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Effects of prior knowledge on the effectiveness of a hybrid user model for information retrieval

机译:现有知识对信息检索信息检索混合用户模型有效性的影响

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To quickly find relevant information from huge amounts of data is a very challenging issue for intelligence analysts. Most employ their prior domain knowledge to improve their process of finding relevant information. In this paper, we explore the influences of a user's prior domain knowledge on the effectiveness of an information seeking task by using seed user models in an enhanced information retrieval system. In our approach, a user model is created to capture a user's intent in an information seeking task. The captured user intent is then integrated with the attributes describing an information retrieval system in a decision theoretic framework. Our test bed consists of two benchmark collections from the information retrieval community: MEDLINE and CACM. We divide each query set from a collection into two subsets: training set and testing set. We use three different approaches to selecting the queries for the training set: (1) the queries generating large domain knowledge, (2) the queries relating to many other queries, and (3) a mixture of (1) and (2). Each seed user model is created by running our enhanced information retrieval system through such a training set. We assess the effects of having more domain knowledge, or more relevant domain knowledge, or a mixture of both on the effectiveness of a user in an information seeking task.
机译:为了快速查找大量数据的相关信息是智能分析师的一个非常具有挑战性的问题。大多数人使用他们的先前域名知识,以改善他们找到相关信息的过程。在本文中,我们通过在增强的信息检索系统中使用种子用户模型来探讨用户的现有域知识对信息寻求任务的有效性的影响。在我们的方法中,创建用户模型以在寻求任务中捕获用户的意图。然后,捕获的用户意图与描述决策理论框架中的信息检索系统的属性集成。我们的测试床由来自信息检索社区的两个基准集合组成:Medline和Cacm。我们将每个查询从集合中划分为两个子集:培训集和测试集。我们使用三种不同的方法来选择培训集的查询:(1)生成大域知识的查询,(2)与许多其他查询相关的查询,(3)(3)(3)的混合,(1)和(2)。每个种子用户模型都是通过通过这种训练集运行增强的信息检索系统来创建的。我们评估具有更多领域知识或更多相关域知识的影响,或者在寻求任务中的用户的有效性上的混合。

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