Knowledge-enhanced document embeddings for text classification
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摘要
Accurate semantic representation models are essential in text mining applications. For a successful application of the text mining process, the text representation adopted must keep the interesting patterns to be discovered. Although competitive results for automatic text classification may be achieved with traditional bag of words, such representation model cannot provide satisfactory classification performances on hard settings where richer text representations are required. In this paper, we present an approach to represent document collections based on embedded representations of words and word senses. We bring together the power of word sense disambiguation and the semantic richness of word- and word-sense embedded vectors to construct embedded representations of document collections. Our approach results in semantically enhanced and low-dimensional representations. We overcome the lack of interpretability of embedded vectors, which is a drawback of this kind of representation, with the use of word sense embedded vectors. Moreover, the experimental evaluation indicates that the use of the proposed representations provides stable classifiers with strong quantitative results, especially in semantically-complex classification scenarios.
论文关键词:Semantic representation,Document embeddings,Text classification,Text mining
论文评审过程:Received 17 April 2018, Revised 11 October 2018, Accepted 14 October 2018, Available online 21 October 2018, Version of Record 21 November 2018.
论文官网地址:https://doi.org/10.1016/j.knosys.2018.10.026