局部模式分析的概率模型

IF 0.8 Q4 COMPUTER SCIENCE, INFORMATION SYSTEMS Journal of Information Processing Systems Pub Date : 2014-03-31 DOI:10.3745/JIPS.2014.10.1.145
K. Salim, B. Hafida, Rahal Sid Ahmed
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引用次数: 6

摘要

最近,许多大型组织都有多个数据源(MDS),分布在跨州公司的不同分支机构上。局部模式分析已成为国内外组织进行MDS挖掘的有效策略。它包括挖掘不同的数据集,以获得频繁的模式,这些模式被转发到一个集中的地方进行全局模式分析。提出了多种综合模型(2、3、4、5、6、7、8、26),从转发的模式中构建全局模式。需要的是,来自这种转发模式的合成规则必须与单挖掘结果(即,如果将所有数据库放在一起并完成挖掘将获得的结果)紧密匹配。当图案在现场存在,但不能满足最小支持阈值时,不允许参加图案合成过程。因此,这个过程可能会失去一些有趣的模式,这些模式可以帮助决策者做出正确的决定。在这种情况下,我们建议在综合过程中应用概率模型。对概率模型的适当选择可以提高已发现模式的质量。在本文中,我们对综合过程中可以应用的各种概率模型进行了全面的研究,并选择和改进了其中一种可以改善综合结果的概率模型。最后,在公共数据库中进行了一些实验,以提高我们所提出的合成方法的效率。
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Probabilistic Models for Local Patterns Analysis
Recently, many large organizations have multiple data sources (MDS') distributed over different branches of an interstate company. Local patterns analysis has become an effective strategy for MDS mining in national and international organizations. It consists of mining different datasets in order to obtain frequent patterns, which are forwarded to a centralized place for global pattern analysis. Various synthesizing models (2,3,4,5,6,7,8,26) have been proposed to build global patterns from the forwarded patterns. It is desired that the synthesized rules from such forwarded patterns must closely match with the mono-mining results (i.e., the results that would be obtained if all of the databases are put together and mining has been done). When the pattern is present in the site, but fails to satisfy the minimum support threshold value, it is not allowed to take part in the pattern synthesizing process. Therefore, this process can lose some interesting patterns, which can help the decider to make the right decision. In such situations we propose the application of a probabilistic model in the synthesizing process. An adequate choice for a probabilistic model can improve the quality of patterns that have been discovered. In this paper, we perform a comprehensive study on various probabilistic models that can be applied in the synthesizing process and we choose and improve one of them that works to ameliorate the synthesizing results. Finally, some experiments are presented in public database in order to improve the efficiency of our proposed synthesizing method.
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来源期刊
Journal of Information Processing Systems
Journal of Information Processing Systems COMPUTER SCIENCE, INFORMATION SYSTEMS-
CiteScore
3.00
自引率
6.20%
发文量
0
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