2017
DOI: 10.12783/dtcse/aice-ncs2016/5647
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Short Text Classification Based on Latent Topic Modeling and Word Embedding

Abstract: Abstract.With the rapid development of the social network and e-commerce, we are exposed to enormous short text every day, ranging from twitters, movie comments, search snippets to news summaries. To classify the short and sparse text accurately is always the basic need for us to deal with information efficiently. However, previous methods fail to achieve high performance due to the sparseness and meaningless of the representation of text. The key breakout lies on the appropriate representation of the words, o… Show more

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