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Ranking Responses Oriented to Conversational Relevance in Chat-bots

机译:在聊天机器人中针对会话相关性的排名响应

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For automatic chatting systems, it is indeed a great challenge to reply the given query considering the conversation history, rather than based on the query only. This paper proposes a deep neural network to address the context-aware response ranking problem by end-to-end learning, so as to help to select conversationally relevant candidate. By combining the multi-column convolutional layer and the recurrent layer, our model is able to model the semantics of the utterance sequence by grasping the semantic clue within the conversation, on the basis of the effective representation for each sentence. Especially, the network utilizes attention pooling to further emphasis the importance of essential words in conversations, thus the representations of contexts tend to be more meaningful and the performance of candidate ranking is notably improved. Meanwhile, due to the adoption of attention pooling, it is possible to visualize the semantic clues. The experimental results on the large amount of conversation data from social media have shown that our approach is promising for quantifying the conversational relevance of responses, and indicated its good potential for building practical IR based chat-bots.
机译:对于自动聊天系统,考虑到对话历史记录而不是仅基于查询来答复给定查询确实是一个很大的挑战。本文提出了一种深度神经网络,通过端到端学习来解决上下文感知的响应排名问题,以帮助选择与会话相关的候选人。通过组合多列卷积层和递归层,我们的模型能够基于每个句子的有效表示,通过掌握对话中的语义线索来对发声序列的语义进行建模。特别是,网络利用注意力集中来进一步强调会话中必不可少的单词的重要性,因此上下文的表示趋于更有意义,并且候选者排名的表现也得到了显着提高。同时,由于采用了注意力集中,因此可以可视化语义线索。对来自社交媒体的大量对话数据的实验结果表明,我们的方法在量化响应的对话相关性方面很有希望,并表明其在构建实用的基于IR的聊天机器人方面的巨大潜力。

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