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Unsupervised feature selection for text classification via word embedding

机译:通过词嵌入进行文本分类的无监督特征选择

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摘要

The key of big text documents data analysis is to classify those text documents. To classify those text documents, it is necessary to represent those text documents as vectors which is vector space model (VSM). A powerful vector space model should remain the classification information with dimensions as little as possible. To achieve that, it is important to select most effective features for text classification. Unlike the supervised selection method which utilizes the category information in the training data, we propose an unsupervised feature selection method. Our method requires no category information which makes our method has more application scenarios as the labeled data is expensive and inaccurate. Unlike other unsupervised methods, our method utilizes word embedding to find the words with similar semantic meaning. The word embedding maps the words into vectors and remains the semantic relationships between words. We select the most representative word on behalf of the words with similar semantic meaning because it is redundant to include all those words as features. We demonstrate on Reuters-21578 dataset, that our method outperforms other methods. Especially, our method has great advantage when select limited features.
机译:大文本文档数据分析的关键是对那些文本文档进行分类。为了对那些文本文档进行分类,有必要将这些文本文档表示为向量,这是向量空间模型(VSM)。一个强大的向量空间模型应保持分类信息的维数尽可能小。为此,选择最有效的文本分类功能非常重要。与利用训练数据中类别信息的监督选择方法不同,我们提出了一种无监督特征选择方法。我们的方法不需要类别信息,这使得我们的方法具有更多的应用场景,因为标记的数据昂贵且不准确。与其他无监督方法不同,我们的方法利用单词嵌入来查找具有相似语义的单词。单词嵌入将单词映射为向量,并保留单词之间的语义关系。我们选择具有最相似语义的单词来代表最具代表性的单词,因为将所有这些单词都包含为特征是多余的。我们在Reuters-21578数据集上证明,我们的方法优于其他方法。特别是,当选择有限的功能时,我们的方法具有很大的优势。

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