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Papers/Jointly Optimizing Diversity and Relevance in Neural Respo...

Jointly Optimizing Diversity and Relevance in Neural Response Generation

Xiang Gao, Sungjin Lee, Yizhe Zhang, Chris Brockett, Michel Galley, Jianfeng Gao, Bill Dolan

2019-02-28NAACL 2019 6Dialogue GenerationChatbotResponse Generation
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Abstract

Although recent neural conversation models have shown great potential, they often generate bland and generic responses. While various approaches have been explored to diversify the output of the conversation model, the improvement often comes at the cost of decreased relevance. In this paper, we propose a SpaceFusion model to jointly optimize diversity and relevance that essentially fuses the latent space of a sequence-to-sequence model and that of an autoencoder model by leveraging novel regularization terms. As a result, our approach induces a latent space in which the distance and direction from the predicted response vector roughly match the relevance and diversity, respectively. This property also lends itself well to an intuitive visualization of the latent space. Both automatic and human evaluation results demonstrate that the proposed approach brings significant improvement compared to strong baselines in both diversity and relevance.

Results

TaskDatasetMetricValueModel
DialogueReddit (multi-ref)interest (human)2.53SpaceFusion
DialogueReddit (multi-ref)relevance (human)2.72SpaceFusion
Text GenerationReddit (multi-ref)interest (human)2.53SpaceFusion
Text GenerationReddit (multi-ref)relevance (human)2.72SpaceFusion
ChatbotReddit (multi-ref)interest (human)2.53SpaceFusion
ChatbotReddit (multi-ref)relevance (human)2.72SpaceFusion
Dialogue GenerationReddit (multi-ref)interest (human)2.53SpaceFusion
Dialogue GenerationReddit (multi-ref)relevance (human)2.72SpaceFusion

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