Vertical mining methods are very effective for mining frequent patterns and usually outperform horizontal mining methods. However, the vertical methods become ineffective since the intersection time starts to be costly when the cardinality of tidset (tid-list or diffset) is very large or there are a very large number of transactions. In this paper, we propose a novel vertical algorithm called PPV for fast frequent pattern discovery. PPV works based on a data structure called Node-lists, which is obtained from a coding prefix-tree called PPC-tree. The efficiency of PPV is achieved with three techniques. First, the Node-list is much more compact compared with previous proposed vertical structure (such as tid-lists or diffsets) since transacti...
Frequent pattern mining usually requires much run time and memory usage. In some applications, only ...
Mining frequent patterns from large databases play an essential role in many data mining tasks and h...
Mining frequent patterns in database has emerged as an important task in knowledge discovery and dat...
Vertical mining methods are very effective for mining frequent patterns and usually outperform horiz...
Mining frequent itemsets has emerged as a fundamental problem in data mining and plays an essential ...
Mining Top-Rank-K frequent patterns is a new topic in frequent pattern mining. In this paper, we pro...
Mining Top-Rank-k frequent patterns is an emerging topic in frequent pattern mining in recent years....
Mining frequent patterns, including mining frequent closed patterns or maximal patterns, is a fundam...
There have been many studies on efficient discovery of frequent itemsets in large databases. However...
Abstract. Sequential pattern mining algorithms using a vertical repre-sentation are the most efficie...
Abstract. Mining frequent patterns in transaction databases, time-series databases, and many other k...
Abstract-Apriori is a classical algorithm for association rules. In order to get the support degree ...
Node-list and N-list, two novel data structure proposed in recent years, have been proven to be very...
Frequent sequential pattern mining has become one of the most important tasks in data mining. It has...
There are lots of data mining tasks such as association rule, clustering, classification, regression...
Frequent pattern mining usually requires much run time and memory usage. In some applications, only ...
Mining frequent patterns from large databases play an essential role in many data mining tasks and h...
Mining frequent patterns in database has emerged as an important task in knowledge discovery and dat...
Vertical mining methods are very effective for mining frequent patterns and usually outperform horiz...
Mining frequent itemsets has emerged as a fundamental problem in data mining and plays an essential ...
Mining Top-Rank-K frequent patterns is a new topic in frequent pattern mining. In this paper, we pro...
Mining Top-Rank-k frequent patterns is an emerging topic in frequent pattern mining in recent years....
Mining frequent patterns, including mining frequent closed patterns or maximal patterns, is a fundam...
There have been many studies on efficient discovery of frequent itemsets in large databases. However...
Abstract. Sequential pattern mining algorithms using a vertical repre-sentation are the most efficie...
Abstract. Mining frequent patterns in transaction databases, time-series databases, and many other k...
Abstract-Apriori is a classical algorithm for association rules. In order to get the support degree ...
Node-list and N-list, two novel data structure proposed in recent years, have been proven to be very...
Frequent sequential pattern mining has become one of the most important tasks in data mining. It has...
There are lots of data mining tasks such as association rule, clustering, classification, regression...
Frequent pattern mining usually requires much run time and memory usage. In some applications, only ...
Mining frequent patterns from large databases play an essential role in many data mining tasks and h...
Mining frequent patterns in database has emerged as an important task in knowledge discovery and dat...