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Synthesizing Global Association Rules from Different Data Sources Based on Desired Interestingness Metrics

机译:基于所需兴趣度指标从不同数据源合成全局关联规则

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摘要

Since business houses are generally global, the required data for their corporate decisions are spread over multiple branches at different regions. In such circumstances, local pattern analysis based global pattern discovery has become an efficient strategy for mining their multiple data sources. The traditional support-confidence framework alone is not enough for assessing the interestingness of synthesized global association rules. In this context, numerous interestingness measures have been developed in the past to meet various situations. Depending on the requirement, local branches and the central head may choose desired interestingness metric for evaluating local frequent-itemsets and global association rules, respectively. In this paper, we present a generalized synthesis procedure for synthesizing global association rules, based on any interestingness metric, from the mined local patterns forwarded by multiple data sources. We have also shown that the synthesized metric values are quite close to the targeted mono-mining results. Examples and experimental studies establish the validity of our proposal.
机译:由于公司通常是全球性的,因此其公司决策所需的数据分布在不同地区的多个分支机构中。在这种情况下,基于局部模式分析的全局模式发现已成为挖掘其多个数据源的有效策略。仅仅传统的支持信心框架不足以评估综合全球关联规则的趣味性。在这种情况下,过去已经开发了许多有趣的措施来满足各种情况。根据要求,本地分支机构和中央负责人可以分别选择所需的兴趣度度量,以评估本地频繁项集和全局关联规则。在本文中,我们提出了一种通用的综合程序,用于基于任何兴趣度指标,从多个数据源转发的挖掘局部模式中,合成全局关联规则。我们还显示,合成的度量值非常接近目标单采矿结果。实例和实验研究证明了我们建议的有效性。

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