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首页> 外文期刊>Journal of web engineering >Machine Learning and Semantic Orientation Ensemble Methods for Egyptian Telecom Tweets Sentiment Analysis
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Machine Learning and Semantic Orientation Ensemble Methods for Egyptian Telecom Tweets Sentiment Analysis

机译:机器学习和语义定向集合方法对埃及电信推文情绪分析

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摘要

The vast amount of data currently available online attracted many parties to analyze sentiments expressed in these data extracting valuable knowledge. Many approaches have been proposed to classify the posted content utilizing a single classifier. However, it has been proven that ensemble learning and combining multiple classifiers may enhance classification performance. The aim of this study is to improve the Egyptian sentiment classification by combining different classification algorithms. First, we investigated the benefit of combining multiple SO classifiers using different subsets from SATALex Egyptian lexicon. Second, we investigated the benefit of combining three classification algorithms; Naive Bayes, Maximum Entropy and Support Vector Machines, adopted as base-classifiers. The experimental results show that combining classifiers can effectively improve the accuracy of Egyptian dataset sentiment classification. However, building these ensembles require more time for processing than the individual classifiers. The time needed depends on the number of classifiers used and the combination method used to combine these classifiers. Thus, the more classifiers used, the more time needed.
机译:目前在线获得的大量数据吸引了许多缔约方来分析这些数据中提取有价值的知识的情绪。已经提出了许多方法来将发布的内容与单个分类器分类。但是,已经证明,集合学习和组合多个分类器可能会提高分类性能。本研究的目的是通过组合不同的分类算法来改善埃及的情绪分类。首先,我们调查了使用来自SataLex埃及词典的不同子集合组合多个所以分类器的益处。其次,我们调查了结合三种分类算法的好处;天真的贝叶斯,最大熵和支持向量机,被用作基础分类器。实验结果表明,组合分类器可以有效提高埃及数据集情绪分类的准确性。但是,构建这些合奏需要更多的时间来处理而不是各个分类器。所需的时间取决于所使用的分类器的数量和用于组合这些分类器的组合方法。因此,所使用的更多分类器,所需的时间越多。

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