The development of novel platforms and techniques for emerging “Big Data” applications requires the availability of real-life datasets for data-driven experiments, which are however not accessible in most cases for various reasons, e.g., confidentiality, privacy or simply insufficient availability. An interesting solution to ensure high quality experimental findings is to synthesize datasets that reflect patterns of real ones using a two-step approach: first a real dataset X is analyzed to derive relevant patterns Z (latent variables) and, then, such patterns are used to reconstruct a new dataset X\u27 that is like X but not exactly the same. The approach can be implemented using inverse mining techniques such as inverse frequent itemset mi...
As advances in technology allow for the collection, storage, and analysis of vast amounts of data, t...
Recent studies on frequent itemset mining algorithms resulted in significant performance improvement...
Frequent pattern mining attracts extensive research interests over the past two decades: including m...
The development of novel platforms and techniques for emerging “Big Data” applications requires the ...
Inverse frequent itemset mining (IFM) consists of generating artificial transactional databases refl...
Frequent itemset mining is a common task in data mining from which association rules are derived. As...
Recently, the inverse frequent set mining problem has received more attention because of its importa...
Concise representations of frequent itemsets sacrifice readability and direct interpretability by a ...
Frequent episode mining has been proposed as a data mining task with the goal of recovering sequenti...
Frequent itemset mining (FIM) is a method for finding regularities in transaction databases. It has ...
We study the problem of mining frequent itemsets from uncertain data under a probabilistic framework...
The development of platforms and techniques for emerging Big Data and Machine Learning applications ...
Frequent itemset mining assists the data mining practitioner in searching for strongly associated it...
This thesis addresses the issue of enhancing the scalability of data mining techniques, with specifi...
Itemset mining approaches, while having been studied for more than 15 years, have been evaluated onl...
As advances in technology allow for the collection, storage, and analysis of vast amounts of data, t...
Recent studies on frequent itemset mining algorithms resulted in significant performance improvement...
Frequent pattern mining attracts extensive research interests over the past two decades: including m...
The development of novel platforms and techniques for emerging “Big Data” applications requires the ...
Inverse frequent itemset mining (IFM) consists of generating artificial transactional databases refl...
Frequent itemset mining is a common task in data mining from which association rules are derived. As...
Recently, the inverse frequent set mining problem has received more attention because of its importa...
Concise representations of frequent itemsets sacrifice readability and direct interpretability by a ...
Frequent episode mining has been proposed as a data mining task with the goal of recovering sequenti...
Frequent itemset mining (FIM) is a method for finding regularities in transaction databases. It has ...
We study the problem of mining frequent itemsets from uncertain data under a probabilistic framework...
The development of platforms and techniques for emerging Big Data and Machine Learning applications ...
Frequent itemset mining assists the data mining practitioner in searching for strongly associated it...
This thesis addresses the issue of enhancing the scalability of data mining techniques, with specifi...
Itemset mining approaches, while having been studied for more than 15 years, have been evaluated onl...
As advances in technology allow for the collection, storage, and analysis of vast amounts of data, t...
Recent studies on frequent itemset mining algorithms resulted in significant performance improvement...
Frequent pattern mining attracts extensive research interests over the past two decades: including m...