Enhancing Automated Scoring of Math Self-Explanation Quality using LLM-Generated Datasets: A Semi-Supervised Approach
Ryosuke Nakamoto(Kyoto University), Horoaki Ogata, Brendan Flanagan(Kyoto University), Taisei Yamauchi(Hirosaki University), Kyosuke Takami(Kyoto University), Dai Yilling
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