基于情感分析的心理健康聊天机器人用户参与监测模型

IF 1.8 Q3 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
Ian Igado Mmbayi, Consolata Gakii, Faith Mueni Musyoka
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引用次数: 0

摘要

心理健康方面的挑战,特别是在青年中,因耻辱和获得专业护理的机会有限而更加复杂。这推动了对可扩展数字解决方案(如聊天机器人)的需求。本研究引入了一种基于情感分析的模型来评估用户对心理健康聊天机器人的满意度,分析了b谷歌Play和苹果应用商店中六个流行应用的82102条评论。通过比较5种传统机器学习模型和变压器模型双向编码器表示,实现了积极、消极和中性的多类情感分类,并通过合成少数派过采样技术进行了类平衡。在传统模型中,Random Forest的准确率达到了98.18%,而BERT的准确率达到了99.17%,超过了之前的基准。基于方面的分析显示,情感和可用性推动了积极的反馈,而可靠性问题则助长了消极的反馈,这为开发人员提供了可操作的见解,以增强聊天机器人的设计。这项工作通过整合多类分类、变压器模型和基于方面的分析来推进数字心理健康研究,展示了评估用户反馈的可扩展框架。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sentiment Analysis-Based Model for Monitoring User Engagement With Mental Health Chatbots

Mental health challenges, particularly among youth, are compounded by stigma and limited access to professional care. This has driven demand for scalable digital solutions like chatbots. This study introduces a sentiment analysis-based model to assess user satisfaction with mental health chatbots, analyzing 82 102 reviews from six popular apps on Google Play and Apple's App Stores. A multi-class sentiment classification of positive, negative, and neutral was implemented, enhanced by Synthetic Minority Over-sampling Technique for class balancing, comparing five traditional machine learning models with Bidirectional Encoder Representations from Transformers, a transformer model. Random Forest achieved 98.18% accuracy among traditional models, while BERT outperformed all with 99.17% accuracy, surpassing prior benchmarks. Aspect-based analysis revealed that Emotion and Usability drive positive feedback, while Reliability issues fuel negative sentiments, offering actionable insights for developers to enhance chatbot design. This work advances digital mental health research by integrating multi-class classification, transformer models, and aspect-based analysis, demonstrating a scalable framework for evaluating user feedback.

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来源期刊
CiteScore
5.10
自引率
0.00%
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审稿时长
19 weeks
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