兴趣子集发现及其在服务进程中的应用

M. Natu, Girish Keshav Palshikar
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引用次数: 8

摘要

各种现实生活中的数据集可以被视为一组记录,由解释记录的属性和评估记录的一组度量组成。在本文中,我们解决了从这样的数据集中自动发现感兴趣的子集的问题,使得发现的感兴趣的子集与数据集的其余部分具有显着不同的性能特征。我们提出了一种算法来发现这些有趣的子集。该算法使用了一个通用的与领域无关的兴趣度定义,并使用各种启发式算法来智能地修剪搜索空间,以构建一个可扩展到大型数据集的解决方案。本文介绍了有趣子集发现算法在四个实际案例研究中的应用,并展示了有趣子集发现算法在提取见解方面的有效性,以便识别问题领域并为各种系统提供改进建议。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Interesting Subset Discovery and Its Application on Service Processes
Various real-life datasets can be viewed as a set of records consisting of attributes explaining the records and set of measures evaluating the records. In this paper, we address the problem of automatically discovering interesting subsets from such a dataset, such that the discovered interesting subsets have significantly different characteristics of performance than the rest of the dataset. We present an algorithm to discover such interesting subsets. The proposed algorithm uses a generic domain-independent definition of interestingness and uses various heuristics to intelligently prune the search space in order to build a solution scalable to large size datasets. This paper presents application of the interesting subset discovery algorithm on four real-world case-studies and demonstrates the effectiveness of the interesting subset discovery algorithm in extracting insights in order to identify problem areas and provide improvement recommendations to wide variety of systems.
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