Towards the Identifiability and Explainability for Personalized Learner Modeling: An Inductive Paradigm

Published: 23 Jan 2024, Last Modified: 23 May 2024TheWebConf24EveryoneRevisionsBibTeX
Keywords: user modeling, learner modeling, cognitive diagnosis, identifiability, explainability, overfitting
Abstract: Personalized learner modeling using cognitive diagnosis (CD), which aims to model learners' cognitive states by diagnosing learner traits from behavioral data, is a fundamental yet significant task in many web learning services. Existing cognitive diagnosis models (CDMs) follow the _proficiency-response_ paradigm that views learner traits and question parameters as trainable embeddings and learns them through learner performance prediction. However, we notice that this paradigm leads to the inevitable non-identifiability and explainability overfitting problem, which is harmful to the quantification of learners' cognitive states and the quality of web learning services. To address these problems, we propose an identifiable cognitive diagnosis framework (ID-CDF) based on a novel _response-proficiency-response_ paradigm inspired by encoder-decoder models. Specifically, we first devise the diagnostic module of ID-CDF, which leverages inductive learning to eliminate randomness in optimization to guarantee identifiability and captures the monotonicity between overall response data distribution and cognitive states to prevent explainability overfitting. Next, we propose a flexible predictive module for ID-CDF to ensure diagnosis preciseness. We further present an implementation of ID-CDF, i.e., ID-CDM, to illustrate its usability. Extensive experiments on four real-world datasets with different characteristics demonstrate that ID-CDF can effectively address the problems without loss of diagnosis preciseness. Our code is available at https://anonymous.4open.science/r/ID-CDF-AB86/.
Track: User Modeling and Recommendation
Submission Guidelines Scope: Yes
Submission Guidelines Blind: Yes
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Student Author: Yes
Submission Number: 679
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