Currently, individuals leave a digital trace of their activities when they use their smartphones, social media, mobile apps, credit card payments, Internet surfing profile, etc. These digital activities hide intrinsic usage patterns, which can be extracted using sequential pattern algorithms. Sequential pattern mining is a promising approach for discovering temporal regularities in huge and heterogeneous databases. These sequences represent individuals’ common behavior and could contain sensitive information. Thus, sequential patterns should be sanitized to preserve individuals’ privacy. Hence, many algorithms have been proposed to accomplish this task. However, these techniques add noise to the candidate support before they are validated a...
Abstract—In this paper, we study the problem of mining frequent sequences under the rigorous differe...
Sequence data increasingly shared by organizations to enable mining applications market-basket analy...
Abstract—A large amount of transaction data containing associations between individuals and sensitiv...
Sequence data are encountered in a plethora of applications, spanning from telecommunications to web...
The mining of frequent patterns is a fundamental component in many data mining tasks. A considerable...
Discovering frequent graph patterns in a graph database offers valuable information in a variety of ...
Abstract — Enormous amount of detailed private data is recurrently collected and analysed by applica...
Frequent sequential pattern mining is a central task in many fields such as biology and finance. How...
Research in the areas of privacy preserving techniques in databases and subsequently in privacy enha...
International audienceResearch in the areas of privacy-preserving techniques in databases and subseq...
Sequence datasets are encountered in a plethora of applications spanning from web usage analysis to ...
The search for unknown frequent pattern is one of the core activities in many time series data minin...
Data mining is gaining societal momentum due to the ever increasing availability of large amounts o...
Privacy-preserving data mining in distributed environments is an important issue in the field of dat...
Sequential data is being increasingly used in a variety of applications. Publishing sequential data ...
Abstract—In this paper, we study the problem of mining frequent sequences under the rigorous differe...
Sequence data increasingly shared by organizations to enable mining applications market-basket analy...
Abstract—A large amount of transaction data containing associations between individuals and sensitiv...
Sequence data are encountered in a plethora of applications, spanning from telecommunications to web...
The mining of frequent patterns is a fundamental component in many data mining tasks. A considerable...
Discovering frequent graph patterns in a graph database offers valuable information in a variety of ...
Abstract — Enormous amount of detailed private data is recurrently collected and analysed by applica...
Frequent sequential pattern mining is a central task in many fields such as biology and finance. How...
Research in the areas of privacy preserving techniques in databases and subsequently in privacy enha...
International audienceResearch in the areas of privacy-preserving techniques in databases and subseq...
Sequence datasets are encountered in a plethora of applications spanning from web usage analysis to ...
The search for unknown frequent pattern is one of the core activities in many time series data minin...
Data mining is gaining societal momentum due to the ever increasing availability of large amounts o...
Privacy-preserving data mining in distributed environments is an important issue in the field of dat...
Sequential data is being increasingly used in a variety of applications. Publishing sequential data ...
Abstract—In this paper, we study the problem of mining frequent sequences under the rigorous differe...
Sequence data increasingly shared by organizations to enable mining applications market-basket analy...
Abstract—A large amount of transaction data containing associations between individuals and sensitiv...