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arxiv: 2009.12102 · v1 · pith:APMULXCG · submitted 2020-09-25 · cs.CL

Focus-Constrained Attention Mechanism for CVAE-based Response Generation

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classification cs.CL
keywords informationdiscourse-levelfine-grainedresponseresponsestargetattentiondiverse
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To model diverse responses for a given post, one promising way is to introduce a latent variable into Seq2Seq models. The latent variable is supposed to capture the discourse-level information and encourage the informativeness of target responses. However, such discourse-level information is often too coarse for the decoder to be utilized. To tackle it, our idea is to transform the coarse-grained discourse-level information into fine-grained word-level information. Specifically, we firstly measure the semantic concentration of corresponding target response on the post words by introducing a fine-grained focus signal. Then, we propose a focus-constrained attention mechanism to take full advantage of focus in well aligning the input to the target response. The experimental results demonstrate that by exploiting the fine-grained signal, our model can generate more diverse and informative responses compared with several state-of-the-art models.

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