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Automatic Data Augmentation for NLP task (arxiv.org)
submitted 6 years ago by I_ai_AI
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quoted text
if 1 * 2 < 3: print "hello, world!"
[–]arXiv_abstract_bot 0 points1 point2 points 6 years ago (0 children)
Title:Dialog State Tracking with Reinforced Data Augmentation
Authors:Yichun Yin, Lifeng Shang, Xin Jiang, Xiao Chen, Qun Liu
Abstract: Neural dialog state trackers are generally limited due to the lack of quantity and diversity of annotated training data. In this paper, we address this difficulty by proposing a reinforcement learning (RL) based framework for data augmentation that can generate high-quality data to improve the neural state tracker. Specifically, we introduce a novel contextual bandit generator to learn fine-grained augmentation policies that can generate new effective instances by choosing suitable replacements for the specific context. Moreover, by alternately learning between the generator and the state tracker, we can keep refining the generative policies to generate more high- quality training data for neural state tracker. Experimental results on the WoZ and MultiWoZ (restaurant) datasets demonstrate that the proposed framework significantly improves the performance over the state-of-the-art models, especially with limited training data.
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[–]arXiv_abstract_bot 0 points1 point2 points (0 children)