基于酒店点评数据的游客情感分析与应用

Bin Wu, Bo Feng, Jun Du, Xiaojia Huang, Liangliang Gao
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引用次数: 0

摘要

在当今的生活中,在线旅行社(OTA)平台获得了越来越多的用户。OTA平台上的游客对酒店的评价更多。同样,真实性也显著增加。真实的用户反馈对酒店质量的提升具有指导作用,但需要从复杂的评论数据和一系列的数据分析过程中获取有用的信息。本文采用“八花雨”采集器获取数据,对数据集进行预处理。使用jieba完成分割。首先利用词频-逆文档频率算法提取关键词,然后利用词袋模型构造词向量。最后,使用子采样来平衡数据集。建立支持向量机、朴素贝叶斯和长短期记忆神经网络模型对参数进行分类和调整,比较模型的分类性能,根据分类结果对酒店自我优化升级提出建议。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysis and Application of Tourists’ Sentiment Based on Hotel Comment Data
In today’s life, Online Travel Agency (OTA) platform gets more and more users. Tourists on OTA platform makes much more comments on hotels. Similarly, the authenticity also increases significantly. Real user feedback plays a guiding role in improving the quality of the hotel, but it needs to obtain useful information from the complex comment data and a series of data analysis processes. In this paper, the ‘Bazhuayu’ collector is used to gain data, making pre-processing of the dataset. Using jieba to finish segmentation. The Term Frequency-Inverse Document Frequency algorithm is used to extract keywords, and then the Bag-of-Words model is used to construct the word vector. Finally, subsampled is used to balance the dataset. The support vector machine, Naive Bayes and Long Short-Term Memory neural network model are established to classify and adjust the parameters, compare the classification performance of the models, put forward some suggestions for hotel self optimization and upgrading according to the classification result.
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