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Text Understanding from Scratch

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arxiv 1502.01710 v5 pith:BRM5EU6A submitted 2015-02-05 cs.LG cs.CL

Text Understanding from Scratch

classification cs.LG cs.CL
keywords textconvnetsapplytemporalunderstandingabstractachieveanalysis
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This article demontrates that we can apply deep learning to text understanding from character-level inputs all the way up to abstract text concepts, using temporal convolutional networks (ConvNets). We apply ConvNets to various large-scale datasets, including ontology classification, sentiment analysis, and text categorization. We show that temporal ConvNets can achieve astonishing performance without the knowledge of words, phrases, sentences and any other syntactic or semantic structures with regards to a human language. Evidence shows that our models can work for both English and Chinese.

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