Subjective Sentiment Analysis for Arabic Newswire Comments

Sadik Bessou, Rania Aberkane
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引用次数: 6

Abstract

This paper presents an approach based on supervised machine learning methods to discriminate between positive, negative and neutral Arabic reviews in online newswire. The corpus is labeled for subjectivity and sentiment analysis (SSA) at the sentence-level. The model uses both count and TF-IDF representations and apply six machine learning algorithms; Multinomial Naive Bayes, Support Vector Machines (SVM), Random Forest, Logistic Regression, Multi-layer perceptron and k-nearest neighbors using uni-grams, bi-grams features. With the goal of extracting users sentiment from written text. Experimental results showed that n-gram features could substantially improve performance; and showed that the Multinomial Naive Bayes approach is the most accurate in predicting topic polarity. Best results were achieved using count vectors trained by combination of word-based uni-grams and bi-grams with an overall accuracy of 85.57% over two classes and 65.64% over three classes.
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阿拉伯通讯社评论的主观情绪分析
本文提出了一种基于监督机器学习的方法来区分在线新闻中积极、消极和中立的阿拉伯语评论。语料库被标记为句子级的主观性和情感分析(SSA)。该模型同时使用计数和TF-IDF表示,并应用六种机器学习算法;多项朴素贝叶斯,支持向量机(SVM),随机森林,逻辑回归,多层感知器和k近邻使用单位图,双图特征。目的是从书面文本中提取用户情感。实验结果表明,n-gram特征可以显著提高性能;结果表明,多项朴素贝叶斯方法在预测主题极性方面是最准确的。使用基于单词的单格和双格组合训练的计数向量获得了最好的结果,两类的总体准确率为85.57%,三类的总体准确率为65.64%。
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