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Simpler is better? Lexicon-based ensemble sentiment classification beats supervised methods

机译:越简单越好?基于词典的合奏情绪分类优于监督方法

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It has been shown in this paper that simplistic Bag of Words (BoW) lexicon methods for sentiment polarity assignment with ensemble classifiers are much faster than a supervised approach to sentiment classification while yielding similar accuracy. BoW methods also proved to be efficient and fast across all examined datasets. Moreover, a new approach to lexicon extraction that can be successfully used for sentiment polarity assignment is presented in the paper. It has been shown that accuracy obtained from such lexicons outperforms other lexicon based approaches.
机译:本文表明,使用集成分类器进行情感极性分配的简单单词袋(BoW)词典方法比监督式情感分类方法要快得多,同时产生了相似的准确性。在所有检查的数据集中,BoW方法也被证明是高效且快速的。此外,本文提出了一种新的词典提取方法,可以成功地用于情感极性分配。已经表明,从这样的词典获得的准确性优于其他基于词典的方法。

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