Along with the development of systems for natural language understanding and generation, dialog systems have been widely adopted for language learning and practicing. Many current educational dialog systems perform chitchat, where the generated content and vocabulary are not constrained. However, for learners in a school setting, practice through dialog is more effective if it aligns with students' curriculum and focuses on textbook vocabulary. Therefore, we adapt lexically constrained decoding to a dialog system, which urges the dialog system to include curriculum-aligned words and phrases in its generated utterances. We adopt a generative dialog system, BlenderBot3, as our backbone model and evaluate our curriculum-based dialog system with middle school students learning English as their second language. The constrained words and phrases are derived from their textbooks, suggested by their English teachers. The evaluation result demonstrates that the dialog system with curriculum infusion improves students' understanding of target words and increases their interest in practicing English.
翻译:随着自然语言理解和生成系统的发展,对话系统已经被广泛应用于语言学习和练习。许多当前的教育对话系统进行闲聊,生成的内容和词汇不受限制。然而,对于学校环境中的学习者来说,通过对话进行练习如果与学生的课程保持一致并侧重于教科书词汇将更加有效。因此,我们将词汇约束解码应用于对话系统,督促对话系统在生成的话语中包括与课程相关的词汇和短语。我们采用生成式对话系统BlenderBot3作为我们的基础模型,并针对以英语作为第二语言的中学生对我们基于课程的对话系统进行评估。约束的单词和短语来自于他们的教科书,由他们的英语老师提供。评估结果表明,具有课程融合的对话系统改善了学生对目标单词的理解,并增加了他们练习英语的兴趣。