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通过带有反馈的儿童虚拟形象聊天机器人训练来提高提问技巧。

Enhancing questioning skills through child avatar chatbot training with feedback.

作者信息

Røed Ragnhild Klingenberg, Baugerud Gunn Astrid, Hassan Syed Zohaib, Sabet Saeed S, Salehi Pegah, Powell Martine B, Riegler Michael A, Halvorsen Pål, Johnson Miriam S

机构信息

Department of Social Work, Child Welfare and Social Policy, Faculty of Social Science, Oslo Metropolitan University, Oslo, Norway.

Department of Computer Science, Faculty of Technology, Art and Design, Oslo Metropolitan University, Oslo, Norway.

出版信息

Front Psychol. 2023 Jul 13;14:1198235. doi: 10.3389/fpsyg.2023.1198235. eCollection 2023.

Abstract

Training child investigative interviewing skills is a specialized task. Those being trained need opportunities to practice their skills in realistic settings and receive immediate feedback. A key step in ensuring the availability of such opportunities is to develop a dynamic, conversational avatar, using artificial intelligence (AI) technology that can provide implicit and explicit feedback to trainees. In the iterative process, use of a chatbot avatar to test the language and conversation model is crucial. The model is fine-tuned with interview data and realistic scenarios. This study used a pre-post training design to assess the learning effects on questioning skills across four child interview sessions that involved training with a child avatar chatbot fine-tuned with interview data and realistic scenarios. Thirty university students from the areas of child welfare, social work, and psychology were divided into two groups; one group received direct feedback ( = 12), whereas the other received no feedback ( = 18). An automatic coding function in the language model identified the question types. Information on question types was provided as feedback in the direct feedback group only. The scenario included a 6-year-old girl being interviewed about alleged physical abuse. After the first interview session (baseline), all participants watched a video lecture on memory, witness psychology, and questioning before they conducted two additional interview sessions and completed a post-experience survey. One week later, they conducted a fourth interview and completed another post-experience survey. All chatbot transcripts were coded for interview quality. The language model's automatic feedback function was found to be highly reliable in classifying question types, reflecting the substantial agreement among the raters [Cohen's kappa (κ) = 0.80] in coding open-ended, cued recall, and closed questions. Participants who received direct feedback showed a significantly higher improvement in open-ended questioning than those in the non-feedback group, with a significant increase in the number of open-ended questions used between the baseline and each of the other three chat sessions. This study demonstrates that child avatar chatbot training improves interview quality with regard to recommended questioning, especially when combined with direct feedback on questioning.

摘要

培训儿童调查性访谈技巧是一项专业性任务。接受培训的人员需要有机会在现实场景中练习技巧并获得即时反馈。确保有此类机会的关键一步是利用人工智能(AI)技术开发一个动态的、对话式虚拟形象,它能够向受训人员提供隐性和显性反馈。在迭代过程中,使用聊天机器人虚拟形象来测试语言和对话模型至关重要。该模型会根据访谈数据和现实场景进行微调。本研究采用训练前-训练后设计,通过四个儿童访谈环节评估对提问技巧的学习效果,这些环节涉及使用根据访谈数据和现实场景进行微调的儿童虚拟形象聊天机器人进行训练。来自儿童福利、社会工作和心理学领域的30名大学生被分为两组;一组接受直接反馈(n = 12),而另一组不接受反馈(n = 18)。语言模型中的自动编码功能识别问题类型。仅在直接反馈组中提供关于问题类型的信息作为反馈。场景包括对一名6岁女孩就涉嫌身体虐待进行访谈。在第一次访谈环节(基线)之后,所有参与者在进行另外两次访谈环节并完成经验后调查之前观看了一段关于记忆、证人心理学和提问的视频讲座。一周后,他们进行第四次访谈并完成另一份经验后调查。所有聊天机器人记录都针对访谈质量进行编码。结果发现,语言模型的自动反馈功能在对问题类型进行分类方面高度可靠,这反映了评分者在对开放式、提示性回忆和封闭式问题进行编码时的高度一致性[科恩卡方系数(κ)= 0.80]。接受直接反馈的参与者在开放式提问方面的改善明显高于无反馈组,在基线与其他三个聊天环节中的每一个环节之间,使用的开放式问题数量都有显著增加。本研究表明,儿童虚拟形象聊天机器人训练在推荐提问方面提高了访谈质量,特别是在结合关于提问的直接反馈时。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/957b/10374201/7c28e8043a48/fpsyg-14-1198235-g001.jpg

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