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Reinforcement Learning for Few-Shot Text Generation Adaptation

2021-11-22 07:33:40
Cheng Pengsen, Dai Jinqiao, Liu Jiayong

Abstract

Controlling the generative model to adapt a new domain with limited samples is a difficult challenge and it is receiving increasing attention. Recently, few-shot learning has shown promising process in domain adaptation. However, the texts generated by few-shot learning are typically devoid of linguistic diversity. To address this shortcoming, we frame the adaptation of text generation systems as a reinforcement learning problem and provide a new approach to make text generation models easily adaptable to target domain with the minimal amount of in-domain data. Experimental results on five target domains in two few-shot configurations demonstrate that our method significantly outperforms domain adaptation when very few in-domain samples are available.

Abstract (translated)

URL

https://arxiv.org/abs/2111.11030

PDF

https://arxiv.org/pdf/2111.11030.pdf


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