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Self-Adaptive Hierarchical Sentence Model

About

The ability to accurately model a sentence at varying stages (e.g., word-phrase-sentence) plays a central role in natural language processing. As an effort towards this goal we propose a self-adaptive hierarchical sentence model (AdaSent). AdaSent effectively forms a hierarchy of representations from words to phrases and then to sentences through recursive gated local composition of adjacent segments. We design a competitive mechanism (through gating networks) to allow the representations of the same sentence to be engaged in a particular learning task (e.g., classification), therefore effectively mitigating the gradient vanishing problem persistent in other recursive models. Both qualitative and quantitative analysis shows that AdaSent can automatically form and select the representations suitable for the task at hand during training, yielding superior classification performance over competitor models on 5 benchmark data sets.

Han Zhao, Zhengdong Lu, Pascal Poupart• 2015

Related benchmarks

TaskDatasetResultRank
Subjectivity ClassificationSubj
Accuracy95.5
266
Question ClassificationTREC
Accuracy92.4
205
Text ClassificationTREC
Accuracy92.4
179
Opinion Polarity DetectionMPQA
Accuracy93.3
154
Sentiment ClassificationMR
Accuracy83.1
148
Sentiment ClassificationCR
Accuracy86.3
142
Subjectivity ClassificationSubj (test)
Accuracy95.5
125
Question ClassificationTREC (test)
Accuracy92.4
124
Text ClassificationMR (test)
Accuracy83.1
99
Text ClassificationMR
Accuracy83.1
93
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