This article introduces a highly efficient pattern mining technique called Clustering-based Pattern Mining (CBPM). This technique discovers relevant patterns by studying the correlation between transactions in the transaction database based on clustering techniques. The set of transactions is first clustered, such that highly correlated transactions are grouped together. Next, we derive the relevant patterns by applying a pattern mining algorithm to each cluster. We present two different pattern mining algorithms, one applying an approximation-based strategy and another based on an exact strategy. The approximation-based strategy takes into account only the clusters, whereas the exact strategy takes into account both clusters and shared ite...
Clustering is an activity of finding abstractions from data [1]. These abstractions are mainly used ...
Frequent itemset mining was initially proposed and has been studied extensively in the context of as...
Within data mining, the efficient discovery of frequent patterns—sets of items that occur together ...
This article introduces a highly efficient pattern mining technique called Clustering-based Pattern ...
This paper introduces a highly efficient pattern mining technique called Clustering-Based Pattern Mi...
Sequential pattern mining is an important and useful tool with broad applications, such as analyzing...
Data mining refers to extracting or "mining" knowledge from large amounts of data. It is a...
Efficient mining of frequent patterns from large databases has been an active area of research since...
[[abstract]]Existing parallel algorithms for association rule mining have a large inter-site communi...
We present an overview of data mining techniques for extracting knowledge from large databases with ...
Finding Common Patterns in Transactional Databases MLP algorithms are considered one of the most imp...
Pattern mining has been a hot issue since it was first proposed for market basket analysis. Even tho...
Abstract — Association rule mining is a way to find interesting associations among different large s...
Data mining uses algorithms to extract knowledge from a large and complex data set. Due to the large...
[[abstract]]Most of the association rule mining algorithms suffer from the time-consuming elaboratio...
Clustering is an activity of finding abstractions from data [1]. These abstractions are mainly used ...
Frequent itemset mining was initially proposed and has been studied extensively in the context of as...
Within data mining, the efficient discovery of frequent patterns—sets of items that occur together ...
This article introduces a highly efficient pattern mining technique called Clustering-based Pattern ...
This paper introduces a highly efficient pattern mining technique called Clustering-Based Pattern Mi...
Sequential pattern mining is an important and useful tool with broad applications, such as analyzing...
Data mining refers to extracting or "mining" knowledge from large amounts of data. It is a...
Efficient mining of frequent patterns from large databases has been an active area of research since...
[[abstract]]Existing parallel algorithms for association rule mining have a large inter-site communi...
We present an overview of data mining techniques for extracting knowledge from large databases with ...
Finding Common Patterns in Transactional Databases MLP algorithms are considered one of the most imp...
Pattern mining has been a hot issue since it was first proposed for market basket analysis. Even tho...
Abstract — Association rule mining is a way to find interesting associations among different large s...
Data mining uses algorithms to extract knowledge from a large and complex data set. Due to the large...
[[abstract]]Most of the association rule mining algorithms suffer from the time-consuming elaboratio...
Clustering is an activity of finding abstractions from data [1]. These abstractions are mainly used ...
Frequent itemset mining was initially proposed and has been studied extensively in the context of as...
Within data mining, the efficient discovery of frequent patterns—sets of items that occur together ...