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Super Characters: A Conversion from Sentiment Classification to Image Classification

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arxiv 1810.07653 v1 pith:7M5SIN4D submitted 2018-10-15 cs.CL

Super Characters: A Conversion from Sentiment Classification to Image Classification

classification cs.CL
keywords classificationcharacterssentimentsupermethodimageimageslarge
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We propose a method named Super Characters for sentiment classification. This method converts the sentiment classification problem into image classification problem by projecting texts into images and then applying CNN models for classification. Text features are extracted automatically from the generated Super Characters images, hence there is no need of any explicit step of embedding the words or characters into numerical vector representations. Experimental results on large social media corpus show that the Super Characters method consistently outperforms other methods for sentiment classification and topic classification tasks on ten large social media datasets of millions of contents in four different languages, including Chinese, Japanese, Korean and English.

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