Ripple: Concept-Based Interpretation for Raw Time Series Models in
Education
- URL: http://arxiv.org/abs/2212.01133v3
- Date: Tue, 13 Dec 2022 18:12:28 GMT
- Title: Ripple: Concept-Based Interpretation for Raw Time Series Models in
Education
- Authors: Mohammad Asadi, Vinitra Swamy, Jibril Frej, Julien Vignoud, Mirko
Marras, Tanja K\"aser
- Abstract summary: Time series is the most prevalent form of input data for educational prediction tasks.
We propose an approach that utilizes irregular multivariate time series modeling with graph neural networks to achieve comparable or better accuracy.
We analyze these advances in the education domain, addressing the task of early student performance prediction.
- Score: 5.374524134699487
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Time series is the most prevalent form of input data for educational
prediction tasks. The vast majority of research using time series data focuses
on hand-crafted features, designed by experts for predictive performance and
interpretability. However, extracting these features is labor-intensive for
humans and computers. In this paper, we propose an approach that utilizes
irregular multivariate time series modeling with graph neural networks to
achieve comparable or better accuracy with raw time series clickstreams in
comparison to hand-crafted features. Furthermore, we extend concept activation
vectors for interpretability in raw time series models. We analyze these
advances in the education domain, addressing the task of early student
performance prediction for downstream targeted interventions and instructional
support. Our experimental analysis on 23 MOOCs with millions of combined
interactions over six behavioral dimensions show that models designed with our
approach can (i) beat state-of-the-art educational time series baselines with
no feature extraction and (ii) provide interpretable insights for personalized
interventions. Source code: https://github.com/epfl-ml4ed/ripple/.
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