Exploring Decomposition for Solving Pattern Mining Problems

Author:

Djenouri Youcef1,Lin Jerry Chun-Wei2ORCID,Nørvåg Kjetil3,Ramampiaro Heri3,Yu Philip S.4

Affiliation:

1. Dept. of Mathematics and Cybernetics, SINTEF Digital, Oslo, Norway

2. Dept. of Computing, Mathematics, and Physics, HVL, Bergen, Norway

3. Dept. of Computer Science, NTNU, Trondheim, Norway

4. Dept. of Computer Science, University of Illinois, Chicago, IL, United States

Abstract

This article introduces a highly efficient pattern mining technique called Clustering-based Pattern Mining (CBPM). This technique discovers relevant patterns by studying the correlation between transactions in the transaction database based on clustering techniques. The set of transactions is first clustered, such that highly correlated transactions are grouped together. Next, we derive the relevant patterns by applying a pattern mining algorithm to each cluster. We present two different pattern mining algorithms, one applying an approximation-based strategy and another based on an exact strategy. The approximation-based strategy takes into account only the clusters, whereas the exact strategy takes into account both clusters and shared items between clusters. To boost the performance of the CBPM, a GPU-based implementation is investigated. To evaluate the CBPM framework, we perform extensive experiments on several pattern mining problems. The results from the experimental evaluation show that the CBPM provides a reduction in both the runtime and memory usage. Also, CBPM based on the approximate strategy provides good accuracy, demonstrating its effectiveness and feasibility. Our GPU implementation achieves significant speedup of up to 552× on a single GPU using big transaction databases.

Funder

NSF

Publisher

Association for Computing Machinery (ACM)

Subject

General Computer Science,Management Information Systems

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