基于相关性特征选择和词频逆文档频率的支持向量机算法在情感分析中的实现

Novia Puji Ririanti, A. Purwinarko
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引用次数: 6

摘要

目的:本研究旨在减少具有大特征的情感分析中不相关特征的数量。方法/研究设计/方法:支持向量机(SVM)算法用于酒店评论情绪分析的分类,因为它在处理大型数据集方面具有优势。术语频率逆文档频率(TF-IDF)用于为数据集中的特征赋予权重值。结果/发现:本研究的结果表明,SVM方法与TF-IDF的准确率为93.14%,SVM方法在酒店评论分类中的准确率从93.14%提高到94.32%,提高了1.18%。新颖性/原创性/价值:使用基于相关性的特征节(CFS)进行特征选择过程,它通过基于每个特征中的强相关性值对特征子集进行排序来减少不相关特征的数量
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Implementation of Support Vector Machine Algorithm with Correlation-Based Feature Selection and Term Frequency Inverse Document Frequency for Sentiment Analysis Review Hotel
Purpose: The study aims to reduce the number of irrelevant features in sentiment analysis with large features. Methods/Study design/approach: The Support Vector Machine (SVM) algorithm is used to classify hotel review sentiment analysis because it has advantages in processing large datasets. Term Frequency-Inverse Document Frequency (TF-IDF) is used to give weight values to features in the dataset. Result/Findings: This study's results indicate that the accuracy of the SVM method with TF-IDF produces an accuracy of 93.14%, and the SVM method in the classification of hotel reviews by implementing TFIDF and CFS has increased by 1.18% from 93.14% to 94.32%. Novelty/Originality/Value: Use of Correlation-Based Feature Section (CFS) for the feature selection process, which reduces the number of irrelevant features by ranking the feature subset based on the strong correlation value in each feature
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审稿时长
24 weeks
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