You are browsing the archive for 2018 June.

Δελτίο τύπου: SLIDEWIKI πλατφόρμα Release webinar [Τρίτη, 17 Ιουλίου, 2018, στις 2:00 μ.μ. – 4:00 μμ CEST]

- June 30, 2018 in Featured, Featured @en, Εκδηλώσεις

Μία επανάσταση στη συγγραφή, κοινή χρήση και την εκ νέου χρήση των Ανοικτών Εκπαιδευτικών Πόρων (OER) και Ανοικτών Εκπαιδευτικών Μαθημάτων (OCW) σε απευθείας σύνδεση Οι παρουσιάσεις έχουν καταστεί απαραίτητες στην καθημερινή μας ζωή, είτε στο σχολείο, στο πανεπιστήμιο ή στον επαγγελματικό χώρο. Το έργο SlideWiki, χρηματοδοτούμενο από την Ευρωπαϊκή Ένωση στα πλαίσια το προγράμματος Horizon […]

The Sexual Life of our Time in its Relations to Modern Civilization ([1906] 1909)

- June 27, 2018 in freud, homosexuality, iwan bloch, Marquis de sade, psychology, sex, sexuality

Encyclopaedic survey of sexual knowledge exploring topics ranging from spiritual love to wild love, traditional marriage to foot fetish, erotic painting to morning erection.

The Sexual Life of our Time in its Relations to Modern Civilization ([1906] 1909)

- June 27, 2018 in freud, homosexuality, iwan bloch, Marquis de sade, psychology, sex, sexuality

Encyclopaedic survey of sexual knowledge exploring topics ranging from spiritual love to wild love, traditional marriage to foot fetish, erotic painting to morning erection.

Introducing the 2018 Class of School of Data Fellows!

- June 27, 2018 in School of Data, School of Data Fellows

This blog has been reposted from the School of Data blog. School of Data is delighted to announce its sixth class of fellows. From June until January 2019, the programme will allow fellows to deepen their data literacy skills and work alongside local partner organisations to enhance the data literacy network local to them. We were really pleased to receive a large number of applications and would like to both congratulate and wish all our new fellows the very best for their fellowship! Pamela Gonzales is passionate about data visualization and bridging the digital divide for women. She is the co-founder of Bolivia Tech Hub, a collaborative space for tech projects to contribute to the prosperity of an innovative ecosystem in Bolivia. Pamela is also the Regional Ambassador for Technovation, a San Francisco based program that equips girls with the skills needed to solve real-world problems through technology. She holds a Bachelor of Science degree in Computer Science from Universidad Mayor de San Andres.         Odanga Madung is the co-founder and Data Science Lead at Odipo Dev, a data science and analytics firm operating out of Nairobi Kenya that delivers services to various bluechip companies and NGOs across the country. Odanga’s deepest interest is at the intersection between data and culture and it is through this that Odipo Dev has been able to carry out data analysis and visualisation on various activities for a wide range of clients and occurrences in Kenya and the world.Some of his work has been featured in publications such as Adweek, Yahoo, BBC, CNBC, Quartz, and Daily Nation, just to mention a few. He will be working on Open Contracting in Kenya during the period of his fellowship. You can follow him on Twitter @Odangaring and Odipo Dev @OdipoDev for more information.   Nzumi Malendeja is a Research Associate at an Independent Evaluation and Research Cell of BRAC International in Tanzania, where he leads larger-scale research projects in education, agriculture, and health. Here, he has developed mobile-based data collection platforms (ODK Collect and SurveyCTO), which replaced the traditional paper-based methods. Before this, Mr. Nzumi worked as a Field Monitor and Research Assistant at SoChaGlobal and Maarifa ni Ufunguo respectively, both in education and construction sector transparency projects. Mr. Nzumi has attended a 4 week Summer School Training on Research Methods and Teaching Skills, hosted by Hamburg University of Applied Sciences in Germany, funded by the Germany Academic Exchange Services (DAAD). Presently, Mr. Nzumi is working on his thesis towards the fulfillment of the Master of Research and Public Policy at the University of Dar es Salaam.   Sofia Montenegro A fan of nature and the teachings it hides, Sofia has dedicated herself to research in the social sciences. She studied Political Science at the Universidad Francisco Marroquin and Public Opinion and Political Behavior through a Masters degree at the University of Essex, where she deepened her interest in data methodologies in social research. Sofia is interested in academia only as long as it drives political action. She looks to help other women to be involved freely in data practice and political spaces. Sofia is also interested in network analysis, studying corruption as a social phenomenon, following electoral processes and learning research methods.   Elias Mwakilama is a lecturer at University of Malawi-Chancellor College and Coordinator of Research, Seminar and Consultancies, and Diploma in Statistics programme in the Mathematical Sciences Department, Elias Mwakilama is a computational and applied mathematician in the field of operations research. He lectures and supervises undergraduate students in Mathematics & Statistics fields. His research interests are in working with optimisation models using mathematical statistics techniques integrated with computing skills to offer solutions of industrial related problems in theoretical and practical arena. Elias holds a first upper class MSc degree in Mathematical Sciences from University of Malawi. His website is here. During his fellowship, he hopes to support the “public procurement open contract platform” for Civil Society Organisations (CSOs) in Malawi with Hivos.   Ben Hur Pintor is an open-source and open-data advocate from the Philippines​ who believes in democratising not only data, but ​also ​the means of utilising and analysing data.​ He’s a geospatial generalist and software developer who’s​ worked on projects related to renewable energy, blue carbon ecosystems, and participatory disaster risk mapping and assessment. ​Ben is currently pursuing an MS Geomatics Engineering degree at the University of the Philippines. As part of his advocacy for Free and Open Source Software (FOSS), he’s a co-organiser and active participant of FOSS4G Philippines and MaptimeDiliman — avenues for sharing open​ ​source mapping technologies with the community.   Hani Rosidaini is passionate about how technology can be adopted and applied for people’s needs. She combines her technical skills, especially in information systems and data science, with social and business knowledge, to help companies and organisations in Indonesia, Australia, and Japan. This includes her own ventures. Highly relevant to this year fellowship’s focus of data procurement, Hani has experience as a data specialist for public policy in the Indonesia Presidential Office, where she has analysed the national integrated data platform, data.go.id, contributed to data-driven policy making, advocated ministries and agencies, as well as engaged with civic and local communities.

Introducing the 2018 Class of School of Data Fellows!

- June 27, 2018 in School of Data, School of Data Fellows

This blog has been reposted from the School of Data blog. School of Data is delighted to announce its sixth class of fellows. From June until January 2019, the programme will allow fellows to deepen their data literacy skills and work alongside local partner organisations to enhance the data literacy network local to them. We were really pleased to receive a large number of applications and would like to both congratulate and wish all our new fellows the very best for their fellowship! Pamela Gonzales is passionate about data visualization and bridging the digital divide for women. She is the co-founder of Bolivia Tech Hub, a collaborative space for tech projects to contribute to the prosperity of an innovative ecosystem in Bolivia. Pamela is also the Regional Ambassador for Technovation, a San Francisco based program that equips girls with the skills needed to solve real-world problems through technology. She holds a Bachelor of Science degree in Computer Science from Universidad Mayor de San Andres.         Odanga Madung is the co-founder and Data Science Lead at Odipo Dev, a data science and analytics firm operating out of Nairobi Kenya that delivers services to various bluechip companies and NGOs across the country. Odanga’s deepest interest is at the intersection between data and culture and it is through this that Odipo Dev has been able to carry out data analysis and visualisation on various activities for a wide range of clients and occurrences in Kenya and the world.Some of his work has been featured in publications such as Adweek, Yahoo, BBC, CNBC, Quartz, and Daily Nation, just to mention a few. He will be working on Open Contracting in Kenya during the period of his fellowship. You can follow him on Twitter @Odangaring and Odipo Dev @OdipoDev for more information.   Nzumi Malendeja is a Research Associate at an Independent Evaluation and Research Cell of BRAC International in Tanzania, where he leads larger-scale research projects in education, agriculture, and health. Here, he has developed mobile-based data collection platforms (ODK Collect and SurveyCTO), which replaced the traditional paper-based methods. Before this, Mr. Nzumi worked as a Field Monitor and Research Assistant at SoChaGlobal and Maarifa ni Ufunguo respectively, both in education and construction sector transparency projects. Mr. Nzumi has attended a 4 week Summer School Training on Research Methods and Teaching Skills, hosted by Hamburg University of Applied Sciences in Germany, funded by the Germany Academic Exchange Services (DAAD). Presently, Mr. Nzumi is working on his thesis towards the fulfillment of the Master of Research and Public Policy at the University of Dar es Salaam.   Sofia Montenegro A fan of nature and the teachings it hides, Sofia has dedicated herself to research in the social sciences. She studied Political Science at the Universidad Francisco Marroquin and Public Opinion and Political Behavior through a Masters degree at the University of Essex, where she deepened her interest in data methodologies in social research. Sofia is interested in academia only as long as it drives political action. She looks to help other women to be involved freely in data practice and political spaces. Sofia is also interested in network analysis, studying corruption as a social phenomenon, following electoral processes and learning research methods.   Elias Mwakilama is a lecturer at University of Malawi-Chancellor College and Coordinator of Research, Seminar and Consultancies, and Diploma in Statistics programme in the Mathematical Sciences Department, Elias Mwakilama is a computational and applied mathematician in the field of operations research. He lectures and supervises undergraduate students in Mathematics & Statistics fields. His research interests are in working with optimisation models using mathematical statistics techniques integrated with computing skills to offer solutions of industrial related problems in theoretical and practical arena. Elias holds a first upper class MSc degree in Mathematical Sciences from University of Malawi. His website is here. During his fellowship, he hopes to support the “public procurement open contract platform” for Civil Society Organisations (CSOs) in Malawi with Hivos.   Ben Hur Pintor is an open-source and open-data advocate from the Philippines​ who believes in democratising not only data, but ​also ​the means of utilising and analysing data.​ He’s a geospatial generalist and software developer who’s​ worked on projects related to renewable energy, blue carbon ecosystems, and participatory disaster risk mapping and assessment. ​Ben is currently pursuing an MS Geomatics Engineering degree at the University of the Philippines. As part of his advocacy for Free and Open Source Software (FOSS), he’s a co-organiser and active participant of FOSS4G Philippines and MaptimeDiliman — avenues for sharing open​ ​source mapping technologies with the community.   Hani Rosidaini is passionate about how technology can be adopted and applied for people’s needs. She combines her technical skills, especially in information systems and data science, with social and business knowledge, to help companies and organisations in Indonesia, Australia, and Japan. This includes her own ventures. Highly relevant to this year fellowship’s focus of data procurement, Hani has experience as a data specialist for public policy in the Indonesia Presidential Office, where she has analysed the national integrated data platform, data.go.id, contributed to data-driven policy making, advocated ministries and agencies, as well as engaged with civic and local communities.

Changing Minds by Using Open Data

- June 26, 2018 in communication, Data, Featured, guestpost, oer

Guest post by Erdinç Saçan & Robert Schuwer Fontys University of Applied Sciences, the Netherlands

The Greek philosopher Pythagoras once said:

“if you want to multiply joy, then you have to share.”

This also applies to data. Who shares data, gets a multitude of joy – value – in return.

  ICT is not just about technology – it’s about coming up with solutions to solve problems or to help people, businesses, communities and governments. Developing ICT solutions means working with people to find a solution. Students in Information & Communication Technology learn how to work with databases, analysing data and making dashboards that will help the users to make the right decisions.  Data collections are required for these learning experiences. You can create these data collections (artificially) yourself or use “real” data collections, openly available (like those from Statistics Netherlands (CBS) (https://www.cbs.nl/en-gb)) In education, data is becoming increasingly important, both in policy, management and in the education process itself. The scientific research that supports education is becoming increasingly dependent on data. Data leads to insights that help improve the quality of education (Atenas & Havemann, 2015). But in the current era where a neo-liberal approach of education seems to dominate, the “Bildung” component of education is considered more important than ever. The term Bildung is attributed to Willem van Humboldt (1767-1835). It refers to general evolution of all human qualities, not only acquiring knowledge, but also developing skills for moral judgments and critical thinking.

Study

In (Atenas & Havemann, 2015), several case studies are described where the use of open data contributes to developing the Bildung component of education. To contribute to these cases and eventually extend experiences, a practical study has been conducted. The study had the following research question: “How can using open data in data analysis learning tasks contribute to the Bildung component of the ICT Bachelor Program of Fontys School of ICT in the Netherlands?” In the study, an in-depth case study is executed, using an A / B test method. One group of students had a data set with artificial data available, while the other group worked with a set of open data from the municipality of Utrecht. A pre-test and post-test should reveal whether a difference in development of the Bildung component can be measured. Both tests were conducted by a survey. Additionally, some interviews have been conducted afterwards to collect more in-depth information and explanations for the survey results. For our A/B test, we used three data files from the municipality of Utrecht (a town in the center of the Netherlands, with ~350,000 inhabitants). These were data from all quarters in Utrecht:
  • Crime figures
  • Income
  • Level of Education
(Source: https://utrecht.dataplatform.nl/data) We assumed, all students had opinions on correlations between these three types of data, e.g. “There is a proportional relation between crime figures and level of education” or “There is an inversely proportional relation between income and level of education”. We wanted to see which opinions students had before they started working with the data and if these opinions were influenced after they had analyzed the data. A group of 40 students went to work with the data. The group was divided into 20 students who went to work with real data and 20 went to work with ‘fake’ data. Students were emailed with the three data files and the following assignment: “check CSV (Excel) file in the attachment. Please try this to do an analysis. Try to draw a minimum of 1, a maximum of 2 conclusions from it… this can be anything. As long as it leads to a certain conclusion based on the figures.” In addition, there was also a survey in which we tried to find out how students currently think about correlations between crime, income and educational level. Additionally, some students were interviewed to get some insights into the figures collected by the survey.  

Results

For the survey, 40 students have been approached. The response consisted of 25 students. All students indicated that working with real data is more fun, challenging and concrete. It motivates them. Students who worked with fake data did not like this as much. In interviews they indicated that they prefer, for example, to work with cases from companies rather than cases invented by teachers. In the interviews, the majority of students indicated that by working with real data they have come to a different understanding of crime and the reasons for it. They became aware of the social impact of data and they were triggered to think about social problems. To illustrate, here some responses students gave in interviews “Before I started working with the data, I had always thought that there was more crime in districts with a low income and less crime in districts with a high income. After I have analyzed the data, I have seen that this is not immediately the case. So my thought about this has indeed changed. It is possible, but it does not necessarily have to be that way.” (M. K.) “At first, I also thought that there would be more crime in communities with more people with a lower level of education than in communities with more people with a higher level of education. In my opinion, this image has changed in part. I do not think that a high or low level of education is necessarily linked to this, but rather to the situation in which they find themselves. So if you are highly educated, but things are really not going well (no job, poor conditions at home), then the chance of criminality is greater than if someone with a low level of education has a job.” ( A. K.) “I think it has a lot of influence. You have an image and an opinion beforehand. But the real data either shows the opposite or not. And then you think, “Oh yes, this is it.’. And working with fake data, is not my thing. It has to provide real insights.” (M.D.)

Conclusion

Our experiment provided positive indications that contributing to the Bildung component of education by using open data in data analysis exercises is possible. Next steps to develop are both extending these experiences to larger groups of students and to more topics in the curriculum.  

References

Atenas, J. & Havemann, L. (2015). Open Data as Open Educational Resources: Towards Transversal Skills and Global Citizenship. Open praxis7(4), 377-389. http://dx.doi.org/10.5944/openpraxis.7.4.233 Atenas, J., & Havemann, L. (Eds.). (2015). Open Data as Open Educational Resources: Case studies of emerging practice. London: Open Knowledge, Open Education Working Group. https://education.okfn.org/handbooks/open-data-as-open-educational-resources/ 
About the authors  Erdinç Saçan is a Senior Teacher of ICT & Business and the Coordinator of the Minor Digital Marketing @ Fontys University of Applied Sciences, School of ICT in Eindhoven, the Netherlands. He previously worked at Corendon, TradeDoubler and Prijsvrij.nl       Robert Schuwer is Professor Open Educational Resources at Fontys University of Applied Sciences, School of ICT in Eindhoven, the Netherlands and  holds the UNESCO Chair on Open Educational Resources and Their Adoption by Teachers, Learners and Institutions.

Changing Minds by Using Open Data

- June 26, 2018 in communication, Data, Featured, guestpost, oer

Guest post by Erdinç Saçan & Robert Schuwer Fontys University of Applied Sciences, the Netherlands

The Greek philosopher Pythagoras once said:

“if you want to multiply joy, then you have to share.”

This also applies to data. Who shares data, gets a multitude of joy – value – in return.

  ICT is not just about technology – it’s about coming up with solutions to solve problems or to help people, businesses, communities and governments. Developing ICT solutions means working with people to find a solution. Students in Information & Communication Technology learn how to work with databases, analysing data and making dashboards that will help the users to make the right decisions.  Data collections are required for these learning experiences. You can create these data collections (artificially) yourself or use “real” data collections, openly available (like those from Statistics Netherlands (CBS) (https://www.cbs.nl/en-gb)) In education, data is becoming increasingly important, both in policy, management and in the education process itself. The scientific research that supports education is becoming increasingly dependent on data. Data leads to insights that help improve the quality of education (Atenas & Havemann, 2015). But in the current era where a neo-liberal approach of education seems to dominate, the “Bildung” component of education is considered more important than ever. The term Bildung is attributed to Willem van Humboldt (1767-1835). It refers to general evolution of all human qualities, not only acquiring knowledge, but also developing skills for moral judgments and critical thinking.

Study

In (Atenas & Havemann, 2015), several case studies are described where the use of open data contributes to developing the Bildung component of education. To contribute to these cases and eventually extend experiences, a practical study has been conducted. The study had the following research question: “How can using open data in data analysis learning tasks contribute to the Bildung component of the ICT Bachelor Program of Fontys School of ICT in the Netherlands?” In the study, an in-depth case study is executed, using an A / B test method. One group of students had a data set with artificial data available, while the other group worked with a set of open data from the municipality of Utrecht. A pre-test and post-test should reveal whether a difference in development of the Bildung component can be measured. Both tests were conducted by a survey. Additionally, some interviews have been conducted afterwards to collect more in-depth information and explanations for the survey results. For our A/B test, we used three data files from the municipality of Utrecht (a town in the center of the Netherlands, with ~350,000 inhabitants). These were data from all quarters in Utrecht:
  • Crime figures
  • Income
  • Level of Education
(Source: https://utrecht.dataplatform.nl/data) We assumed, all students had opinions on correlations between these three types of data, e.g. “There is a proportional relation between crime figures and level of education” or “There is an inversely proportional relation between income and level of education”. We wanted to see which opinions students had before they started working with the data and if these opinions were influenced after they had analyzed the data. A group of 40 students went to work with the data. The group was divided into 20 students who went to work with real data and 20 went to work with ‘fake’ data. Students were emailed with the three data files and the following assignment: “check CSV (Excel) file in the attachment. Please try this to do an analysis. Try to draw a minimum of 1, a maximum of 2 conclusions from it… this can be anything. As long as it leads to a certain conclusion based on the figures.” In addition, there was also a survey in which we tried to find out how students currently think about correlations between crime, income and educational level. Additionally, some students were interviewed to get some insights into the figures collected by the survey.  

Results

For the survey, 40 students have been approached. The response consisted of 25 students. All students indicated that working with real data is more fun, challenging and concrete. It motivates them. Students who worked with fake data did not like this as much. In interviews they indicated that they prefer, for example, to work with cases from companies rather than cases invented by teachers. In the interviews, the majority of students indicated that by working with real data they have come to a different understanding of crime and the reasons for it. They became aware of the social impact of data and they were triggered to think about social problems. To illustrate, here some responses students gave in interviews “Before I started working with the data, I had always thought that there was more crime in districts with a low income and less crime in districts with a high income. After I have analyzed the data, I have seen that this is not immediately the case. So my thought about this has indeed changed. It is possible, but it does not necessarily have to be that way.” (M. K.) “At first, I also thought that there would be more crime in communities with more people with a lower level of education than in communities with more people with a higher level of education. In my opinion, this image has changed in part. I do not think that a high or low level of education is necessarily linked to this, but rather to the situation in which they find themselves. So if you are highly educated, but things are really not going well (no job, poor conditions at home), then the chance of criminality is greater than if someone with a low level of education has a job.” ( A. K.) “I think it has a lot of influence. You have an image and an opinion beforehand. But the real data either shows the opposite or not. And then you think, “Oh yes, this is it.’. And working with fake data, is not my thing. It has to provide real insights.” (M.D.)

Conclusion

Our experiment provided positive indications that contributing to the Bildung component of education by using open data in data analysis exercises is possible. Next steps to develop are both extending these experiences to larger groups of students and to more topics in the curriculum.  

References

Atenas, J. & Havemann, L. (2015). Open Data as Open Educational Resources: Towards Transversal Skills and Global Citizenship. Open praxis7(4), 377-389. http://dx.doi.org/10.5944/openpraxis.7.4.233 Atenas, J., & Havemann, L. (Eds.). (2015). Open Data as Open Educational Resources: Case studies of emerging practice. London: Open Knowledge, Open Education Working Group. https://education.okfn.org/handbooks/open-data-as-open-educational-resources/ 
About the authors  Erdinç Saçan is a Senior Teacher of ICT & Business and the Coordinator of the Minor Digital Marketing @ Fontys University of Applied Sciences, School of ICT in Eindhoven, the Netherlands. He previously worked at Corendon, TradeDoubler and Prijsvrij.nl       Robert Schuwer is Professor Open Educational Resources at Fontys University of Applied Sciences, School of ICT in Eindhoven, the Netherlands and  holds the UNESCO Chair on Open Educational Resources and Their Adoption by Teachers, Learners and Institutions.

Learning Analytics Policy Development

- June 25, 2018 in communication, Data, Featured, guestpost

Written by Anne-Marie Scott  — The University of Edinburgh has just launched their Principles and Purposes for Learning Analytics. In order to develop institutional policy on learning analytics, in 2016 we convened a task group reporting to our Senate Learning and Teaching Committee, and our Knowledge Strategy Committee. The task group was convened by Professor Dragan Gasevic, Chair of Learning Analytics and Informatics. The group included Professor Sian Bayne, Assistant Principal Digital Education; representatives from academic Colleges; the Edinburgh University’s Students Association; and representatives from Student Systems and Information Services. Our Director of Academic Services produced an initial draft of a Learning Analytics policy for review by our institutional task group. It was a relatively detailed policy which covered the following sorts of topics:
  • Definitions
  • Sources of data for learning analytics
  • Sources of data for learning analytics
  • Initiating learning analytics activities
  • Transparency and consent
  • Privacy and access to data
  • Retention and disposal of data
  • Validity and interpretation of data
  • Supporting positive interventions
  • Enabling students to reflect on their learning
  • Supporting staff to make the most of learning analytics
  • Oversight of Learning Analytics activities
  • Other relevant policies
Ethical values, legal obligations and the reasons for engaging with learning analytics were all embedded in the policy, but as we worked on revisions, considered inputs from external sources, and planned how to consult on a draft it became clear that this detailed policy was likely to beg more questions than it answered without being more explicit about our values and our ethical position upfront. We also had to contend with periods of time where there was limited data protection resource available to the task group, and where the legal basis for processing under GDPR that would be available to us was still being debated in the House of Lords. At the same time as we were developing local policy, colleagues at Edinburgh (Prof Dragan Gasevic and Dr Yi-Shan Tsai) were involved with the EU Sheila project, developing a learning analytics policy development framework for the EU. There were several key outputs from that project that we used in pre-print form to inform our work: In particular, the group concept mapping activity carried out by the Sheila project (surveying various European Universities) identified that defining objectives for learning analytics was very important, but also very hard (http://sheilaproject.eu/wp-content/uploads/2017/04/The-state-of-learning-analytics-in-Europe.pdf). As part of our local policy development, myself and Dragan Gasevic met and discussed what we felt were the 6 main purposes for learning analytics in an Edinburgh context, and these were written up into the policy as a means of tackling this issue head-on for Edinburgh. The literature review on learning analytics adoption that the Sheila project produced also identified various challenges to adoption, and on further consideration I drafted a separate Purposes and Principles document which extracted various of the principles embedded in the detailed policy and responded to many of the challenges and concerns identified in the literature review. Given some of the challenges we were experiencing around clarity on new data protection legislation for resolving areas the more detailed policy, this was the point at which our task group decided to separate the two pieces and start with a consultation on Purposes and Principles only. The Purposes and Principles were outlined and discussed at Senate in early 2017 and then taken to each School for discussion as part of the consultation plan that Academic Services devised for us. To support this consultation we also developed a webpage that outlined existing research and operational activities in learning analytics at Edinburgh (https://www.ed.ac.uk/information-services/learning-technology/learning-analytics). This high-level values-first route proved to be an effective way to start, as consultation with many Schools identified that the level of knowledge and understanding of learning analytics was highly variable across the institution, and that there were significant pockets of concern about ethics and about support for staff and students to make more use of data. The Sheila project also ran a student survey at Edinburgh during this time period and we were also able to finesse the Principles and Purposes to respond to student concerns and expectations. In considering how to achieve oversight and governance in the absence of the more detailed policy, and in a potentially quite complex and changing area, we also proposed the establishment of a Learning Analytics Review Group. As we pursue more data-driven operational activities this helps close out an ethical review gap in our operational activities. This governance model is now of interest to colleagues working on institutional data governance activities more generally. Once the Principles and Purposes were approved, with support from our Data Protection Officer, and more clarity on GDPR we were then able to tidy up the more detailed policy which defines the ‘mechanics’ of how activities can be initiated, what roles and responsibilities exist, what sources of data might be implicated etc. This policy was approved by our Senate Learning and Teaching Committee in May 2018. Importantly, this policy has also been able to link in to other work around data governance within the institution, and formally recognises the role that our institutional ‘Data Stewards’ have to play in the approvals process for learning analytics projects. Important inputs to the development of policy (as well as the Sheila project inputs) included:   — About the author
Anne-Marie Scott is Deputy Director of Learning, Teaching and Web Services, at the University of Edinburgh. Her background is in the design, management and support for academic IT services, particularly those used to support teaching and learning activities online. Amongst her interests are the use of new media and the open web in teaching and learning, scalable online learning platforms, and learning analytics.   Originally published in https://ammienoot.com/brain-fluff/learning-analytics-policy-development/ 

Learning Analytics Policy Development

- June 25, 2018 in communication, Data, Featured, guestpost

Written by Anne-Marie Scott  — The University of Edinburgh has just launched their Principles and Purposes for Learning Analytics. In order to develop institutional policy on learning analytics, in 2016 we convened a task group reporting to our Senate Learning and Teaching Committee, and our Knowledge Strategy Committee. The task group was convened by Professor Dragan Gasevic, Chair of Learning Analytics and Informatics. The group included Professor Sian Bayne, Assistant Principal Digital Education; representatives from academic Colleges; the Edinburgh University’s Students Association; and representatives from Student Systems and Information Services. Our Director of Academic Services produced an initial draft of a Learning Analytics policy for review by our institutional task group. It was a relatively detailed policy which covered the following sorts of topics:
  • Definitions
  • Sources of data for learning analytics
  • Sources of data for learning analytics
  • Initiating learning analytics activities
  • Transparency and consent
  • Privacy and access to data
  • Retention and disposal of data
  • Validity and interpretation of data
  • Supporting positive interventions
  • Enabling students to reflect on their learning
  • Supporting staff to make the most of learning analytics
  • Oversight of Learning Analytics activities
  • Other relevant policies
Ethical values, legal obligations and the reasons for engaging with learning analytics were all embedded in the policy, but as we worked on revisions, considered inputs from external sources, and planned how to consult on a draft it became clear that this detailed policy was likely to beg more questions than it answered without being more explicit about our values and our ethical position upfront. We also had to contend with periods of time where there was limited data protection resource available to the task group, and where the legal basis for processing under GDPR that would be available to us was still being debated in the House of Lords. At the same time as we were developing local policy, colleagues at Edinburgh (Prof Dragan Gasevic and Dr Yi-Shan Tsai) were involved with the EU Sheila project, developing a learning analytics policy development framework for the EU. There were several key outputs from that project that we used in pre-print form to inform our work: In particular, the group concept mapping activity carried out by the Sheila project (surveying various European Universities) identified that defining objectives for learning analytics was very important, but also very hard (http://sheilaproject.eu/wp-content/uploads/2017/04/The-state-of-learning-analytics-in-Europe.pdf). As part of our local policy development, myself and Dragan Gasevic met and discussed what we felt were the 6 main purposes for learning analytics in an Edinburgh context, and these were written up into the policy as a means of tackling this issue head-on for Edinburgh. The literature review on learning analytics adoption that the Sheila project produced also identified various challenges to adoption, and on further consideration I drafted a separate Purposes and Principles document which extracted various of the principles embedded in the detailed policy and responded to many of the challenges and concerns identified in the literature review. Given some of the challenges we were experiencing around clarity on new data protection legislation for resolving areas the more detailed policy, this was the point at which our task group decided to separate the two pieces and start with a consultation on Purposes and Principles only. The Purposes and Principles were outlined and discussed at Senate in early 2017 and then taken to each School for discussion as part of the consultation plan that Academic Services devised for us. To support this consultation we also developed a webpage that outlined existing research and operational activities in learning analytics at Edinburgh (https://www.ed.ac.uk/information-services/learning-technology/learning-analytics). This high-level values-first route proved to be an effective way to start, as consultation with many Schools identified that the level of knowledge and understanding of learning analytics was highly variable across the institution, and that there were significant pockets of concern about ethics and about support for staff and students to make more use of data. The Sheila project also ran a student survey at Edinburgh during this time period and we were also able to finesse the Principles and Purposes to respond to student concerns and expectations. In considering how to achieve oversight and governance in the absence of the more detailed policy, and in a potentially quite complex and changing area, we also proposed the establishment of a Learning Analytics Review Group. As we pursue more data-driven operational activities this helps close out an ethical review gap in our operational activities. This governance model is now of interest to colleagues working on institutional data governance activities more generally. Once the Principles and Purposes were approved, with support from our Data Protection Officer, and more clarity on GDPR we were then able to tidy up the more detailed policy which defines the ‘mechanics’ of how activities can be initiated, what roles and responsibilities exist, what sources of data might be implicated etc. This policy was approved by our Senate Learning and Teaching Committee in May 2018. Importantly, this policy has also been able to link in to other work around data governance within the institution, and formally recognises the role that our institutional ‘Data Stewards’ have to play in the approvals process for learning analytics projects. Important inputs to the development of policy (as well as the Sheila project inputs) included:   — About the author
Anne-Marie Scott is Deputy Director of Learning, Teaching and Web Services, at the University of Edinburgh. Her background is in the design, management and support for academic IT services, particularly those used to support teaching and learning activities online. Amongst her interests are the use of new media and the open web in teaching and learning, scalable online learning platforms, and learning analytics.   Originally published in https://ammienoot.com/brain-fluff/learning-analytics-policy-development/ 

EITI-Woche in Berlin

- June 24, 2018 in Uncategorized