Mining for association rules and frequent patterns is a central activity in data mining. However, most existing algorithms are only moderately suitable for real-world scenarios. Most strategies use parameters like minimum support, for which it can be very difficult to define a suitable value for unknown datasets. Since most untrained users are unable or unwilling to set such technical parameters, we address the problem of replacing the minimum-support parameter with top-n strategies. In our paper, we start by extending a top-n implementation of the ECLAT algorithm to improve its performance by using heuristic search strategy optimizations. Also, real-world datasets are often distributed and modern database architectures are switching from e...
Mining frequent patterns from large databases play an essential role in many data mining tasks and h...
Mining Top-Rank-k frequent patterns is an emerging topic in frequent pattern mining in recent years....
Abstract. Mining frequent patterns in transaction databases, time-series databases, and many other k...
Mining for association rules and frequent patterns is a central activity in data mining. However, mo...
There have been many studies on efficient discovery of frequent patterns in large databases. The usu...
Association Rule Mining (ARM) is finding out the frequent itemsets or patterns among the existing it...
Nowadays, frequent pattern mining (FPM) on large graphs receives increasing attention, since it is c...
With the large amount of data collected in various applications, data mining has become an essential...
In this article, we present a new approach for frequent pattern mining (FPM) that runs fast for both...
Data mining is a set of methods used to mine hidden information from data. It mainly includes freque...
In recent years, knowledge discovery in databases provides a powerful capability to discover meaning...
Data mining defines hidden pattern in data sets and association between the patterns. In data mining...
In large organizations, it is often required to collect data from the different geographic branches ...
Efficient mining of frequent patterns from large databases has been an active area of research since...
International audienceFrequent-regular pattern mining has attracted recently many works. Most of the...
Mining frequent patterns from large databases play an essential role in many data mining tasks and h...
Mining Top-Rank-k frequent patterns is an emerging topic in frequent pattern mining in recent years....
Abstract. Mining frequent patterns in transaction databases, time-series databases, and many other k...
Mining for association rules and frequent patterns is a central activity in data mining. However, mo...
There have been many studies on efficient discovery of frequent patterns in large databases. The usu...
Association Rule Mining (ARM) is finding out the frequent itemsets or patterns among the existing it...
Nowadays, frequent pattern mining (FPM) on large graphs receives increasing attention, since it is c...
With the large amount of data collected in various applications, data mining has become an essential...
In this article, we present a new approach for frequent pattern mining (FPM) that runs fast for both...
Data mining is a set of methods used to mine hidden information from data. It mainly includes freque...
In recent years, knowledge discovery in databases provides a powerful capability to discover meaning...
Data mining defines hidden pattern in data sets and association between the patterns. In data mining...
In large organizations, it is often required to collect data from the different geographic branches ...
Efficient mining of frequent patterns from large databases has been an active area of research since...
International audienceFrequent-regular pattern mining has attracted recently many works. Most of the...
Mining frequent patterns from large databases play an essential role in many data mining tasks and h...
Mining Top-Rank-k frequent patterns is an emerging topic in frequent pattern mining in recent years....
Abstract. Mining frequent patterns in transaction databases, time-series databases, and many other k...