Analytics and data - trying to understand the conversation
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Analytics and data  - trying to understand the conversation
Bits and pieces to  research this growing area in training and education . Your students and your staff .
Curated by Jess Chalmers
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Rescooped by Jess Chalmers from Learning Analytics, Educational Data Mining, Adaptive Learning
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Learning Analytics: Avoiding Failure

Learning Analytics: Avoiding Failure | Analytics and data  - trying to understand the conversation | Scoop.it
In order not to fail, it is necessary to have a clear vision of what you want to achieve with learning analytics, a vision that closely aligns with in

Via Peter Mellow
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Rescooped by Jess Chalmers from Learning Analytics, Educational Data Mining, Adaptive Learning
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Video: Gartner's Glenda Morgan on Learning Analytics

Video: Gartner's Glenda Morgan on Learning Analytics | Analytics and data  - trying to understand the conversation | Scoop.it
Glenda Morgan talks about the current and future state of learning analytics.

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Rescooped by Jess Chalmers from Learning Analytics, Educational Data Mining, Adaptive Learning
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Big Data Analysis in Higher Education: Promises and Pitfalls

Big Data Analysis in Higher Education: Promises and Pitfalls | Analytics and data  - trying to understand the conversation | Scoop.it

In short, we want educational predictions to be wrong. If our predictive model can tell that a student is going to fail, we want that to be true only in the absence of intervention. If the student does in fact fail, that should be seen as a failure of the system. A predictive model should be part of a prediction-and-response system that (1) makes predictions that would be accurate in the absence of a response and (2) enables a response that renders the prediction incorrect (e.g., to accurately predict that, given a specific intervention, the student will succeed). In a good prediction-and-response system, all predictions would ultimately be negatively biased. The best way to empirically demonstrate this is to exploit random variation in the assignment of the system—for example, random assignment of the prediction-and-response system to some students but not all. This approach is rarely used in residential higher education but is newly enabled by digital data.The grand challenge in data-intensive research and analysis in higher education is to find the means to extract knowledge from the extremely rich data sets being generated today and to distill this into usable information for students, instructors, and the public.


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Rescooped by Jess Chalmers from Learning Analytics, Educational Data Mining, Adaptive Learning
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Moving the Heart and Head: Implications for Learning Analytics Research

Moving the Heart and Head: Implications for Learning Analytics Research | Analytics and data  - trying to understand the conversation | Scoop.it
In addition to quantitative accuracy, it is critical for learning analytics to consider design principles and methods of persuasion that convince educ

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Rescooped by Jess Chalmers from Learning Analytics, Educational Data Mining, Adaptive Learning
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Leading the Way in Learning Analytics by @jessiebrown224

Leading the Way in Learning Analytics by @jessiebrown224 | Analytics and data  - trying to understand the conversation | Scoop.it
Earlier this week my Ithaka S+R colleagues and I published “Student Data in the Digital Era: An Overview of Current Practices,” in which we review how institutions of higher education are currently using student data, and some of the practical and ethical challenges they face in doing so. As we conducted research for this report, part of our Responsible Use of Student Data in Higher Education project with Stanford University, we heard recurring concerns about the growing role of for-profit vendors in learning analytics. These third-party vendors, the argument goes, operate without the ethical obligations to students that institutions have, and design their products at a remove from the spaces where learning happens.

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