Towards a task-based search and recommender systems

Gabriele Tolomei, S. Orlando, F. Silvestri
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引用次数: 7

Abstract

Nowadays, people have been increasingly interested in exploiting Web Search Engines (WSEs) not only for having access to simple Web pages, but mainly for carrying out even complex activities, namely Web-mediated processes (or taskflows). Therefore, users' information needs will become more complex, and (Web) search and recommender systems should change accordingly for dealing with this shift. We claim that such taskflows and their composing tasks are implicitly present in users' minds when they interact, thus, with a WSE to access the Web. Our first research challenge is thus to evaluate this belief by analyzing a very large, longterm log of queries submitted to a WSE, and associating meaningful semantic labels with the extracted tasks (i.e., clusters of task-related queries) and taskflows. This large knowledge base constitutes a good starting point for building a model of users' behaviors. The second research challenge is to devise a novel recommender system that goes beyond the simple query suggestion of modern WSEs. Our system has to exploit the knowledge base of Webmediated processes and the learned model of users' behaviors, to generate complex insights and task-based suggestions to incoming users while they interact with a WSE.
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朝着基于任务的搜索和推荐系统发展
如今,人们对利用Web搜索引擎(wse)越来越感兴趣,不仅是为了访问简单的Web页面,而且主要是为了执行复杂的活动,即Web中介流程(或任务流)。因此,用户的信息需求将变得更加复杂,(Web)搜索和推荐系统也应该相应地改变,以应对这种转变。我们声称,当用户与WSE交互时,这些任务流及其组成任务隐式地呈现在用户的脑海中,从而访问Web。因此,我们的第一个研究挑战是通过分析提交给WSE的大量长期查询日志,并将有意义的语义标签与提取的任务(即任务相关查询的集群)和任务流关联起来,来评估这种信念。这个庞大的知识库构成了构建用户行为模型的良好起点。第二个研究挑战是设计一种新颖的推荐系统,超越现代wse的简单查询建议。我们的系统必须利用web中介过程的知识库和用户行为的学习模型,在用户与WSE交互时为他们生成复杂的见解和基于任务的建议。
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