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Predicting DataSpace Retrieval Using Probabilistic Hidden Information

机译:使用概率隐藏信息预测DataSpace检索

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This paper discusses the issues involved in the design of a complete information retrieval system for DataSpace based on user relevance probabilistic schemes. First, Information Hidden Model (IHM) is constructed taking into account the users' perception of similarity between documents. The system accumulates feedback from the users and employs it to construct user oriented clusters. IHM allows integrating uncertainty over multiple, interdependent classifications and collectively determines the most likely global assignment. Second, Three different learning strategies are proposed, namely query-related UHH, UHB and UHS (User Hidden Habit, User Hidden Background, and User Hidden keyword Semantics) to closely represent the user mind. Finally, the probability ranking principle shows that optimum retrieval quality can be achieved under certain assumptions. An optimization algorithm to improve the effectiveness of the probabilistic process is developed. We first predict the data sources where the query results could be found. Therefor, compared with existing approaches, our precision of retrieval is better and do not depend on the size and the DataSpace heterogeneity.
机译:本文讨论了基于用户相关概率方案的DataSpace完整信息检索系统设计中涉及的问题。首先,考虑到用户对文档之间相似性的感知,构建信息隐藏模型(IHM)。该系统积累了来自用户的反馈,并将其用于构建面向用户的集群。 IHM允许在多个相互依赖的分类中整合不确定性,并共同确定最可能的全局分配。其次,提出了三种不同的学习策略,即与查询相关的UHH,UHB和UHS(用户隐藏的习惯,用户隐藏的背景和用户隐藏的关键字语义),以紧密地表示用户的思想。最后,概率排序原理表明在某些假设下可以实现最佳检索质量。开发了一种提高概率过程有效性的优化算法。我们首先预测可以在其中找到查​​询结果的数据源。因此,与现有方法相比,我们的检索精度更好,并且不依赖于大小和DataSpace异构性。

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