In this paper we develop an alternative to minimum support which utilizes knowledge of the process which generates transaction data and allows for highly skewed frequency distributions. We apply a simple stochastic model (the NB model), which is known for its usefulness to describe item occurrences in transaction data, to develop a frequency constraint. This model-based frequency constraint is used together with a precision threshold to find individual support thresholds for groups of associations. We develop the notion of NB-frequent itemsets and present two mining algorithms which find all NB-frequent itemsets in a database. In experiments with publicly available transaction databases we show that the new constraint can provide significan...
Mining frequent itemsets and association rules is a popular and well researched approach for discov...
This paper presents a study of the characteristics of transactional databases used in frequent items...
AbstractApriori algorithm is a classical algorithm of association rule mining and widely used for ge...
Within data mining, the efficient discovery of frequent patterns—sets of items that occur together ...
AbstractAssociation rule mining among frequent items has been extensively studied in data mining res...
Mining frequent patterns in large transactional databases is a highly researched area in the field o...
ISBN: 1-59140-557-2In the domain of knowledge discovery in databases and its computational part call...
Mining association rules is an important technique for discovering meaningful patterns in transactio...
Discovering frequent patterns plays an essential role in many data mining applications. The aim of f...
In this paper we suggest a new method for frequent itemsets mining, which is more efficient than wel...
AbstractPattern recognition is seen as a major challenge within the field of data mining and knowled...
Data mining is process of extracting useful information from different perspectives. Frequent Item s...
Most of the complexity of common data mining tasks is due to the unknown amount of information conta...
Mining frequent itemsets and association rules is a popular and well researched approach for discove...
ABSTRACT: Association Rule Mining (AM) is one of the most popular data mining techniques. Associatio...
Mining frequent itemsets and association rules is a popular and well researched approach for discov...
This paper presents a study of the characteristics of transactional databases used in frequent items...
AbstractApriori algorithm is a classical algorithm of association rule mining and widely used for ge...
Within data mining, the efficient discovery of frequent patterns—sets of items that occur together ...
AbstractAssociation rule mining among frequent items has been extensively studied in data mining res...
Mining frequent patterns in large transactional databases is a highly researched area in the field o...
ISBN: 1-59140-557-2In the domain of knowledge discovery in databases and its computational part call...
Mining association rules is an important technique for discovering meaningful patterns in transactio...
Discovering frequent patterns plays an essential role in many data mining applications. The aim of f...
In this paper we suggest a new method for frequent itemsets mining, which is more efficient than wel...
AbstractPattern recognition is seen as a major challenge within the field of data mining and knowled...
Data mining is process of extracting useful information from different perspectives. Frequent Item s...
Most of the complexity of common data mining tasks is due to the unknown amount of information conta...
Mining frequent itemsets and association rules is a popular and well researched approach for discove...
ABSTRACT: Association Rule Mining (AM) is one of the most popular data mining techniques. Associatio...
Mining frequent itemsets and association rules is a popular and well researched approach for discov...
This paper presents a study of the characteristics of transactional databases used in frequent items...
AbstractApriori algorithm is a classical algorithm of association rule mining and widely used for ge...