Machine Learning-Based Social Media Review Analysis for Recommending Tourist Spots

Prakash Lahagun, Bidur Devkota, Sakchham Giri, Parbat Budha
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Abstract

In recent years, the tourism industry has witnessed significant growth, resulting in an increased demand for effective and personalized tourist place recommendation systems. In this study, a tourist spot recommendation system is proposed which is built by developing a machine learning model based on a Support Vector Machine (SVM), Decision Tree (DT), and k-Nearest Neighbors(k-NN). Public experiences and opinions regarding the various spots available in popular social media sites such as TripAdvisor, Google, Instagram, and TikTok are utilized to train the model. The system matches the probability of the user query with the predicted probability of reviews for a particular spot. The SVM algorithm, known for its robustness in handling high-dimensional data, is adapted to model the complex relationships between users' reviews, spots, and their attributes. Real-world data is used to evaluate the system's performance, demonstrating its ability to significantly improve the user experience and contribute to the sustainable growth of the tourism sector. The system's capability was demonstrated as it achieved a notable F1-Score of 0.78 when SVM was implemented. Additionally, a promising accuracy rate of 93.023% was observed when random queries were used for tourism spot prediction, emphasizing that SVM outperformed DT and k-NN.
基于机器学习的社交媒体评论分析推荐旅游景点
近年来,旅游业取得了长足的发展,因此对有效的个性化旅游景点推荐系统的需求也随之增加。本研究通过开发基于支持向量机(SVM)、决策树(DT)和 k-Nearest Neighbors(k-NN)的机器学习模型,提出了一种旅游景点推荐系统。在训练模型时,利用了公众对 TripAdvisor、Google、Instagram 和 TikTok 等流行社交媒体网站上各种景点的体验和意见。该系统将用户查询的概率与特定景点评论的预测概率相匹配。SVM 算法因其在处理高维数据时的鲁棒性而闻名,该算法适用于对用户评论、景点及其属性之间的复杂关系进行建模。真实世界的数据被用来评估该系统的性能,证明它有能力显著改善用户体验,促进旅游业的可持续发展。在采用 SVM 时,该系统的 F1 分数达到了 0.78,这充分证明了该系统的能力。此外,在使用随机查询进行旅游景点预测时,准确率达到了 93.023%,这表明 SVM 的性能优于 DT 和 k-NN。
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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