基于迁移学习的对话行为分类在自闭症患者虚拟现实面试培训平台中的自动标注

Signals Pub Date : 2023-05-19 DOI:10.3390/signals4020019
Deeksha Adiani, Kelley Colopietro, Joshua W. Wade, Miroslava Migovich, Timothy J. Vogus, N. Sarkar
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引用次数: 0

摘要

包括虚拟现实(VR)模拟在内的基于计算机的求职面试培训近年来越来越受欢迎,以支持和帮助自闭症患者,他们在寻找和维持就业方面面临重大挑战和障碍。虽然很流行,但这些培训系统往往不能像招聘面试那样复杂和动态,因为虚拟对话代理的对话管理要么依赖于从预先指定的答案菜单中进行选择,要么基于从被面试者的转录语音中提取关键字来处理对话,这取决于面试脚本。我们通过迁移学习的自动对话行为分类解决了这一限制。这允许从用户语音中识别意图,独立于采访领域。我们还通过提供包含22名自闭症参与者在虚拟面试平台中对面试问题的回答的原始数据集,解决了领域一般面试对话行为分类器缺乏训练数据的问题。参与者对定制采访脚本的回答被转录成文本,并根据定制的13类对话行为方案进行注释。最好的分类器是一个微调的双向编码器表示从变压器(BERT)模型,f1得分为87%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dialogue Act Classification via Transfer Learning for Automated Labeling of Interviewee Responses in Virtual Reality Job Interview Training Platforms for Autistic Individuals
Computer-based job interview training, including virtual reality (VR) simulations, have gained popularity in recent years to support and aid autistic individuals, who face significant challenges and barriers in finding and maintaining employment. Although popular, these training systems often fail to resemble the complexity and dynamism of the employment interview, as the dialogue management for the virtual conversation agent either relies on choosing from a menu of prespecified answers, or dialogue processing is based on keyword extraction from the transcribed speech of the interviewee, which depends on the interview script. We address this limitation through automated dialogue act classification via transfer learning. This allows for recognizing intent from user speech, independent of the domain of the interview. We also redress the lack of training data for a domain general job interview dialogue act classifier by providing an original dataset with responses to interview questions within a virtual job interview platform from 22 autistic participants. Participants’ responses to a customized interview script were transcribed to text and annotated according to a custom 13-class dialogue act scheme. The best classifier was a fine-tuned bidirectional encoder representations from transformers (BERT) model, with an f1-score of 87%.
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CiteScore
3.20
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