Improvement of Sentiment Analysis Based on Clustering of Word2Vec Features

Eissa Alshari, A. Azman, S. Doraisamy, N. Mustapha, Mustafa Alkeshr
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引用次数: 33

Abstract

Recently, many researchers have shown interest in using Word2Vec as the features for text classification tasks such as sentiment analysis. Its ability to model high quality distributional semantics among words has contributed to its success in many of the tasks. However, due to the high dimensional nature of the Word2Vec features, it increases the complexity for the classifier. In this paper, a method to construct a feature set based on Word2Vec is proposed for sentiment analysis. The method is based on clustering of terms in the vocabulary based on a set of opinion words from a sentiment lexical dictionary. As a result, the feature set for the classification is constructed based on the set of clusters. The effectiveness of the proposed method is evaluated on the Internet Movie Review Dataset with two classifiers, namely the Support Vector Machine and the Logistic Regression. The result is promising, showing that the proposed method can be more effective than the baseline approaches.
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基于Word2Vec特征聚类的情感分析改进
最近,许多研究人员对使用Word2Vec作为文本分类任务(如情感分析)的特征表现出兴趣。它在单词之间建立高质量分布语义模型的能力有助于它在许多任务中取得成功。然而,由于Word2Vec特征的高维性质,它增加了分类器的复杂性。本文提出了一种基于Word2Vec的情感分析特征集构建方法。该方法基于一组来自情感词汇词典的意见词,对词汇中的术语进行聚类。因此,分类的特征集是基于聚类集构建的。用支持向量机和逻辑回归两种分类器在互联网电影评论数据集上评估了该方法的有效性。结果表明,该方法比基线方法更有效。
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