International audiencePattern Mining is a well-studied field in Data Mining and Machine Learning. The modern methods are based on dynamically updating models, among which MDL-based ones ensure high-quality pattern sets. Formal concepts also characterize patterns in a condensed form. In this paper we study MDL-based algorithm called Krimp in FCA settings and propose a modified version that benefits from FCA and relies on probabilistic assumptions that underlie MDL. We provide an experimental proof that the proposed approach improves quality of pattern sets generated by Krimp
Pattern mining is well established in data mining research, especiallyfor mining binary datasets. Su...
National audienceIn this paper we consider different entropy-based approaches to Pattern Mining. We ...
Pattern Mining is one of the most researched topics in the data mining community. Literally hundreds...
International audiencePattern Mining is a well-studied field in Data Mining and Machine Learning. Th...
International audienceThe Minimal Description Length (MDL) principle is a powerful and well founded ...
In this short paper we sketch a brief introduction to our Krimp algorithm. Moreover, we briefly disc...
The discovery of patterns plays an important role in data mining. A pattern can be any type of regul...
International audiencePattern Mining (PM) has a prominent place in Data Science and finds its applic...
When considering a data set it is often unknown how complex it is, and hence it is difficult to asse...
International audienceFormal Concept Analysis can be considered as a classification engine able to b...
The MDL Principle (induction by compression) is applied with meticulous effort in the Krimpalgorithm...
Pattern mining is one of the best-known concepts in Data Mining. A big problem in pattern mining is ...
This is about the Minimum Description Length (MDL) principle applied to pattern mining. The length o...
In this thesis, we study different aspects of pattern mining in binary and numerical tabular dataset...
Mining small, useful, and high-quality sets of patterns has recently become an important topic in da...
Pattern mining is well established in data mining research, especiallyfor mining binary datasets. Su...
National audienceIn this paper we consider different entropy-based approaches to Pattern Mining. We ...
Pattern Mining is one of the most researched topics in the data mining community. Literally hundreds...
International audiencePattern Mining is a well-studied field in Data Mining and Machine Learning. Th...
International audienceThe Minimal Description Length (MDL) principle is a powerful and well founded ...
In this short paper we sketch a brief introduction to our Krimp algorithm. Moreover, we briefly disc...
The discovery of patterns plays an important role in data mining. A pattern can be any type of regul...
International audiencePattern Mining (PM) has a prominent place in Data Science and finds its applic...
When considering a data set it is often unknown how complex it is, and hence it is difficult to asse...
International audienceFormal Concept Analysis can be considered as a classification engine able to b...
The MDL Principle (induction by compression) is applied with meticulous effort in the Krimpalgorithm...
Pattern mining is one of the best-known concepts in Data Mining. A big problem in pattern mining is ...
This is about the Minimum Description Length (MDL) principle applied to pattern mining. The length o...
In this thesis, we study different aspects of pattern mining in binary and numerical tabular dataset...
Mining small, useful, and high-quality sets of patterns has recently become an important topic in da...
Pattern mining is well established in data mining research, especiallyfor mining binary datasets. Su...
National audienceIn this paper we consider different entropy-based approaches to Pattern Mining. We ...
Pattern Mining is one of the most researched topics in the data mining community. Literally hundreds...