We study the problem of mining frequent itemsets from uncertain data under a probabilistic framework. We consider transactions whose items are associated with existential probabilities and give a formal definition of frequent patterns under such an uncertain data model. We show that traditional algorithms for mining frequent itemsets are either inapplicable or computationally inefficient under such a model. A data trimming framework is proposed to improve mining efficiency. Through extensive experiments, we show that the data trimming technique can achieve significant savings in both CPU cost and I/O cost. © Springer-Verlag Berlin Heidelberg 2007.link_to_subscribed_fulltex
Nowadays, high volumes of massive data can be generated from various sources (e.g., sensor data from...
AbstractDue to advances in technology, high volumes of valuable data can be collected and transmitte...
The Frequent Itemset Mining (FIM) is well-known problem in data mining. The FIM is very useful for b...
We study the problem of mining frequent itemsets from uncertain data under a probabilistic model. We...
Mining frequent itemsets from transactional datasets is a well known problem with good algorithmic s...
Abstract. Frequent itemset mining in uncertain transaction databases semantically and computationall...
In recent years, due to the wide applications of uncertain data, mining frequent itemsets over uncer...
Association rules mining is a common data mining problem that explores the relationships among items...
Data uncertainty is inherent in emerging applications such as location-based services, sensor monito...
Mining frequent itemsets from transactional datasets is a well known problem with good algorithmic s...
Abstract: Over the past decade, there have been many studies on mining frequent item sets from preci...
Researchers have recently defined and presented the theoretical con-cepts and an algorithm necessary...
In recent years, mining frequent itemsets over uncertain data has attracted much attention in the da...
We assume a dataset of transactions generated by a set of users over structured items where each ite...
Abstract—In this paper, we study the problem of finding frequent itemsets from uncertain data stream...
Nowadays, high volumes of massive data can be generated from various sources (e.g., sensor data from...
AbstractDue to advances in technology, high volumes of valuable data can be collected and transmitte...
The Frequent Itemset Mining (FIM) is well-known problem in data mining. The FIM is very useful for b...
We study the problem of mining frequent itemsets from uncertain data under a probabilistic model. We...
Mining frequent itemsets from transactional datasets is a well known problem with good algorithmic s...
Abstract. Frequent itemset mining in uncertain transaction databases semantically and computationall...
In recent years, due to the wide applications of uncertain data, mining frequent itemsets over uncer...
Association rules mining is a common data mining problem that explores the relationships among items...
Data uncertainty is inherent in emerging applications such as location-based services, sensor monito...
Mining frequent itemsets from transactional datasets is a well known problem with good algorithmic s...
Abstract: Over the past decade, there have been many studies on mining frequent item sets from preci...
Researchers have recently defined and presented the theoretical con-cepts and an algorithm necessary...
In recent years, mining frequent itemsets over uncertain data has attracted much attention in the da...
We assume a dataset of transactions generated by a set of users over structured items where each ite...
Abstract—In this paper, we study the problem of finding frequent itemsets from uncertain data stream...
Nowadays, high volumes of massive data can be generated from various sources (e.g., sensor data from...
AbstractDue to advances in technology, high volumes of valuable data can be collected and transmitte...
The Frequent Itemset Mining (FIM) is well-known problem in data mining. The FIM is very useful for b...