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FIMI
2004

A Space Optimization for FP-Growth

14 years 28 days ago
A Space Optimization for FP-Growth
Frequency mining problem comprises the core of several data mining algorithms. Among frequent pattern discovery algorithms, FP-GROWTH employs a unique search strategy using compact structures resulting in a high performance algorithm that requires only two database passes. We introduce an enhanced version of this algorithm called FP-GROWTH-TINY which can mine larger databases due to a space optimization eliminating the need for intermediate conditional pattern bases. We present the algorithms required for directly constructing a conditional FP-Tree in detail. The experiments demonstrate that our implementation has a running time performance comparable to the original algorithm while reducing memory use up to twofold.
Eray Özkural, Cevdet Aykanat
Added 30 Oct 2010
Updated 30 Oct 2010
Type Conference
Year 2004
Where FIMI
Authors Eray Özkural, Cevdet Aykanat
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