论文标题

用基于推理的学习者般的代理评估学习材料的有益性

Assessing the Helpfulness of Learning Materials with Inference-Based Learner-Like Agent

论文作者

Jen, Yun-Hsuan, Huang, Chieh-Yang, Chen, Mei-Hua, Huang, Ting-Hao 'Kenneth', Ku, Lun-Wei

论文摘要

许多英语语言学习者使用接近同义词的单词(例如,小对面vs.little;简短vs.short)遇到麻烦,并且经常看起来像是句子来学习两个几乎同义词的术语如何不同。先前的工作使用手工制作的分数来推荐句子,但很难在所有近串联号上采用此类分数,因为近串联因素在各种方面有所不同。我们注意到,学习材料的帮助将反映学习者的表现。因此,我们建议基于推理的学习者样子模仿学习者的行为,并通过检查代理人的表现来识别良好的学习材料。为了使代理人像学习者一样行事,我们利用了构建模型从提供的材料中推断出答案的能力。实验结果表明,所提出的代理具有良好的学习者行为,可以在填空(FITB)和良好的示例句子选择任务中实现最佳性能。我们进一步与大学ESL学习者进行了课堂用户学习。用户研究的结果表明,拟议的代理可以找到示例句子,以帮助学生更轻松有效地学习。与其他模型相比,拟议的代理商在学习后提高了17%以上的学生的分数。

Many English-as-a-second language learners have trouble using near-synonym words (e.g., small vs.little; briefly vs.shortly) correctly, and often look for example sentences to learn how two nearly synonymous terms differ. Prior work uses hand-crafted scores to recommend sentences but has difficulty in adopting such scores to all the near-synonyms as near-synonyms differ in various ways. We notice that the helpfulness of the learning material would reflect on the learners' performance. Thus, we propose the inference-based learner-like agent to mimic learner behavior and identify good learning materials by examining the agent's performance. To enable the agent to behave like a learner, we leverage entailment modeling's capability of inferring answers from the provided materials. Experimental results show that the proposed agent is equipped with good learner-like behavior to achieve the best performance in both fill-in-the-blank (FITB) and good example sentence selection tasks. We further conduct a classroom user study with college ESL learners. The results of the user study show that the proposed agent can find out example sentences that help students learn more easily and efficiently. Compared to other models, the proposed agent improves the score of more than 17% of students after learning.

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