2011
Conference article  Restricted

Direct local pattern sampling by efficient two-step random procedures

Boley M., Lucchese C., Paurat D., Gartner, T.

Pattern- based classification  Frequent sets  Sampling  Local pattern discovery 

We present several exact and highly scalable local pattern sampling algorithms. They can be used as an alternative to exhaustive local pattern discovery methods (e.g, frequent set mining or optimistic-estimator-based subgroup discovery) and can substantially improve efficiency as well as con- trollability of pattern discovery processes. While previous sampling approaches mainly rely on the Markov chain Monte Carlo method, our procedures are direct, i.e., non process- simulating, sampling algorithms. The advantages of these direct methods are an almost optimal time complexity per pattern as well as an exactly controlled distribution of the produced patterns. Namely, the proposed algorithms can sample (item-)sets according to frequency, area, squared fre- quency, and a class discriminativity measure. Experiments demonstrate that these procedures can improve the accuracy of pattern-based models similar to frequent sets and often also lead to substantial gains in terms of scalability.

Source: ACM SIGKDD Conference on Knowledge Discovery and Data Mining, KDD'11, pp. 582–590, San Diego, USA, 21-24 August 2011

Publisher: ACM Press, New York, USA


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BibTeX entry
@inproceedings{oai:it.cnr:prodotti:206289,
	title = {Direct local pattern sampling by efficient two-step random procedures},
	author = {Boley M. and Lucchese C. and Paurat D. and Gartner and T.},
	publisher = {ACM Press, New York, USA},
	doi = {10.1145/2020408.2020500},
	booktitle = {ACM SIGKDD Conference on Knowledge Discovery and Data Mining, KDD'11, pp. 582–590, San Diego, USA, 21-24 August 2011},
	year = {2011}
}

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