In recent years, due to the wide applications of uncertain data, mining frequent itemsets over uncertain databases has attracted much attention. In uncertain databases, the support of an itemset is a random variable instead of a fixed occurrence counting of this itemset. Thus, unlike the corresponding problem in deterministic databases where the frequent itemset has a unique definition, the frequent itemset under uncertain environments has two different definitions so far. The first definition, referred as the expected support-based frequent itemset, employs the expectation of the support of an itemset to measure whether this itemset is frequent. The second definition, referred as the probabilistic frequent itemset, uses the probability of ...
The data handled in emerging applications like location-based services, sensor monitoring systems, a...
Mining frequent itemsets is one of the popular task in data mining. There are many applications like...
Uncertainty in various domains implies the necessity for various data mining techniques and algorith...
In recent years, due to the wide applications of uncertain da-ta, mining frequent itemsets over unce...
In recent years, mining frequent itemsets over uncertain data has attracted much attention in the da...
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...
We study the problem of mining frequent itemsets from uncertain data under a probabilistic framework...
Data uncertainty is inherent in emerging applications such as location-based services, sensor monito...
Researchers have recently defined and presented the theoretical con-cepts and an algorithm necessary...
Computing statistical information on probabilistic data has attracted a lot of attention recently, a...
We assume a dataset of transactions generated by a set of users over structured items where each ite...
Association rules mining is a common data mining problem that explores the relationships among items...
Mining frequent itemsets from transactional datasets is a well known problem with good algorithmic s...
Data uncertainty is inherent in emerging applications such as location-based services, sensor monito...
The data handled in emerging applications like location-based services, sensor monitoring systems, a...
Mining frequent itemsets is one of the popular task in data mining. There are many applications like...
Uncertainty in various domains implies the necessity for various data mining techniques and algorith...
In recent years, due to the wide applications of uncertain da-ta, mining frequent itemsets over unce...
In recent years, mining frequent itemsets over uncertain data has attracted much attention in the da...
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...
We study the problem of mining frequent itemsets from uncertain data under a probabilistic framework...
Data uncertainty is inherent in emerging applications such as location-based services, sensor monito...
Researchers have recently defined and presented the theoretical con-cepts and an algorithm necessary...
Computing statistical information on probabilistic data has attracted a lot of attention recently, a...
We assume a dataset of transactions generated by a set of users over structured items where each ite...
Association rules mining is a common data mining problem that explores the relationships among items...
Mining frequent itemsets from transactional datasets is a well known problem with good algorithmic s...
Data uncertainty is inherent in emerging applications such as location-based services, sensor monito...
The data handled in emerging applications like location-based services, sensor monitoring systems, a...
Mining frequent itemsets is one of the popular task in data mining. There are many applications like...
Uncertainty in various domains implies the necessity for various data mining techniques and algorith...