行为驱动的搜索任务识别主题转换

Liangda Li, Hongbo Deng, Yunlong He, Anlei Dong, Yi Chang, H. Zha
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引用次数: 14

摘要

用户查询序列中的搜索任务是动态的、相互关联的。搜索任务的制定可能受到用户特征、产品特征和搜索交互等多种潜在因素的影响,这使得搜索任务识别成为一个具有挑战性的问题。在本文中,我们提出了一种通过主题隶属度和主题转移概率来识别搜索任务的无监督方法,从而可以解释用户的搜索意图是如何随着时间的推移而产生和演变的。此外,引入了一种新的隐式半马尔可夫模型,该模型不仅考虑了查询的语义信息,而且考虑了用户搜索行为产生的潜在搜索因素。开发了一种变分推理算法,从查询日志中识别出显著的搜索行为模式、典型的主题转移轨迹和每个查询的主题隶属关系。学习到的主题转换轨迹和推断的主题隶属关系使我们能够识别用户搜索相同主题的小搜索任务和用户搜索一系列相关主题的大搜索任务。我们对提出的方法进行了广泛的评估,并在合成和实际查询日志数据上与几种最先进的搜索任务识别方法进行了比较,实验结果表明了我们提出的模型的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Behavior Driven Topic Transition for Search Task Identification
Search tasks in users' query sequences are dynamic and interconnected. The formulation of search tasks can be influenced by multiple latent factors such as user characteristics, product features and search interactions, which makes search task identification a challenging problem. In this paper, we propose an unsupervised approach to identify search tasks via topic membership along with topic transition probabilities, thus it becomes possible to interpret how user's search intent emerges and evolves over time. Moreover, a novel hidden semi-Markov model is introduced to model topic transitions by considering not only the semantic information of queries but also the latent search factors originated from user search behaviors. A variational inference algorithm is developed to identify remarkable search behavior patterns, typical topic transition tracks, and the topic membership of each query from query logs. The learned topic transition tracks and the inferred topic memberships enable us to identify both small search tasks, where a user searches the same topic, and big search tasks, where a user searches a series of related topics. We extensively evaluate the proposed approach and compare with several state-of-the-art search task identification methods on both synthetic and real-world query log data, and experimental results illustrate the effectiveness of our proposed model.
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