Interaction Map: A Visualization Tool for Personalized Learning Based on Assessment Data

Author:

Ho Eric1ORCID,Jeon Minjeong1ORCID

Affiliation:

1. Department of Education, University of California, Los Angeles (UCLA), Los Angeles, CA 90095, USA

Abstract

Personalized learning is the shaping of instruction to meet students’ needs to support student learning and improve learning outcomes. While it has received increasing attention in education, limited resources are available to help educators properly leverage assessment data to foster personalized learning. Motivated by this need, we introduce a new visualization tool, the interaction map, to foster personalized learning based on assessment data. The interaction map approach is engineered by the latent space item response model, a recent development in assessment data-leveraging social network analysis methodologies. In the interaction map, students and test items are mapped into a two-dimensional geometric space, in which their distances tell us about the student’s strengths and weaknesses with individual or groups of test items given their overall ability levels. Student profiles can be generated based on these distances to display individual student strengths and weaknesses. Finally, we introduce a user-friendly, free web-based software IntMap in which users can upload their own assessment data and view the customizable interaction map and student profiles based on settings that users can adjust. We illustrate the use of the software with an educational assessment example.

Funder

Dissertation Year Fellowship from the UCLA Graduate Division

Publisher

MDPI AG

Subject

General Medicine

Reference22 articles.

1. Data Quality Campaign (2019). Making Data Work for Personalized Learning: Lessons Learned, Data Quality Campaign. Technical Report.

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3. U.S. Department of Education, Office of Educational Technology (2017). Reimagining the Role of Technology in Education: 2017 National Education Technology Plan Update.

4. Mapping unobserved item—Respondent interactions: A latent space item response model with interaction map;Jeon;Psychometrika,2021

5. On general laws and the meaning of measurement in psychology;Rasch;Berkeley Symp. Math. Stat. Probab.,1961

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