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Dynamic Compositional Neural Networks over Tree Structure

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Tree-structured neural networks have proven to be effective in learning semantic representations by exploiting syntactic information. In spite of their success, most existing models suffer from the underfitting problem: they recursively use the same shared compositional function throughout the whole compositional process and lack expressive power due to inability to capture the richness of compositionality. In this paper, we address this issue by introducing the dynamic compositional neural networks over tree structure (DC-TreeNN), in which the compositional function is dynamically generated by a meta network. The role of meta-network is to capture the metaknowledge across the different compositional rules and formulate them. Experimental results on two typical tasks show the effectiveness of the proposed models.

Pengfei Liu, Xipeng Qiu, Xuanjing Huang• 2017

Related benchmarks

TaskDatasetResultRank
Subjectivity ClassificationSubj
Accuracy93.7
266
Text ClassificationTREC
Accuracy93.8
179
Sentiment ClassificationSST-2
Accuracy87.8
174
Sentiment ClassificationMR
Accuracy81.7
148
Text ClassificationMR
Accuracy81.7
93
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