The BEA 2023 Shared Task on Generating AI Teacher Responses in Educational Dialogues

Anaïs Tack, E. Kochmar, Zheng Yuan, Serge Bibauw, C. Piech
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引用次数: 3

Abstract

This paper describes the results of the first shared task on generation of teacher responses in educational dialogues. The goal of the task was to benchmark the ability of generative language models to act as AI teachers, replying to a student in a teacherstudent dialogue. Eight teams participated in the competition hosted on CodaLab and experimented with a wide variety of state-of-the-art models, including Alpaca, Bloom, DialoGPT, DistilGPT-2, Flan-T5, GPT- 2, GPT-3, GPT-4, LLaMA, OPT-2.7B, and T5- base. Their submissions were automatically scored using BERTScore and DialogRPT metrics, and the top three among them were further manually evaluated in terms of pedagogical ability based on Tack and Piech (2022). The NAISTeacher system, which ranked first in both automated and human evaluation, generated responses with GPT-3.5 Turbo using an ensemble of prompts and DialogRPT-based ranking of responses for given dialogue contexts. Despite promising achievements of the participating teams, the results also highlight the need for evaluation metrics better suited to educational contexts.
BEA 2023关于在教育对话中生成AI教师响应的共享任务
本文描述了教育对话中教师反应生成的第一个共享任务的结果。这项任务的目标是测试生成语言模型作为人工智能教师的能力,在师生对话中回答学生。八支队伍参加了由CodaLab主办的比赛,并试验了各种最先进的模型,包括Alpaca、Bloom、DialoGPT、DistilGPT-2、Flan-T5、GPT-2、GPT-3、GPT-4、LLaMA、OPT-2.7B和T5- base。他们的提交使用BERTScore和dialgrpt指标自动评分,并根据Tack和Piech(2022)的教学能力进一步手动评估其中的前三名。naiteacher系统在自动评估和人工评估方面都排名第一,它使用GPT-3.5 Turbo生成响应,使用一系列提示和基于对话grpt的响应排序。尽管参与小组取得了令人鼓舞的成就,但结果也强调需要更适合教育环境的评估指标。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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