利用支持向量机n -图方法提高待客情绪评价分析性能

Enrico Laoh, I. Surjandari, Nadhila Idzni Prabaningtyas
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引用次数: 10

摘要

情感分析或观点挖掘是一种分析,用于获取观点中包含的有意义的信息或情感。情感分析的使用已经蔓延到各个领域,也存在于旅游领域。许多游客在旅游网站或旅游平台上积极阅读和撰写评论。而在点评信息中包含了对公司或酒店经理有用的信息,考虑到酒店业的竞争非常激烈。根据文献证明,该分析使用n-grams方法从评论文本数据中产生关于情感的知识,以提高准确性水平。本研究使用支持向量机作为正面和负面情绪的评论分类方法。本研究结果表明,平均准确率为94%,高于以往使用相同数据的研究的准确率水平。此外,本研究表明,使用SVM作为分类模型比递归神经张量网络(RNTN)产生更高的准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhancing Hospitality Sentiment Reviews Analysis Performance using SVM N-Grams Method
Sentiment analysis or opinion mining is an analysis conducted to derive meaningful information or sentiments contained in an opinion. The use of sentiment analysis has spread in various fields, also exists in the tourism sector. Many tourists are actively reading and writing reviews on travel websites or travel platforms. Whereas in the review information contained useful information for the company or hotel manager, considering that the hospitality industry is very competitive. This analysis produces knowledge about sentiment from the review text data using approaches of n-grams to increase the level of accuracy according to the literature proven. This research uses SVM as a review classification method with positive and negative sentiment. The results of this research indicate an average level of accuracy of 94% which is greater than the level of accuracy in previous research using the same data. In addition, this research shows that the use of SVM as a classification model produces a higher level of accuracy than the Recursive Neural Tensor Network (RNTN).
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