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Semantic Features for Optimizing Supervised Approach of Sentiment Analysis on Product Reviews

机译:优化产品评论的情绪分析监督方法的语义特征

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The growth of ecommerce has triggered online reviews as a rich source of product information. Revealing consumer sentiment from the reviews through Sentiment Analysis (SA) is an important task of online product review analysis. Two popular approaches of SA are the supervised approach and the lexicon-based approach. In supervised approach, the employed machine learning (ML) algorithm is not the only one to influence the results of SA. The utilized text features also handle an important role in determining the performance of SA tasks. In this regard, we proposed a method to extract text features that takes into account semantic of words. We argue that this semantic feature is capable of augmenting the results of supervised SA tasks compared to commonly utilized features, i.e., bag-of-words (BoW). To extract the features, we assigned the correct sense of the word in reviewing the sentence by adopting a Word Sense Disambiguation (WSD) technique. Several WordNet similarity algorithms were involved, and correct sentiment values were assigned to words. Accordingly, we generated text features for product review documents. To evaluate the performance of our text features in the supervised approach, we conducted experiments using several ML algorithms and feature selection methods. The results of the experiments using 10-fold cross-validation indicated that our proposed semantic features favorably increased the performance of SA by 10.9%, 9.2%, and 10.6% of precision, recall, and F-Measure, respectively, compared with baseline methods.
机译:电子商务的增长触发了在线审查作为丰富的产品来源。通过情感分析揭示来自审查的消费者情绪(SA)是在线产品审查分析的重要任务。 SA流行方法是受监督的方法和基于词汇的方法。在监督方法中,采用的机器学习(ML)算法不是唯一影响SA结果的唯一。利用文本特征还在确定SA任务的性能方面处理重要作用。在这方面,我们提出了一种提取考虑到文字语义的文本功能的方法。我们认为,与常用的特征相比,这种语义特征能够增强监督SA任务的结果,即词语(弓)。要提取功能,我们通过采用单词感应消歧(WSD)技术,为审查句子分配了正确的单词感。涉及几个WordNet相似性算法,并将正确的情感值分配给单词。因此,我们为产品审查文档生成了文本功能。为了评估我们在监督方法中的文本特征的性能,我们使用多种ML算法和特征选择方法进行实验。使用10倍交叉验证的实验结果表明,我们提出的语义特征在于与基线方法相比,我们的提出的语义特征分别将SA的性能提高了10.9%,9.2%和10.6%的精度,召回和F测量。

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