具有联合意图分类和槽填充的教育聊天机器人设计

Yujia Wang, Shuqi Liu, Linqi Song
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引用次数: 0

摘要

在后疫情时代,随着线下教学模式向线上教学模式不断转变的趋势,以及虚拟交流技术的发展,人们逐渐认识到虚拟助手在教育相关应用场景中的必要性。然而,简单和教育领域特定的聊天机器人并没有得到很好的研究。在这项工作中,我们开发了一个基于自然语言理解(NLU)模型的教育聊天机器人,该机器人可以理解面向任务的自然语言文本,以提供与教育相关的服务。NLU模型利用BERT变体的大型预训练语言模型作为主干,共同优化意图分类和插槽填充模块,使所提出的教育开放域面向目标的人际聊天机器人能够从用户查询中捕获关键信息。系统取得了良好的性能。实践证明,该系统能够帮助减轻在线教学环境中学生与教师之间的沟通负担,缓解学生从实体教室到虚拟教室的转移,减轻教学人员的压力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Designing an Educational Chatbot with Joint Intent Classification and Slot Filling
In the post-pandemic era, with the continuous shifting trend from offline to online teaching mode and the development of technologies in virtual communication, the necessity of a virtual assistant for education-related application scenarios is gradually being recognized. However, simple and educational domain-specific chatbot is not well studied. In this work, we develop an educational chatbot based on a Natural Language Understanding (NLU) model that can understand task-oriented natural language texts to provide education-related services. The NLU model utilizes a large pre-trained language model of BERT variants as backbones to jointly optimize intent classification and slot filling modules, enabling the proposed educational opendomain goal-oriented intrapersonal chatbot to capture critical information from user queries. Our system achieves good performance. The system is demonstrated to be able to assist in reducing the communication burden between students and teachers in the online teaching environment, ease the shift of students from physical to virtual classrooms, and alleviate the pressure on the teaching staff.
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