Intent Classification from Online Forums for Phuket Medical Tourism

Nasith Laosen, Kanjana Laosen, Jaturawit Ardharn
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Abstract

Social media makes healthcare and medical information readily available to medical tourists. The medical tourists use social media for searching and communicating about their intents. As the questions posted on social media are rapidly increased, the difficulty to read all questions by human is increased as well. Hospitals running medical tourism business also need to know the needs of medical tourists for improving services and providing the right products to them. The needs or intents of medical tourists can be found on questions that they ask. Therefore, the objective of this study is to collect and classify intents of medical tourists from the questions posted on online forums. In this study, we collect questions related to medical tourism from the TripAdvisor website. We use natural language processing (NLP) to pre-process the questions and classify them using two neural network models, i.e., a BiLSTM model and a BERT model. The experimental result shows that the BERT model provides better performance with 94.22% of accuracy. We also analyze the results and summarize shortcomings of the dataset and the models.
普吉岛医疗旅游在线论坛意向分类
社交媒体使医疗游客可以随时获得医疗保健和医疗信息。医疗游客使用社交媒体搜索和交流他们的意图。随着社交媒体上发布的问题迅速增加,人类阅读所有问题的难度也增加了。经营医疗旅游业务的医院也需要了解医疗游客的需求,以改善服务,为他们提供合适的产品。医疗游客的需求或意图可以从他们提出的问题中找到。因此,本研究的目的是从网上论坛上发布的问题中收集和分类医疗游客的意图。在本研究中,我们从TripAdvisor网站收集了与医疗旅游相关的问题。我们使用自然语言处理(NLP)对问题进行预处理,并使用两种神经网络模型(即BiLSTM模型和BERT模型)对问题进行分类。实验结果表明,BERT模型具有较好的性能,准确率达到94.22%。我们还对结果进行了分析,总结了数据集和模型的不足之处。
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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