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Modeling Compositionality with Multiplicative Recurrent Neural Networks

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We present the multiplicative recurrent neural network as a general model for compositional meaning in language, and evaluate it on the task of fine-grained sentiment analysis. We establish a connection to the previously investigated matrix-space models for compositionality, and show they are special cases of the multiplicative recurrent net. Our experiments show that these models perform comparably or better than Elman-type additive recurrent neural networks and outperform matrix-space models on a standard fine-grained sentiment analysis corpus. Furthermore, they yield comparable results to structural deep models on the recently published Stanford Sentiment Treebank without the need for generating parse trees.

Ozan \.Irsoy, Claire Cardie• 2014

Related benchmarks

TaskDatasetResultRank
Sentiment AnalysisSST-5 (test)
Accuracy49.8
173
Sentiment ClassificationStanford Sentiment Treebank SST-2 (test)
Accuracy86.6
99
Sentence ClassificationStanford Sentiment Treebank (SST) fine-grained (test)
Accuracy49.8
40
Fine-grained Sentiment ClassificationStanford Sentiment Treebank (SST) (test)
Accuracy (Fine-grained)49.8
17
Binary Sentence ClassificationStanford Sentiment Treebank (SST) (test)
Accuracy86.6
9
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