A Semantic-based Feature Extraction Method Using Categorical Clustering for Persian Document Classification

Saeedeh Davoudi, S. Mirzaei
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引用次数: 2

Abstract

Natural Language Processing (NLP) is one of the promising fields of artificial intelligence. In recent decades, high volume of text data has been generated through the Internet. This kind of data is a valuable source of information which can be used in various fields such as information retrieval, search engines, recommender systems, etc. One practical task of text mining is document classification. In this paper, we mainly focus on Persian document classification. We introduce a new feature extraction approach derived from the combination of K-means clustering and Word2Vec to acquire semantically relevant and discriminant word representations. We call our proposed approach CC-Word2Vec (Categorical Clustering-Word2Vec) since we retrain the Word2Vec model using the word clusters of each category obtained by K-Means algorithm. We use 200 documents of 5 most frequent categories of Hamshahri news dataset to evaluate our method. We pass the extracted word vectors to Multi-Layer Perceptron (MLP) and Gradient Boosting (GB) classifiers to compare the performance of the proposed approach with Term Frequency Inverse Document Frequency (TF-IDF) and Word2Vec methods. Our new approach resulted in an improvement in the obtained accuracy of Gradient Boosting and Multi-Layer Perceptron models in comparison with TF-IDF and Word2Vec techniques.
一种基于语义的波斯语文档分类聚类特征提取方法
自然语言处理(NLP)是人工智能的一个有前途的领域。近几十年来,通过互联网产生了大量的文本数据。这类数据是一种有价值的信息来源,可用于信息检索、搜索引擎、推荐系统等各个领域。文本挖掘的一个实际任务是文档分类。本文主要对波斯语文献分类进行研究。本文提出了一种结合K-means聚类和Word2Vec的特征提取方法,以获取语义相关和可判别的词表示。我们称我们提出的方法为CC-Word2Vec(分类聚类-Word2Vec),因为我们使用K-Means算法获得的每个类别的词簇来重新训练Word2Vec模型。我们使用Hamshahri新闻数据集中5个最常见类别的200个文档来评估我们的方法。我们将提取的词向量传递给多层感知器(MLP)和梯度增强(GB)分类器,以比较所提出方法与词频逆文档频率(TF-IDF)和Word2Vec方法的性能。与TF-IDF和Word2Vec技术相比,我们的新方法提高了梯度增强和多层感知器模型的精度。
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