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Mining disjunctive minimal generators with TitanicOR

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posted on 2025-05-08, 13:38 authored by Renato Vimieiro, Pablo MoscatoPablo Moscato
Disjunctive minimal generators were proposed by Zhao et al. They defined disjunctive closed itemsets and disjunctive minimal generators through the disjunctive support function. We prove that the disjunctive support function is compatible with the closure operator presented by Zhao et al. Such compatibility allows us to adapt the original version of the Titanic algorithm, proposed by Stumme et al. to mine iceberg concept lattices and closed itemsets, to mine disjunctive minimal generators. We present TitanicOR, a new breadth-first algorithm for mining disjunctive minimal generators. We evaluate the performance of our method with both synthetic and real data sets and compare TitanicOR’s performance with the performance of BLOSOM, the state of the art method and sole algorithm available prior to TitanicOR for mining disjunctive minimal generators. We show that TitanicOR’s breadth-first approach is up to two orders of magnitude faster than BLOSOM’s depth-first approach.

History

Journal title

Expert Systems with Applications

Volume

39

Issue

9

Pagination

8228-8238

Publisher

Pergamon

Language

  • en, English

College/Research Centre

Faculty of Engineering and Built Environment

School

School of Electrical Engineering and Computer Science

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