< Terug naar vorige pagina

Publicatie

Correlated itemset mining in ROC space

Boekbijdrage - Boekhoofdstuk Conferentiebijdrage

Ondertitel:A constraint programming approach

Correlated or discriminative pattern mining is concerned with finding the highest scoring patterns w.r.t. a correlation measure (such as information gain). By reinterpreting correlation measures in ROC space and formulating correlated itemset mining as a constraint programming problem, we obtain new theoretical insights with practical benefits. More specifically, we contribute 1) an improved bound for correlated itemset miners, 2) a novel iterative pruning algorithm to exploit the bound, and 3) an adaptation of this algorithm to mine all itemsets on the convex hull in ROC space. The algorithm does not depend on a minimal frequency threshold and is shown to outperform several alternative approaches by orders of magnitude, both in runtime and in memory requirements.

Boek: KDD '09
Pagina's: 647-655
Aantal pagina's: 9
ISBN:9781605584959
Jaar van publicatie:2009
Trefwoorden:Constraint programming, Itemset mining, ROC Analysis