Simultaneous Support Vector selection and parameter optimization using Support Vector Machines for sentiment classification

Ye Fei
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引用次数: 17

Abstract

Sentiment classification is widely used in some areas, such as product reviews, movie reviews, and micro-blogging reviews. Sentiment classification method is mainly bag of words model, Naive Bayes and Support Vector Machine. In recent years, the machine learning method represented by support vector machine (SVM) is widely used in the field of sentiment classification. There are more and more experiments show that support vector machine (SVM) performs better than the traditional bag of words model in the field of sentiment classification. However, more researches mainly focus on semantic analysis and feature extraction on sentiment, but also did not consider the case of sample imbalance. The purpose of this study was to test the feasibility of sentiment classification based on the genetic algorithm to optimize SVM model. Genetic algorithm is an optimization algorithm, which often used for selecting the feature subset and the optimization of the SVM parameters. This paper presents a novel optimization method, which select the optimal support vector subset by genetic algorithm and optimize SVM parameters. We construct the experiment show that the proposed method has improved significantly on sentiment classification than the traditional SVM modeling capabilities.
基于支持向量机的情感分类支持向量选择和参数优化
情感分类广泛应用于产品评论、电影评论、微博评论等领域。情感分类方法主要有词袋模型、朴素贝叶斯和支持向量机。近年来,以支持向量机(SVM)为代表的机器学习方法在情感分类领域得到了广泛的应用。越来越多的实验表明,支持向量机(SVM)在情感分类领域的表现优于传统的词袋模型。然而,更多的研究主要集中在情感的语义分析和特征提取上,而没有考虑样本不平衡的情况。本研究的目的是检验基于遗传算法的情感分类对SVM模型进行优化的可行性。遗传算法是一种优化算法,常用于特征子集的选择和支持向量机参数的优化。提出了一种新的优化方法,利用遗传算法选择最优支持向量子集,并对支持向量机参数进行优化。我们构建的实验表明,所提出的方法在情感分类方面比传统的SVM建模能力有了显著的提高。
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