The Object Migrating Automata (OMA) has been used as a powerful AI-based tool to resolve real-life partitioning problems. Apart from its original version, variants and enhancements that invoke the pursuit concept of Learning Automata, and the phenomena of transitivity, have more recently been used to improve its power. The single major handicap that it possesses is the fact that the number of the objects in each partition must be equal. This thesis deals with the task of relaxing this constraint. Thus, in this thesis, we will consider the problem of designing OMA-based schemes when the number of the objects can be unequal, but prespecified. By opening ourselves to this less-constrained version, ...
Traditional Learning Automata (LA) work with the understanding that the actions are chosen purely ba...
This paper presents a Learning Automaton (LA) solution to the Multi-Constrained Mapping problem, whi...
AbstractIn this paper we present an O(n2) implementation of Moore's algorithm for automata minimizat...
Master's thesis in Information- and communication technology (IKT591)The Object Migrating Automata (...
Part 4: Automated Machine LearningInternational audienceSolving partitioning problems in random envi...
The Object Migration Automata (OMA) has been used as a powerful tool to resolve real-life partitioni...
One of the most difficult problems that is all-pervasive in computing is that of partitioning. It ha...
Solving partitioning problems in random environments is a classic and challenging task, and has nume...
Probably, the most reputed solution for partitioning, which has applications in databases, attribute...
Let Ω = {A1,..., Aw} be a set of W objects to be partitioned into R classes Π = {Π1,...,ΠR} in such ...
The authors consider a set of W objects equipartitioned into R classes. They propose three determini...
We consider the problem of partitioning a set of elements (or objects) into mutually exclusive class...
This paper considers the NP-hard problem of object assignment with respect to multiple constraints: ...
This paper considers the NP-hard problem of object assignment with respect to multiple constraints: ...
From the earliest studies in graph theory [2], [5], the phenomenon of tr...
Traditional Learning Automata (LA) work with the understanding that the actions are chosen purely ba...
This paper presents a Learning Automaton (LA) solution to the Multi-Constrained Mapping problem, whi...
AbstractIn this paper we present an O(n2) implementation of Moore's algorithm for automata minimizat...
Master's thesis in Information- and communication technology (IKT591)The Object Migrating Automata (...
Part 4: Automated Machine LearningInternational audienceSolving partitioning problems in random envi...
The Object Migration Automata (OMA) has been used as a powerful tool to resolve real-life partitioni...
One of the most difficult problems that is all-pervasive in computing is that of partitioning. It ha...
Solving partitioning problems in random environments is a classic and challenging task, and has nume...
Probably, the most reputed solution for partitioning, which has applications in databases, attribute...
Let Ω = {A1,..., Aw} be a set of W objects to be partitioned into R classes Π = {Π1,...,ΠR} in such ...
The authors consider a set of W objects equipartitioned into R classes. They propose three determini...
We consider the problem of partitioning a set of elements (or objects) into mutually exclusive class...
This paper considers the NP-hard problem of object assignment with respect to multiple constraints: ...
This paper considers the NP-hard problem of object assignment with respect to multiple constraints: ...
From the earliest studies in graph theory [2], [5], the phenomenon of tr...
Traditional Learning Automata (LA) work with the understanding that the actions are chosen purely ba...
This paper presents a Learning Automaton (LA) solution to the Multi-Constrained Mapping problem, whi...
AbstractIn this paper we present an O(n2) implementation of Moore's algorithm for automata minimizat...