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Improving Question Embeddings With Cognitive Representation Optimization for Knowledge Tracing.

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    This study introduces a Cognitive Representation Optimization for Knowledge Tracing (CRO-KT) model. It improves student performance prediction by optimizing cognitive representations and accounting for distractors in learning data.

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    Area of Science:

    • Educational Technology
    • Artificial Intelligence in Education
    • Cognitive Science

    Background:

    • Existing knowledge tracing (KT) models predict student performance using historical records but often ignore distractors like slipping and guessing.
    • Static cognitive representations in current KT models are limited and may not accurately reflect dynamic student understanding.
    • This can lead to issues in the synergy and coordination of student learning data.

    Purpose of the Study:

    • To propose a novel Cognitive Representation Optimization for Knowledge Tracing (CRO-KT) model.
    • To enhance the accuracy of predicting student knowledge status and future performance.
    • To address limitations of static cognitive representations and incorporate the impact of distractors.

    Main Methods:

    • Utilizes a dynamic programming algorithm to optimize the structure of cognitive representations based on exercise difficulty.
    • Employs a co-optimization algorithm to refine cognitive representations by considering co-related exercises.
    • Fuses learned relational embeddings from bipartite graphs with optimized record representations for richer cognitive expression.

    Main Results:

    • The CRO-KT model demonstrates effectiveness in optimizing cognitive representations for knowledge tracing.
    • Experimental validation on three public datasets confirms the model's superior performance.
    • The approach enhances the expression of student cognition by integrating various optimization techniques.

    Conclusions:

    • The proposed CRO-KT model offers a significant advancement in knowledge tracing.
    • Optimizing cognitive representations and accounting for distractors leads to more accurate student performance predictions.
    • This research provides a more robust framework for understanding and modeling student learning processes.