International audienceFuzzy sequential pattern mining is a relevant approach when dealing with temporally annotated numerical data since it allows discovering frequent sequences embedded in the records. However, such patterns, in their current form, do not allow extracting another kind of knowledge that is typical of sequential data: temporal tendencies. Thanks to a relevant use of fuzzy sequential patterns, we propose the GraSP algorithm that discovers gradual trends in sequences. Our proposal is validated through experiments on web access logs
International audienceMining gradual patterns plays a crucial role in many real world applications w...
International audienceMining frequent simultaneous attribute co-variations in numerical databases is...
International audienceMining temporal knowledge has many applications. Such knowledge can be all the...
Fuzzy sequential pattern mining is a rel-evant approach when dealing with tem-porally annotated nume...
International audienceTemporal data can be handled in many ways for discovering specific knowledge. ...
International audienceMost real world databases consist of historical and numerical data such as sen...
With the increase of data, data mining has been introduced to solve the overloading problem and to d...
Research Brown Bag PresentationsGradual patterns allow for retrieval of the correlations between att...
International audienceGradual patterns allow for retrieval of correlations between attributes throug...
[[abstract]]Sequential pattern mining is to discover frequent sequential patterns in a sequence data...
[[abstract]]Sequential pattern mining is to discover frequent sequential patterns in a sequence data...
International audienceThe traditional algorithms that extract the gradual patterns often face the pr...
Sequential pattern analysis targets on finding statistically relevant temporal structures where the ...
Gradual patterns have been studied for many years as they contain precious information. They have be...
Sequential pattern mining is an important data mining problem widely addressed by the data mining co...
International audienceMining gradual patterns plays a crucial role in many real world applications w...
International audienceMining frequent simultaneous attribute co-variations in numerical databases is...
International audienceMining temporal knowledge has many applications. Such knowledge can be all the...
Fuzzy sequential pattern mining is a rel-evant approach when dealing with tem-porally annotated nume...
International audienceTemporal data can be handled in many ways for discovering specific knowledge. ...
International audienceMost real world databases consist of historical and numerical data such as sen...
With the increase of data, data mining has been introduced to solve the overloading problem and to d...
Research Brown Bag PresentationsGradual patterns allow for retrieval of the correlations between att...
International audienceGradual patterns allow for retrieval of correlations between attributes throug...
[[abstract]]Sequential pattern mining is to discover frequent sequential patterns in a sequence data...
[[abstract]]Sequential pattern mining is to discover frequent sequential patterns in a sequence data...
International audienceThe traditional algorithms that extract the gradual patterns often face the pr...
Sequential pattern analysis targets on finding statistically relevant temporal structures where the ...
Gradual patterns have been studied for many years as they contain precious information. They have be...
Sequential pattern mining is an important data mining problem widely addressed by the data mining co...
International audienceMining gradual patterns plays a crucial role in many real world applications w...
International audienceMining frequent simultaneous attribute co-variations in numerical databases is...
International audienceMining temporal knowledge has many applications. Such knowledge can be all the...