A HYBRID SENTIMENT ANALYSIS APPROACH USING BLACK WIDOW OPTIMIZATION BASED FEATURE SELECTION

IF 0.5 Q4 COMPUTER SCIENCE, INFORMATION SYSTEMS
Anand Joseph Daniel, M. Meena
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引用次数: 3

Abstract

This paper proposes a novel hybrid framework with BWO based feature reduction technique which combines the merits of both machine learning and lexicon-based approaches to attain better scalability and accuracy. The scalability problem arises due to noisy, irrelevant and unique features present in the extracted features from proposed approach, which can be eliminated by adopting an effective feature reduction technique. In our proposed BWO approach, without changing the accuracy (90%), the feature-set size is reduced up to 43%. The proposed feature selection technique outperforms other commonly used PSO and GAbased feature selection techniques with reduced computation time of 21 sec. Moreover, our sentiment analysis approach is analysed using performance metrices such as precision, recall, F-measure, and computation time. Many organizations can use these online reviews to make well-informed decisions towards the users’ interests and preferences to enhance customer satisfaction, product quality and to find the aspects to improve the products, thereby to generate more profits.
基于黑寡妇优化特征选择的混合情感分析方法
本文提出了一种新的基于BWO的特征约简技术的混合框架,该框架结合了机器学习和基于词典的方法的优点,以获得更好的可扩展性和准确性。由于所提出的方法提取的特征中存在噪声、不相关和唯一的特征,因此出现了可扩展性问题,可以通过采用有效的特征约简技术来消除这些问题。在我们提出的BWO方法中,在不改变精度(90%)的情况下,特征集大小减少了43%。所提出的特征选择技术优于其他常用的基于PSO和GA的特征选择方法,减少了21秒的计算时间。此外,我们还使用精度、召回率、F-测度和计算时间等性能指标分析了我们的情感分析方法。许多组织可以利用这些在线评论,根据用户的兴趣和偏好做出明智的决定,以提高客户满意度和产品质量,并找到改进产品的方面,从而产生更多利润。
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来源期刊
International Journal of Information Retrieval Research
International Journal of Information Retrieval Research COMPUTER SCIENCE, INFORMATION SYSTEMS-
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