一种有效的机器学习方法对孟加拉国受欢迎的餐馆评论进行情感分析

S. M. Asiful Huda, M. Shoikot, M. A. Hossain, Ishrat Jahan Ila
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引用次数: 4

摘要

在这个社交媒体的前沿时期,情感分析或文本挖掘正在成为一个巨大的研究领域。不同的网络期刊和社交媒体(Facebook, Twitter, Instagram)是消费者和用户最流行的舞台,他们大部分时间都在这里表达他们对热门话题,不同品牌,餐厅,电影,书籍等的判断。分析情绪是发现人们对新闻、地点、餐馆、电影、书籍、品牌的看法的一种非常聪明和可行的方法。这对业主和卖方都有帮助。在这项研究中,我们使用自然语言处理技术和机器学习算法建立了一个模型,以自动将孟加拉国约200家受欢迎的餐馆的评论分类为“满意”或“差”。这将极大地帮助店主收集消费者对他们餐厅的看法。在本文中,我们开发了一种有效的机器学习方法来构建一个模型,该模型可以通过分析客户对餐厅的评论来预测情绪。除了其他分类模型外,我们的模型还使用支持向量机分类器实现了95%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。
An Effective Machine Learning Approach for Sentiment Analysis on Popular Restaurant Reviews in Bangladesh
Sentiment analysis or text mining is making a huge field of research in this cutting-edge period of social media. Different web journals and Social Media (Facebook, Twitter, Instagram) are the most prevalent stage for the consumers and users where most of the time they express their judgement about trending topics, different brands, restaurant, films, books and so on. Analyzing sentiment is an exceptionally brilliant and viable way to discover people views about news, place, restaurant, film, book, brand. It is helpful for both the owners and sellers. In this study, we built a model using natural language processing techniques and machine learning algorithms to automate the approach of classifying a review on around 200 popular restaurants of Bangladesh as Satisfactory or Poor. This would greatly help the owners to gather a view about the consumers on their restaurant. In this paper, we developed an effective machine learning approach to build a model that can predict the sentiment by analyzing the customer’s review of a restaurant. Our model achieved an accuracy of 95% using Support Vector Machine Classifier besides other classification models.
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