Universities all the way to the vulnerable learners. As big universities might be able to pay for data access and results, and use those data to improve the learning goals of their (cognitive, and data minded) students. The less financially strong universities will have access to less data, less tools, which will affect learning/Teaching (although I do add that this might indeed not result in loss of teaching quality).
Which students will be able to pay for those universities? For if data storage and data mining is so expensive, it seems only logical that the educational fees for the data rich universities will rise.
This means that learners from less financially stable backgrounds, or parents with less financial means will have less opportunities.

(Example: oh but that is not going to happen some of you might think… but let’s look at Viktor, he is associated with a couple of large, financially rich universities: Harvard, Oxford)

The digital data-minded professors
The same is true for teachers, professors, research assistants. Learning analytics might provide insights, but these insights need to be translated back to the learners. Which means that all of us in education will have to become data savvy at some point.

Selecting the learners that fit the profiles provided by algorithms
Administrators facing tough budget decisions will look to the application of learning analytics with a profit oriented mind. In a world were profit rules, students from demographic groups that perform less can be seen as a potential loss.
If a university recognizes that a particular demographic group is more likely to quit school, the university may choose to slash recruiting on that group and exclude them for no personal reason of its own. Traditionally poorer performing demographic groups might be excluded based on economic/statistical data reasons. And this practice is already starting, for one university in Belgium is forcing out low performing students after their first year.
Example: looking back, I can tell you that I was one of those weak learners, I was scared out of my wits in my first year at the university. All of a sudden I had to learn?!!! But by some weird twists of faith, I eventually made it, and I am now part of education).

(example me, addition: Aida Opoku-Mensah : 51 million?)

Education for the purpose of future jobs, which jobs?
In 2013 during the World Innovation Summit for Education (WISE) 84% of leading educators, policy makers and governments claimed that the way learning happens today will not adequately prepare young people for the world of tomorrow. By this they referred to preparing the young for future jobs. Big data would solve this.
This seems like a very valid claim to make. One that made sense to me… until recently. Just a couple of weeks ago a new UK report came out focusing on job expectations. In that report the experts predicted that by 2030 one third of the current jobs will be lost due to automation… If there are less jobs to fill, the goal of education should turn towards multiple goals: not education resulting in professional work only, but education should also be aimed at reaching a better quality of life, becoming a truly fulfilled human being, and enabling a new society.
But with big data entering education and automation increasing, there is a strange selection criteria seeping in. If less jobs are available, not that many students need to be prepared for those jobs. So it might be more profitable to only focus on those students who are at the top of the crop.

The facts versus the actions
Until data became a reality, the teachers and trainers were the corner stone of education. Research proved this time and time again. So did we act upon that data?
At the moment government and the financial markets provide us with to contradictory messages. On the one hand we all need to accept cuts in education and training, for we need to help all of us get out of the crisis. On the other hand bigger budgets and funding than ever before are going straight into big data research and implementation (for education among others), because data will enable an improved education.
Why are bigger budgets provided to replace the proven human teaching with automated training that still needs to come of age? (sordid logic)

the drive towards the Norm

What is data other than the reproduced norm of society? The gatekeepers – those with power - build the quizzes, construct the algorithms that are needed for educational data-mining. And based on what? On the need of the day, not the need of the individual, not the need of a sustainable, qualitative society.
As all technologists and developers know, wo/man-made algorithms reproduce the norm of those who constructed the algorithms. (example hit prediction)

Not moved by the norm, but enchanted by the one
For me I am not moved by the norm, but enchanted by the one. Change does not come from the masses, it is the single mind that finds and touches the truth felt within each one of us. The masses only reproduces existing norms, existing power.

If we think of Mahatma Ghandi, Emmeline Pankhurst, Barack Obama, Rosa Luxemburg, Marcel Proust, Muḥammad ibn Mūsā al-Khwārizmī, Rosa Parks, Steve Jobs, … we know that they are individuals, they were never the norm. What is the algorithm of a great person?

The existing norm will also defend its own existence, in spite of data based proof
One of the fields with the most data gathered overtime, even before big data, even before data itself became a concept, is the weather and geological phenomena. And if we look at the last century, data is gathered that points towards climate change. Everyone agrees that climate change is now a reality.
But does it change anything? No. Having big data, does not change anything as long as the political, social and more importantly the economic systems is not willing to change and drop some of their power, some of their profit, and combine forces for a human, global solution.

With regard to education the same has happened. Unesco has been gathering data on what is needed to ensure education for all (which is by the way in part train-the-trainer, the human element of learning/Teaching), but even though the facts needed for change are known for decades, we cannot seem to meet the ‘education for all’ goals no matter how many millennial goals are stated.
So what is the hidden power behind the data, and where does that hidden power direct us towards?

Let us all think for one moment about who we are, you, me, each single one of us.
The question is simple: how much of me is the norm, how much of me is unique?

My guess is, we all were and are exceptions to a rule at some point. We are innovators, and purely because of that we situate ourselves outside of the norm (bell curve early adopters)

I have a Dream … but does data support it?
Educational data is currently build upon the idea of efficiency. But life is not made out of efficiency only, life is quality, life is creativity, life is – at best – living your dream. And if your dream situates itself in the cognitive fields, data will help you find your way and improve your cognitive abilities. But if your dream situates itself in a creative or vocational field, than data will be less likely to support that goal. For dreams are not profitable in many cases, although dreams do enrich each one of our lives

And by making decisions on what we need, what the norm should be, again the digital divide between those who have and have not will increase. Data risks corrupting education, unless we consciously step away from pure profit goals, and turn towards a global, human society.

Conclusion

As my colleagues have showed data has achieved new insights, new innovations in health, urban planning and such. But for all the good data is said to do, if we do not ensure that each one of us can actually get a job, get paid, then we will not be able to pay for healthcare, we will not be able to drive a car in a well-planned urban area. The success is of data is only as strong as the lives it can help improve and before all sustain in the long term. As long as the digital divide is not turned back, as long as data is not reproducing the norm, but ensuring a more balanced society filled with creativity and quality, educational data will have a corrupting effect.