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Papers/Transition-Based Deep Input Linearization

Transition-Based Deep Input Linearization

Ratish Puduppully, Yue Zhang, Manish Shrivastava

2019-11-07EACL 2017 4Machine TranslationData-to-Text Generation
PaperPDFCode(official)

Abstract

Traditional methods for deep NLG adopt pipeline approaches comprising stages such as constructing syntactic input, predicting function words, linearizing the syntactic input and generating the surface forms. Though easier to visualize, pipeline approaches suffer from error propagation. In addition, information available across modules cannot be leveraged by all modules. We construct a transition-based model to jointly perform linearization, function word prediction and morphological generation, which considerably improves upon the accuracy compared to a pipelined baseline system. On a standard deep input linearization shared task, our system achieves the best results reported so far.

Results

TaskDatasetMetricValueModel
Text GenerationSR11DeepBLEU80.49Transition based Deep Input Linearization
Data-to-Text GenerationSR11DeepBLEU80.49Transition based Deep Input Linearization

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