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Simulated Annealing for Emotional Dialogue Systems

2021-09-22 13:17:17
Chengzhang Dong, Chenyang Huang, Osmar Zaïane, Lili Mou

Abstract

Explicitly modeling emotions in dialogue generation has important applications, such as building empathetic personal companions. In this study, we consider the task of expressing a specific emotion for dialogue generation. Previous approaches take the emotion as an input signal, which may be ignored during inference. We instead propose a search-based emotional dialogue system by simulated annealing (SA). Specifically, we first define a scoring function that combines contextual coherence and emotional correctness. Then, SA iteratively edits a general response and searches for a sentence with a higher score, enforcing the presence of the desired emotion. We evaluate our system on the NLPCC2017 dataset. Our proposed method shows 12% improvements in emotion accuracy compared with the previous state-of-the-art method, without hurting the generation quality (measured by BLEU).

Abstract (translated)

URL

https://arxiv.org/abs/2109.10715

PDF

https://arxiv.org/pdf/2109.10715.pdf


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