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3 months ago

Can Syntax Help? Improving an LSTM-based Sentence Compression Model for New Domains

{D. Song an Jing Jiang Lejian Liao Chen Hui Ong Liangguo Wang Hai Leong Chieu}

Can Syntax Help? Improving an LSTM-based Sentence Compression Model for New Domains

Abstract

In this paper, we study how to improve the domain adaptability of a deletion-based Long Short-Term Memory (LSTM) neural network model for sentence compression. We hypothesize that syntactic information helps in making such models more robust across domains. We propose two major changes to the model: using explicit syntactic features and introducing syntactic constraints through Integer Linear Programming (ILP). Our evaluation shows that the proposed model works better than the original model as well as a traditional non-neural-network-based model in a cross-domain setting.

Benchmarks

BenchmarkMethodologyMetrics
sentence-compression-on-google-datasetBiLSTM
CR: 0.43
F1: 0.8

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Can Syntax Help? Improving an LSTM-based Sentence Compression Model for New Domains | Papers | HyperAI