Title:
|
CHALLENGES OF BIG DATA IN EDUCATIONAL ASSESSMENT |
Author(s):
|
David C. Gibson, Mary Webb, Dirk Ifenthaler |
ISBN:
|
978-989-8533-43-2 |
Editors:
|
Demetrios G. Sampson, J. Michael Spector, Dirk Ifenthaler and Pedro Isaías |
Year:
|
2015 |
Edition:
|
Single |
Keywords:
|
Learning analytics, big data, data science in educational assessment, educational measurement, new psychometrics |
Type:
|
Full Paper |
First Page:
|
92 |
Last Page:
|
100 |
Language:
|
English |
Cover:
|
|
Full Contents:
|
click to dowload
|
Paper Abstract:
|
This paper briefly discusses four measurement challenges of data science or big data in educational assessments that are enabled by technology: 1. Dealing with change over time via time-based data. 2. How a digital performance spaces relationships interact with learner actions, communications and products. 3. How layers of interpretation are formed from translations of atomistic data into meaningful larger units suitable for making inferences about what someone knows and can do. 4. How to represent the dynamics of interactions between and among learners who are being assessed by their interactions with each other as well as with digital resources and agents in digital performance spaces. Because of the movement from paper-based tests to online learning, and in order to make progress on these challenges, the authors advocate the restructuring of training of the next generation of researchers and psychometricians to specialize in data science in technology enabled assessments. This call to action stemmed from discussions at EDUsummIT 2013, which will be published in depth in a special issue of Education and Information Technologies. |
|
|
|
|