TY - JOUR
T1 - A statistical theory for quantitative association rules
AU - Aumann, Yonatan
AU - Lindell, Yehuda
PY - 2003/5
Y1 - 2003/5
N2 - Association rules are a key data-mining tool and as such have been well researched. So far. this research has focused predominantly on databases containing categorical data only. However, many real-world databases contain quantitative attributes and current solutions for this case are so far inadequate. In this paper we introduce a new definition of quantitative association rules based on statistical inference theory. Our definition reflects the intuition that the goal of association rules is to find extraordinary and therefore interesting phenomena in databases. We also introduce the concept of sub-rules which can be applied to any type of association rule. Rigorous experimental evaluation on real-world datasets is presented, demonstrating the usefulness and characteristics of rules mined according to our definition.
AB - Association rules are a key data-mining tool and as such have been well researched. So far. this research has focused predominantly on databases containing categorical data only. However, many real-world databases contain quantitative attributes and current solutions for this case are so far inadequate. In this paper we introduce a new definition of quantitative association rules based on statistical inference theory. Our definition reflects the intuition that the goal of association rules is to find extraordinary and therefore interesting phenomena in databases. We also introduce the concept of sub-rules which can be applied to any type of association rule. Rigorous experimental evaluation on real-world datasets is presented, demonstrating the usefulness and characteristics of rules mined according to our definition.
KW - Data mining
KW - Knowledge discovery in data bases
KW - Quantitative association rules
KW - Statistical inference theory
UR - http://www.scopus.com/inward/record.url?scp=0038005421&partnerID=8YFLogxK
U2 - 10.1023/a:1022812808206
DO - 10.1023/a:1022812808206
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AN - SCOPUS:0038005421
SN - 0925-9902
VL - 20
SP - 255
EP - 283
JO - Journal of Intelligent Information Systems
JF - Journal of Intelligent Information Systems
IS - 3
ER -