Thammasat University, Klong-luang, Pratumtane, 12120, Thailand.
Department of mental health and psychiatric nursing, Faculty of Nursing, Thammasat University, Klong-luang, Pratuntane, 12120, Thailand.
F1000Res. 2024 Feb 28;11:1411. doi: 10.12688/f1000research.127431.3. eCollection 2022.
The COVID-19 pandemic severely affected populations of all age groups. The elderly are a high-risk group and are highly vulnerable to COVID-19. Assistive software chatbots can enhance the mental health status of the elderly by providing support and companionship. The objective of this study was to validate a Thai artificial chatmate for the elderly during the COVID-19 pandemic and floods.
Chatbot design includes the establishment of a dataset and emotional word vectors in which data consisting of emotional sentences were converted into the word vector form using a pre-trained word2vec model. A word vector was then input into a convolutional neural network (CNN) and trained until the model converges using sentence embedding and similarity word segmentation. Sentence vectors were generated by averaging each word vector using an averaged vector method. For approximate similarity matching, the Annoy library was used to create the indices in tree sorting. Data were collected from 22 elderly and assessed by the Post-Study System Usability Questionnaire (PSSUQ).
The study revealed that 72.73% of the respondents found the chatbot easy to learn and use, 63.64% of the respondents found the chatbot can autonomously determine the next course of action, and 59.09% of the respondents believed that troubleshooting guidelines were provided for overcoming errors. The accuracy of the chatbot providing a reasonable response is 56.20±13.99%.
Most users were satisfied with the chatbot system. The proposed chatbot provided considerable essential insights into the development of assistance systems for the elderly during the coronavirus pandemic (COVID-19) and during the period of national disasters. The model can be expanded to other applications in the future.
COVID-19 大流行严重影响了所有年龄组的人群。老年人是高风险人群,极易受到 COVID-19 的影响。辅助软件聊天机器人可以通过提供支持和陪伴来改善老年人的心理健康状况。本研究的目的是在 COVID-19 大流行和洪灾期间验证一种适用于泰国老年人的人工聊天机器人。
聊天机器人的设计包括建立一个数据集和情感词向量,其中包含情感句子的数据被转换为词向量形式,使用预训练的 word2vec 模型。然后将词向量输入卷积神经网络(CNN),并使用句子嵌入和相似词分割来训练模型,直到模型收敛。通过使用平均向量方法对每个词向量进行平均,生成句子向量。为了进行近似相似性匹配,使用 Annoy 库创建树排序的索引。从 22 位老年人那里收集数据,并使用 Post-Study System Usability Questionnaire(PSSUQ)进行评估。
研究表明,72.73%的受访者认为聊天机器人易于学习和使用,63.64%的受访者认为聊天机器人能够自主确定下一步行动,59.09%的受访者认为提供了故障排除指南以克服错误。聊天机器人提供合理响应的准确率为 56.20±13.99%。
大多数用户对聊天机器人系统感到满意。所提出的聊天机器人为在冠状病毒大流行(COVID-19)期间和国家灾难期间为老年人开发援助系统提供了重要的见解。该模型可以在未来扩展到其他应用程序。