Local and global symmetry breaking in itemset mining
The concept of symmetry has been extensively studied in the field of constraint programming and in the propositional satisfiability. Several methods for detection and removal of these symmetries have been developed, and their use in known solvers of these domains improved dramatically their effectiv...
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Veröffentlicht in: | Annals of mathematics and artificial intelligence 2017-05, Vol.80 (1), p.91-112 |
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Format: | Artikel |
Sprache: | eng |
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Zusammenfassung: | The concept of symmetry has been extensively studied in the field of constraint programming and in the propositional satisfiability. Several methods for detection and removal of these symmetries have been developed, and their use in known solvers of these domains improved dramatically their effectiveness on a big variety of problems considered difficult to solve. The concept of symmetry may be exported to other areas where some structures can be exploited effectively. Particularly, in the area of data mining where some tasks can be expressed as constraints or logical formulas. We are interested here, by the detection and elimination of
local
and
global
symmetries in the item-set mining problem. Recent works have provided effective encodings as Boolean constraints for these data mining tasks and some idea on symmetry elimination in this area begin to appear, but still few and the techniques presented are often on
global symmetry
that is detected and eliminated statically in a preprocessing phase. In this work we study the notion of
local symmetry
and compare it to
global symmetry
for the itemset mining problem. We show how local symmetries of the boolean encoding can be detected dynamically and give some properties that allow to eliminate theses symmetries in SAT-based itemset mining solvers in order to enhance their efficiency. |
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ISSN: | 1012-2443 1573-7470 |
DOI: | 10.1007/s10472-016-9528-4 |