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Efficient Character-level Document Classification by Combining Convolution and Recurrent Layers

About

Document classification tasks were primarily tackled at word level. Recent research that works with character-level inputs shows several benefits over word-level approaches such as natural incorporation of morphemes and better handling of rare words. We propose a neural network architecture that utilizes both convolution and recurrent layers to efficiently encode character inputs. We validate the proposed model on eight large scale document classification tasks and compare with character-level convolution-only models. It achieves comparable performances with much less parameters.

Yijun Xiao, Kyunghyun Cho• 2016

Related benchmarks

TaskDatasetResultRank
Text ClassificationYahoo! Answers (test)--
133
Sentiment AnalysisYelp P. (test)
Accuracy94.5
40
Sentiment AnalysisYah. A. (test)
Accuracy71.7
12
Sentiment AnalysisDBP (test)
Accuracy98.6
8
Sentiment AnalysisYelp F. (test)
Accuracy61.8
8
Sentiment AnalysisAmz. F. (test)
Accuracy59.2
8
Sentiment AnalysisAmz. P. (test)
Accuracy94.1
8
Sentiment AnalysisAG (test)
Accuracy91.4
8
Sentiment AnalysisSogou (test)
Accuracy95.2
8
Character-level ClassificationDBpedia character-level (test)
Test Error Rate1.43
7
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