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arxiv 2207.10645 v1 pith:YVJA2XBC submitted 2022-07-13 cs.CL cs.AI

Wide & Deep Learning for Judging Student Performance in Online One-on-one Math Classes

classification cs.CL cs.AI
keywords classesdeepmathone-on-oneonlinestudentwideamount
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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In this paper, we investigate the opportunities of automating the judgment process in online one-on-one math classes. We build a Wide & Deep framework to learn fine-grained predictive representations from a limited amount of noisy classroom conversation data that perform better student judgments. We conducted experiments on the task of predicting students' levels of mastery of example questions and the results demonstrate the superiority and availability of our model in terms of various evaluation metrics.

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