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Text Matching as Image Recognition

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arxiv 1602.06359 v1 pith:TDANRQ77 submitted 2016-02-20 cs.CL cs.AI

Text Matching as Image Recognition

classification cs.CL cs.AI
keywords matchingimagepatternsrecognitioncaptureconvolutionalmanymodel
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Matching two texts is a fundamental problem in many natural language processing tasks. An effective way is to extract meaningful matching patterns from words, phrases, and sentences to produce the matching score. Inspired by the success of convolutional neural network in image recognition, where neurons can capture many complicated patterns based on the extracted elementary visual patterns such as oriented edges and corners, we propose to model text matching as the problem of image recognition. Firstly, a matching matrix whose entries represent the similarities between words is constructed and viewed as an image. Then a convolutional neural network is utilized to capture rich matching patterns in a layer-by-layer way. We show that by resembling the compositional hierarchies of patterns in image recognition, our model can successfully identify salient signals such as n-gram and n-term matchings. Experimental results demonstrate its superiority against the baselines.

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