WEFEST: Word Embedding Feature Extension for Short Text Classification

Lei Sang, Fei Xie, Xiaojian Liu, Xindong Wu
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引用次数: 11

Abstract

Short text classification is a crucial task for information retrieval, social medial text categorization, and many other applications. In reality, due to the inherent sparsity and the limited information available in the short texts, learning and classifying short texts is a significant challenge. In this paper, we propose a new framework, WEFEST, which expands short texts using word embedding for classification. WEFEST is rooted on the deep language model, which learns a new word embedding space, by using word correlations, such that semantically related words also have close feature vectors in the new space. By using word embedding features to help expand the short tests, WEFEST can enrich the word density in the short texts for effective learning, by following three major steps. First, each short text in the training dataset is enriched by using pre-trained word feature embedding. Then the semantic similarity between two short texts is calculated by using the statistical frequency information retrieved from the trained model. Finally, we use the nearest neighbor algorithm to achieve short text classification. Experimental results on Chinese news title dataset validate the effectiveness of the proposed method.
用于短文本分类的词嵌入功能扩展
短文本分类是信息检索、社交媒体文本分类和许多其他应用的关键任务。在现实中,由于短文本固有的稀疏性和信息的有限性,短文本的学习和分类是一个巨大的挑战。在本文中,我们提出了一个新的框架WEFEST,它利用词嵌入对短文本进行扩展分类。WEFEST基于深度语言模型,该模型通过使用词相关性学习新的词嵌入空间,使得语义相关的词在新的空间中也具有相近的特征向量。通过使用词嵌入特征来帮助扩展短测试,WEFEST可以通过以下三个主要步骤来丰富短文本中的词密度,从而实现有效的学习。首先,利用预训练词特征嵌入对训练数据集中的每个短文本进行丰富。然后利用从训练模型中检索到的统计频率信息计算两个短文本之间的语义相似度。最后,利用最近邻算法实现短文本分类。中文新闻标题数据集的实验结果验证了该方法的有效性。
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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