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Nov, 2019
短文本对话生成中的离散CVAE
A Discrete CVAE for Response Generation on Short-Text Conversation
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Jun Gao, Wei Bi, Xiaojiang Liu, Junhui Li, Guodong Zhou...
TL;DR
本文研究主要通过在条件变分自编码器中引入具有显式语义意义的离散潜变量,从而提高短文本对话生成质量并增加多样性。实验证明,该模型在自动评估和人类评估中表现出色。
Abstract
neural conversation models
such as encoder-decoder models are easy to generate bland and generic responses. Some researchers propose to use the
conditional variational autoencoder
(CVAE) which maximizes the lower
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