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An empirical research on sentiment analysis using machine learning approaches

机译:基于机器学习方法的情感分析实证研究

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摘要

Nowadays users of social networks are very much interested in expressing their opinions about different sorts of products or services in social media which leads to the growth of user-generated web contents. Their reviews on social media have a significant impact on customers for making effective and optimal decisions for buying products or using services. In sentiment analysis, most of the used approaches are based on machine learning techniques. In this paper, the well-known methods of machine learning are reviewed and compared against each other. Then the comparative studies on the performance of these techniques on online user reviews that come from multiple industry domains are performed. The experiments involve many different data sets from various domains including Amazon, Yelp and IMDb. Well-known methods such as Support Vector Machine, Decision Tree, Bagging, Boosting, Random Forest and Maximum Entropy are implemented in the experiments. Based on the experimental results it is found that users can extract applicable information from review data sets for business intelligence and better product sales production, and that Boosting and Maximum Entropy outperform the other examined machine learning algorithms for detecting sentiments in online user reviews.
机译:如今,社交网络的用户对在社交媒体上表达他们对不同种类的产品或服务的看法非常感兴趣,这导致了用户生成的网络内容的增长。他们在社交媒体上的评论对客户做出购买产品或使用服务做出有效和最佳决策产生了重大影响。在情感分析中,大多数使用的方法都基于机器学习技术。本文回顾了众所周知的机器学习方法,并相互比较。然后,对这些技术在来自多个行业领域的在线用户评论中的表现进行了比较研究。这些实验涉及来自不同领域的许多不同数据集,包括亚马逊、Yelp 和 IMDb。实验中实现了支持向量机、决策树、装袋、提升、随机森林和最大熵等知名方法。基于实验结果,发现用户可以从评论数据集中提取适用的信息,以实现商业智能和更好的产品销售生产,并且 Boosting 和 Maximum Entropy 在检测在线用户评论中的情绪方面优于其他研究的机器学习算法。

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