Probability and algorithms enjoy an almost boisterous interaction that has led to an active, extensive literature that touches fields as diverse as number theory and the design of computer hardware. This article offer...
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Probability and algorithms enjoy an almost boisterous interaction that has led to an active, extensive literature that touches fields as diverse as number theory and the design of computer hardware. This article offers a gentle introduction to the simplest, most basic ideas that underlie this development.
Much of the research in Information Retrieval (IR) is devoted to studying the improvement of personalized results for specific users in a static environment. Nevertheless, few approaches take advantage of collective p...
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ISBN:
(纸本)9781450371797
Much of the research in Information Retrieval (IR) is devoted to studying the improvement of personalized results for specific users in a static environment. Nevertheless, few approaches take advantage of collective past searches in a dynamic context where the number of documents is increased according with the passage of time. In this paper, we present an on-line probabilistic algorithm, which uses the collective past searches in a dynamic context to answer static and dynamic queries. Several experiments were carried out with the aim of evaluating the effectiveness of our algorithm. The algorithm's results were compared with the cosine measure. Following the Cranfield paradigm, simulated datasets were used in the experiments. Final results show that it is possible to improve effectiveness in a dynamic context.
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