Multi-relational data mining has become popular due to the limitations of propositional problem definition in structured domains and the tendency of storing data in relational databases. Several relational knowledge discovery systems have been developed employing various search strategies, heuristics, language pattern limitations and hypothesis evaluation criteria, in order to cope with intractably large search space and to be able to generate high-quality patterns. In this work, we introduce an ILP-based concept discovery framework named Concept Rule Induction System (CRIS) which includes new approaches for search space pruning and new features, such as defining aggregate predicates and handling numeric attributes, for rule quality improve...
A conceptual space provides a robust infrastructure for many cognitive tasks including reasoning, pe...
Formal Concept Analysis (FCA) and its associated conceptual structures are used to support explorato...
Concept discovery is a process for finding hidden relations from the given set of experiences named ...
Multi-relational data mining has become popular due to the limitations of propositional problem defi...
Multi-relational data mining has become popular due to the limitations of propositional problem defi...
A large amount of the valuable data in daily life is stored in relational databases. The accumulatio...
Multi-relational data mining has become popular due to the limitations of propositional problem defi...
Concept discovery aims at finding the rules that best describe the given target predicate (i.e., the...
Multi-relational concept discovery anus to find the relational rules that best describe the target c...
Due to the increase in the amount of relational data that is being collected and the limitations of ...
AbstractMulti-relational concept discovery aims to find the relational rules that best describe the ...
International audienceThe processing of complex data is admittedly among the major concerns of knowl...
Knowledge discovery support environments in-clude beside classical data analysis tools also data min...
In this work we focus on improving the time efficiency of Inductive Logic Programming (ILP)-based co...
International audienceFormal Concept Analysis (FCA) and its associated conceptual structures are use...
A conceptual space provides a robust infrastructure for many cognitive tasks including reasoning, pe...
Formal Concept Analysis (FCA) and its associated conceptual structures are used to support explorato...
Concept discovery is a process for finding hidden relations from the given set of experiences named ...
Multi-relational data mining has become popular due to the limitations of propositional problem defi...
Multi-relational data mining has become popular due to the limitations of propositional problem defi...
A large amount of the valuable data in daily life is stored in relational databases. The accumulatio...
Multi-relational data mining has become popular due to the limitations of propositional problem defi...
Concept discovery aims at finding the rules that best describe the given target predicate (i.e., the...
Multi-relational concept discovery anus to find the relational rules that best describe the target c...
Due to the increase in the amount of relational data that is being collected and the limitations of ...
AbstractMulti-relational concept discovery aims to find the relational rules that best describe the ...
International audienceThe processing of complex data is admittedly among the major concerns of knowl...
Knowledge discovery support environments in-clude beside classical data analysis tools also data min...
In this work we focus on improving the time efficiency of Inductive Logic Programming (ILP)-based co...
International audienceFormal Concept Analysis (FCA) and its associated conceptual structures are use...
A conceptual space provides a robust infrastructure for many cognitive tasks including reasoning, pe...
Formal Concept Analysis (FCA) and its associated conceptual structures are used to support explorato...
Concept discovery is a process for finding hidden relations from the given set of experiences named ...