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Neural Conversation Recommendation with Online Interaction Modeling

机译:在线互动建模的神经对话推荐

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摘要

The prevalent use of social media leads to a vast amount of online conversations being produced on a daily basis. It presents a concrete challenge for individuals to better discover and engage in social media discussions. In this paper, we present a novel framework to automatically recommend conversations to users based on their prior conversation behaviors. Built on neural collaborative filtering, our model explores deep semantic features that measure how a user's preferences match an ongoing conversation's context. Furthermore, to identify salient characteristics from interleaving user interactions, our model incorporates graph-structured networks, where both replying relations and temporal features are encoded as conversation context. Experimental results on two large-scale datasets collected from Twitter and Reddit show that our model yields better performance than previous state-of-the-art models, which only utilize lexical features and ignore past user interactions in the conversations.
机译:社交媒体的普遍使用导致每天产生大量的在线对话。对于个人来说,如何更好地发现和参与社交媒体讨论提出了具体的挑战。在本文中,我们提出了一个新颖的框架,可根据用户先前的对话行为自动向用户推荐对话。基于神经协作过滤,我们的模型探索了深层的语义特征,这些特征可以测量用户的偏好如何匹配正在进行的对话的上下文。此外,为了从交错的用户交互中识别出显着特征,我们的模型采用了图结构网络,其中答复关系和时间特征都被编码为对话上下文。从Twitter和Reddit收集的两个大型数据集的实验结果表明,我们的模型比以前的最新模型(其仅利用词法功能并忽略对话中的过去用户交互)产生了更好的性能。

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