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A Fast Unified Model for Parsing and Sentence Understanding

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arxiv 1603.06021 v3 pith:X2OP5AUK submitted 2016-03-19 cs.CL

A Fast Unified Model for Parsing and Sentence Understanding

classification cs.CL
keywords theymodeltree-structuredbatchedcomputationinterpretationmodelsneural
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Tree-structured neural networks exploit valuable syntactic parse information as they interpret the meanings of sentences. However, they suffer from two key technical problems that make them slow and unwieldy for large-scale NLP tasks: they usually operate on parsed sentences and they do not directly support batched computation. We address these issues by introducing the Stack-augmented Parser-Interpreter Neural Network (SPINN), which combines parsing and interpretation within a single tree-sequence hybrid model by integrating tree-structured sentence interpretation into the linear sequential structure of a shift-reduce parser. Our model supports batched computation for a speedup of up to 25 times over other tree-structured models, and its integrated parser can operate on unparsed data with little loss in accuracy. We evaluate it on the Stanford NLI entailment task and show that it significantly outperforms other sentence-encoding models.

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