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Characterizing Discriminative Patterns

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Academic paper
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Academic Paper attributes

arXiv ID
1102.41040
arXiv Classification
Computer science
Computer science
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Publication URL
arxiv.org/pdf/1102.4...04.pdf0
Publisher
ArXiv
ArXiv
0
DOI
doi.org/10.48550/ar...02.41040
Paid/Free
Free0
Academic Discipline
Database
Database
0
Information theory
Information theory
0
Computer science
Computer science
0
Genomics
Genomics
0
‌
Quantitative biology
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Submission Date
February 20, 2011
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Author Names
Gang Fang0
Wen Wang0
Vipin Kumar0
Brian Van Ness0
Michael Steinbach0
Benjamin Oatley0
Paper abstract

Discriminative patterns are association patterns that occur with disproportionate frequency in some classes versus others, and have been studied under names such as emerging patterns and contrast sets. Such patterns have demonstrated considerable value for classification and subgroup discovery, but a detailed understanding of the types of interactions among items in a discriminative pattern is lacking. To address this issue, we propose to categorize discriminative patterns according to four types of item interaction: (i) driver-passenger, (ii) coherent, (iii) independent additive and (iv) synergistic beyond independent additive. Either of the last three is of practical importance, with the latter two representing a gain in the discriminative power of a pattern over its subsets. Synergistic patterns are most restrictive, but perhaps the most interesting since they capture a cooperative effect. For domains such as genetic research, differentiating among these types of patterns is critical since each yields very different biological interpretations. For general domains, the characterization provides a novel view of the nature of the discriminative patterns in a dataset, which yields insights beyond those provided by current approaches that focus mostly on pattern-based classification and subgroup discovery. This paper presents a comprehensive discussion that defines these four pattern types and investigates their properties and their relationship to one another. In addition, these ideas are explored for a variety of datasets (ten UCI datasets, one gene expression dataset and two genetic-variation datasets). The results demonstrate the existence, characteristics and statistical significance of the different types of patterns. They also illustrate how pattern characterization can provide novel insights into discriminative pattern mining and the discriminative structure of different datasets.

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