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Frequent pattern mining algorithms: A survey
This chapter will provide a detailed survey of frequent pattern mining algorithms. A wide
variety of algorithms will be covered starting from Apriori. Many algorithms such as Eclat …
variety of algorithms will be covered starting from Apriori. Many algorithms such as Eclat …
Mining non-redundant association rules
MJ Zaki - Data mining and knowledge discovery, 2004 - Springer
The traditional association rule mining framework produces many redundant rules. The
extent of redundancy is a lot larger than previously suspected. We present a new framework …
extent of redundancy is a lot larger than previously suspected. We present a new framework …
Mining frequent patterns with counting inference
Mining Frequent Patterns with Counting Inference Page 1 Mining Frequent Patterns with
Counting Inference Yves Bastide* Rafik Taouil t Nicolas Pasquier :1: Gerd Stumme § …
Counting Inference Yves Bastide* Rafik Taouil t Nicolas Pasquier :1: Gerd Stumme § …
Generating a condensed representation for association rules
Association rule extraction from operational datasets often produces several tens of
thousands, and even millions, of association rules. Moreover, many of these rules are …
thousands, and even millions, of association rules. Moreover, many of these rules are …
Constraining and summarizing association rules in medical data
C Ordonez, N Ezquerra, CA Santana - Knowledge and information …, 2006 - Springer
Association rules are a data mining technique used to discover frequent patterns in a data
set. In this work, association rules are used in the medical domain, where data sets are …
set. In this work, association rules are used in the medical domain, where data sets are …
Comparing association rules and decision trees for disease prediction
C Ordonez - Proceedings of the international workshop on …, 2006 - dl.acm.org
Association rules represent a promising technique to find hidden patterns in a medical data
set. The main issue about mining association rules in a medical data set is the large number …
set. The main issue about mining association rules in a medical data set is the large number …
Efficient data mining based on formal concept analysis
G Stumme - International conference on database and expert …, 2002 - Springer
Abstract Formal Concept Analysis is an unsupervised learning technique for conceptual
clustering. We introduce the notion of iceberg concept lattices and show their use in …
clustering. We introduce the notion of iceberg concept lattices and show their use in …
[PDF][PDF] Closed sets for labeled data.
Closed sets have been proven successful in the context of compacted data representation
for association rule learning. However, their use is mainly descriptive, dealing only with …
for association rule learning. However, their use is mainly descriptive, dealing only with …
The chosen few: On identifying valuable patterns
B Bringmann, A Zimmermann - Seventh IEEE International …, 2007 - ieeexplore.ieee.org
Constrained pattern mining extracts patterns based on their individual merit. Usually this
results in far more patterns than a human expert or a machine learning technique could …
results in far more patterns than a human expert or a machine learning technique could …
Generating frequent itemsets incrementally: two novel approaches based on Galois lattice theory
Galois (concept) lattice theory has been successfully applied in data mining for the
resolution of the association rule problem. In particular, structural results about lattices have …
resolution of the association rule problem. In particular, structural results about lattices have …