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Papers/Dynamic Multi-Level Multi-Task Learning for Sentence Simpl...

Dynamic Multi-Level Multi-Task Learning for Sentence Simplification

Han Guo, Ramakanth Pasunuru, Mohit Bansal

2018-06-19COLING 2018 8Multi-Task LearningText SimplificationParaphrase Generation
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Abstract

Sentence simplification aims to improve readability and understandability, based on several operations such as splitting, deletion, and paraphrasing. However, a valid simplified sentence should also be logically entailed by its input sentence. In this work, we first present a strong pointer-copy mechanism based sequence-to-sequence sentence simplification model, and then improve its entailment and paraphrasing capabilities via multi-task learning with related auxiliary tasks of entailment and paraphrase generation. Moreover, we propose a novel 'multi-level' layered soft sharing approach where each auxiliary task shares different (higher versus lower) level layers of the sentence simplification model, depending on the task's semantic versus lexico-syntactic nature. We also introduce a novel multi-armed bandit based training approach that dynamically learns how to effectively switch across tasks during multi-task learning. Experiments on multiple popular datasets demonstrate that our model outperforms competitive simplification systems in SARI and FKGL automatic metrics, and human evaluation. Further, we present several ablation analyses on alternative layer sharing methods, soft versus hard sharing, dynamic multi-armed bandit sampling approaches, and our model's learned entailment and paraphrasing skills.

Results

TaskDatasetMetricValueModel
Text SimplificationTurkCorpusBLEU81.49Pointer + Multi-task Entailment and Paraphrase Generation
Text SimplificationTurkCorpusSARI (EASSE>=0.2.1)37.45Pointer + Multi-task Entailment and Paraphrase Generation
Text SimplificationNewselaBLEU11.14Pointer + Multi-task Entailment and Paraphrase Generation
Text SimplificationNewselaSARI33.22Pointer + Multi-task Entailment and Paraphrase Generation
Text SimplificationPWKP / WikiSmallBLEU27.23Pointer + Multi-task Entailment and Paraphrase Generation
Text SimplificationPWKP / WikiSmallSARI29.58Pointer + Multi-task Entailment and Paraphrase Generation

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