Classifying Extremely Short Texts by Exploiting Semantic Centroids in Word Mover's Distance Space

C. Li, Jihong Ouyang, Ximing Li
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引用次数: 15

Abstract

Automatically classifying extremely short texts, such as social media posts and web page titles, plays an important role in a wide range of content analysis applications. However, traditional classifiers based on bag-of-words (BoW) representations often fail in this task. The underlying reason is that the document similarity can not be accurately measured under BoW representations due to the extreme sparseness of short texts. This results in significant difficulty to capture the generality of short texts. To address this problem, we use a better regularized word mover's distance (RWMD), which can measure distances among short texts at the semantic level. We then propose a RWMD-based centroid classifier for short texts, named RWMD-CC. Basically, RWMD-CC computes a representative semantic centroid for each category under the RWMD measure, and predicts test documents by finding the closest semantic centroid. The testing is much more efficient than the prior art of K nearest neighbor classifier based on WMD. Experimental results indicate that our RWMD-CC can achieve very competitive classification performance on extremely short texts.
利用Word Mover距离空间的语义质心对极短文本进行分类
自动分类极短的文本,如社交媒体帖子和网页标题,在广泛的内容分析应用中起着重要作用。然而,传统的基于词袋(BoW)表示的分类器在这一任务中往往失败。其根本原因是由于短文本的极度稀疏性,在BoW表示下无法准确测量文档的相似度。这就给捕捉短文本的通用性带来了极大的困难。为了解决这个问题,我们使用了一个更好的正则化词移动距离(RWMD),它可以在语义层面测量短文本之间的距离。然后,我们提出了一个基于rwmd的短文本质心分类器,命名为RWMD-CC。基本上,RWMD- cc为RWMD度量下的每个类别计算一个有代表性的语义质心,并通过找到最接近的语义质心来预测测试文档。与现有的基于WMD的K近邻分类器相比,该方法的测试效率更高。实验结果表明,我们的RWMD-CC在极短文本上可以取得非常有竞争力的分类性能。
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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