信息搜索对话中的用户意图预测

Chen Qu, Liu Yang, W. Bruce Croft, Yongfeng Zhang, Johanne R. Trippas, Minghui Qiu
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引用次数: 77

摘要

会话助手正逐渐被大众所采用。然而,它们不能处理涉及多次信息交换的复杂信息搜索任务。由于会话搜索的通信带宽有限,在信息搜索会话中,会话助手如何准确地检测和预测用户意图是非常重要的。在本文中,我们研究了信息搜索环境下用户意图预测的两个方面。首先,我们根据给定话语的内容、结构和情感特征提取特征,并使用经典的机器学习方法进行用户意图预测。然后,我们进行深入的特征重要性分析,以确定该预测任务中的关键特征。我们发现结构特征对预测性能的贡献最大。鉴于这一发现,我们构建了神经分类器来整合上下文信息,并在没有特征工程的情况下获得更好的性能。我们的研究结果可以为信息寻求会话中用户意图预测的重要因素和有效方法提供见解。
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User Intent Prediction in Information-seeking Conversations
Conversational assistants are being progressively adopted by the general population. However, they are not capable of handling complicated information-seeking tasks that involve multiple turns of information exchange. Due to the limited communication bandwidth in conversational search, it is important for conversational assistants to accurately detect and predict user intent in information-seeking conversations. In this paper, we investigate two aspects of user intent prediction in an information-seeking setting. First, we extract features based on the content, structural, and sentiment characteristics of a given utterance, and use classic machine learning methods to perform user intent prediction. We then conduct an in-depth feature importance analysis to identify key features in this prediction task. We find that structural features contribute most to the prediction performance. Given this finding, we construct neural classifiers to incorporate context information and achieve better performance without feature engineering. Our findings can provide insights into the important factors and effective methods of user intent prediction in information-seeking conversations.
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