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CIKM
2009
Springer

Agglomerating local patterns hierarchically with ALPHA

13 years 11 months ago
Agglomerating local patterns hierarchically with ALPHA
To increase the relevancy of local patterns discovered from noisy relations, it makes sense to formalize error-tolerance. Our starting point is to address the limitations of state-ofthe-art methods for this purpose. Some extractors perform an exhaustive search w.r.t. a declarative specification of error-tolerance. Nevertheless, their computational complexity prevents the discovery of large relevant patterns. Alpha is a 3-step method that (1) computes complete collections of closed patterns, possibly error-tolerant ones, from arbitrary n-ary relations, (2) enlarges them by hierarchical agglomeration, and (3) selects the relevant agglomerated patterns. Categories and Subject Descriptors: H.2.8 [Database Management]: Database Applications—Data mining General Terms: Algorithms
Loïc Cerf, Pierre-Nicolas Mougel, Jean-Fran&c
Added 26 May 2010
Updated 26 May 2010
Type Conference
Year 2009
Where CIKM
Authors Loïc Cerf, Pierre-Nicolas Mougel, Jean-François Boulicaut
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