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Efficient Diverse Response Generation in Attention-based Neural Conversational Model with Maximum Mutual Information

机译:基于关注的神经会话模型中有效的多样化响应生成,具有最大互动信息

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Diversity} of generated responses is important for a data-driven neural conversational model (NCM) for non-task-oriented conversation. A criterion of maximum mutual information (MMI) and generating N-best outputs are both effective ways to increase the diversity. Generally, a beam search is used for generating N-best outputs. However, the beam search is likely to produce similar outputs in the N-best results. We propose a simple and efficient N-best search, namely N-greedy search, for an encoder-decoder recurrent neural network (RNN) with an attention mechanism. We built an NCM with a fictive chitchat corpus and generated responses based on the MMI criterion and N-greedy search. All of four objective indices of diversity showed increases, and a subjective evaluation clearly showed a reduction in the number of dull responses.
机译:生成响应的多样性对于非任务为导向的对话对于数据驱动的神经会话模型(NCM)很重要。最大互信息(MMI)和生成N个最佳输出的标准是增加多样性的有效方法。通常,光束搜索用于产生n个最佳输出。然而,光束搜索可能会在n最佳结果中产生类似的输出。我们提出了一种简单高效的N-BEST搜索,即N-Greedy搜索,用于编码器解码器经常性神经网络(RNN),具有注意机制。我们用虚构的Chitchat语料库构建了一个NCM,并基于MMI标准和N-SGEEDY搜索生成响应。所有四个客观的多样性指数都表现出增加,主观评估明确表明减少了沉闷反应的数量。

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