A Robust Hybrid Approach for Textual Document Classification

M. Asim, Muhammad Usman Ghani Khan, M. I. Malik, A. Dengel, Sheraz Ahmed
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引用次数: 14

Abstract

Text document classification is an important task for diverse natural language processing based applications. Traditional machine learning approaches mainly focused on reducing dimensionality of textual data to perform classification. This although improved the overall classification accuracy, the classifiers still faced sparsity problem due to lack of better data representation techniques. Deep learning based text document classification, on the other hand, benefitted greatly from the invention of word embeddings that have solved the sparsity problem and researchers focus mainly remained on the development of deep architectures. Deeper architectures, however, learn some redundant features that limit the performance of deep learning based solutions. In this paper, we propose a two stage text document classification methodology which combines traditional feature engineering with automatic feature engineering (using deep learning). The proposed methodology comprises a filter based feature selection (FSE) algorithm followed by a deep convolutional neural network. This methodology is evaluated on the two most commonly used public datasets, i.e., 20 Newsgroups data and BBC news data. Evaluation results reveal that the proposed methodology outperforms the state-of-the-art of both the (traditional) machine learning and deep learning based text document classification methodologies with a significant margin of 7.7% on 20 Newsgroups and 6.6% on BBC news datasets.
文本文档分类的鲁棒混合方法
文本文档分类是基于自然语言处理的各种应用的一项重要任务。传统的机器学习方法主要集中在对文本数据进行降维来进行分类。这虽然提高了整体的分类精度,但由于缺乏更好的数据表示技术,分类器仍然面临稀疏性问题。另一方面,基于深度学习的文本文档分类很大程度上得益于词嵌入的发明,它解决了稀疏性问题,研究人员主要关注深度架构的发展。然而,更深层次的架构学习了一些冗余的特征,限制了基于深度学习的解决方案的性能。本文提出了一种结合传统特征工程和自动特征工程(利用深度学习)的两阶段文本文档分类方法。提出的方法包括基于滤波器的特征选择(FSE)算法和深度卷积神经网络。该方法在两个最常用的公共数据集上进行了评估,即20新闻组数据和BBC新闻数据。评估结果显示,所提出的方法优于(传统的)机器学习和基于深度学习的文本文档分类方法,在20个新闻组和BBC新闻数据集上的差距分别为7.7%和6.6%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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