Data uncertainty is inherent in emerging applications such as location-based services, sensor monitoring systems, and data integration. To handle a large amount of imprecise information, uncertain databases have been recently developed. In this paper, we study how to efficiently discover frequent itemsets from large uncertain databases, interpreted under the Possible World Semantics. This is technically challenging, since an uncertain database induces an exponential number of possible worlds. To tackle this problem, we propose a novel methods to capture the itemset mining process as a probability distribution function taking two models into account: the Poisson distribution and the normal distribution. These model-based approaches extract f...
In recent years, many new applications, such as sensor network monitoring and moving object search, ...
Data uncertainty is inherent in many real-world applications such as environmental surveillance and ...
Copyright © SIAM. Probabilistic frequent pattern mining over uncertain data has received a great dea...
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...
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...
Computing statistical information on probabilistic data has attracted a lot of attention recently, a...
Data uncertainty is inherent in applications such as sen-sor monitoring systems, location-based serv...
Mining frequent itemsets from transactional datasets is a well known problem with good algorithmic s...
Mining frequent itemsets from transactional datasets is a well known problem with good algorithmic s...
We study the problem of mining frequent itemsets from uncertain data under a probabilistic framework...
Currently in real world scenario data uncertainty is the most major issue in the real time applicati...
Researchers have recently defined and presented the theoretical con-cepts and an algorithm necessary...
In recent years, many new applications, such as sensor network monitoring and moving object search, ...
Data uncertainty is inherent in many real-world applications such as environmental surveillance and ...
Copyright © SIAM. Probabilistic frequent pattern mining over uncertain data has received a great dea...
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...
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...
Computing statistical information on probabilistic data has attracted a lot of attention recently, a...
Data uncertainty is inherent in applications such as sen-sor monitoring systems, location-based serv...
Mining frequent itemsets from transactional datasets is a well known problem with good algorithmic s...
Mining frequent itemsets from transactional datasets is a well known problem with good algorithmic s...
We study the problem of mining frequent itemsets from uncertain data under a probabilistic framework...
Currently in real world scenario data uncertainty is the most major issue in the real time applicati...
Researchers have recently defined and presented the theoretical con-cepts and an algorithm necessary...
In recent years, many new applications, such as sensor network monitoring and moving object search, ...
Data uncertainty is inherent in many real-world applications such as environmental surveillance and ...
Copyright © SIAM. Probabilistic frequent pattern mining over uncertain data has received a great dea...