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Addressee and Response Selection in Multi-Party Conversations with Speaker Interaction RNNs

机译:扬声器交互RNN的多方对话中的收件人和响应选择

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In this paper, we study the problem of addressee and response selection in multi-party conversations. Understanding multi-party conversations is challenging because of complex speaker interactions: multiple speakers exchange messages with each other, playing different roles (sender, addressee, observer), and these roles vary across turns. To tackle this challenge, we propose the Speaker Interaction Recurrent Neural Network (SI-RNN). Whereas the previous state-of-the-art system updated speaker embeddings only for the sender, SI-RNN uses a novel dialog encoder to update speaker embeddings in a role-sensitive way. Additionally, unlike the previous work that selected the addressee and response separately, SI-RNN selects them jointly by viewing the task as a sequence prediction problem. Experimental results show that SI-RNN significantly improves the accuracy of addressee and response selection, particularly in complex conversations with many speakers and responses to distant messages many turns in the past.
机译:在本文中,我们研究了多方对话中的收件人和响应选择问题。了解多方对话是挑战的,因为扬声器交互为了解决这一挑战,我们提出了扬声器相互作用经常性神经网络(SI-RNN)。虽然以前的最先进的系统更新了仅针对发件人的扬声器嵌入式,但SI-RNN使用新颖的对话框编码器以角色敏感方式更新扬声器嵌入式。此外,与分别选择收件人和响应的先前工作不同,SI-RNN通过将任务视为序列预测问题来联合选择它们。实验结果表明,SI-RNN显着提高了收件人和响应选择的准确性,特别是在与许多扬声器的复杂对话中,以及过去的遥远消息的回复。

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