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An application of MOGW optimization for feature selection in text classification

机译:MOGW优化在文本分类中的特征选择中的应用

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摘要

Due to extensive web applications, sentiment classification (SC) has become a relevant issue of interest among text mining experts. The extensive online reviews prevent the application of effective models to be used in companies and in the decision making of individuals. Pre-processing greatly contributes in sentiment classification. The traditional bag-of-words approaches do not record multiple relationships among words. In this study, emphasis is on the pre-processing stage and data reduction techniques, which would make a big difference in sentiment classification efficiency. To classify opinions, a multi-objective-grey wolf-optimization algorithm is proposed where the two objectives aim for decreasing the error of Naive Bayes and K-nearest neighbour classifiers and a neural network as the final classifier. In evaluating this proposed framework, three datasets are applied. By obtaining 95.76% precision, 95.75% accuracy, 95.99% recall, and 95.82% f-measure, it is evident that this framework outperforms its counterparts.
机译:由于Web应用程序广泛,情绪分类(SC)已成为文本挖掘专家之间有关兴趣的相关问题。广泛的在线评论防止在公司和决策中使用有效模型和个人的决策。预处理大大贡献了情绪分类。传统的文字袋方法不会在单词之间录制多种关系。在这项研究中,重点是预处理阶段和数据减少技术,这将对情绪分类效率产生很大差异。为了对意见进行分类,提出了一种多目标 - 灰色狼优化算法,其中两个目标的目标是将天真贝叶斯和k最近邻分类器的错误和神经网络作为最终分类器的误差。在评估这一提议的框架时,应用了三个数据集。通过获得95.76%的精确度,精度为95.75%,召回95.99%和95.82%F测量,显然该框架优于其对应物。

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