A number of artificial intelligence and machine learning problems need to be formulated within a directional space, where classical Euclidean geometry does not apply or needs to be readjusted into the circle. This is typical, for example, in computational linguistics and natural language processing, where language models based on Bag-of-Words, Vector Space, or Word Embedding, are largely used for tasks like document classification, information retrieval and recommendation systems, among others. In these contexts, for assessing document clustering and outliers detection applications, it is often necessary to generate data with directional properties and units that follow some model assumptions and possibly form close groups. In the following...
This paper presents the Clustering Search (CS) as a new hybrid metaheuristic, which works in conjunc...
This book constitutes the refereed post-conference proceedings of the 6th International Conference o...
International audienceIn this article we investigate a new variant of Variable Neighborhood Search (...
AbstractA number of artificial intelligence and machine learning problems need to be formulated with...
In application fields such as linguistic and computer vision there is an increasing need of referenc...
Local search algorithms operate by making small changes to candidate solutions with the aim of reach...
The methods of intensification and diversification are indispensable in successful meta heuristics f...
Euclidean Minimum Sum-of-Squares Clustering amounts to finding p prototypes by minimizing the sum of...
Though a great deal of research work has been devoted to the development of dimensionality reduction...
Conservative spatial queries, such as range search and nearest neighbor reclamation, involve only co...
In the real world, many problems are continuous in nature. In some cases, finding the global solutio...
This paper gives details of the steps needed to undertake neighbourhood search for a combinatorial o...
We consider supervised dimension reduction (SDR) for problems with discrete inputs. Existing methods...
Introduction The methods of intensification and diversification are indispensable in successful met...
Methods for automatic algorithm configuration integrate some search mechanism for generating candida...
This paper presents the Clustering Search (CS) as a new hybrid metaheuristic, which works in conjunc...
This book constitutes the refereed post-conference proceedings of the 6th International Conference o...
International audienceIn this article we investigate a new variant of Variable Neighborhood Search (...
AbstractA number of artificial intelligence and machine learning problems need to be formulated with...
In application fields such as linguistic and computer vision there is an increasing need of referenc...
Local search algorithms operate by making small changes to candidate solutions with the aim of reach...
The methods of intensification and diversification are indispensable in successful meta heuristics f...
Euclidean Minimum Sum-of-Squares Clustering amounts to finding p prototypes by minimizing the sum of...
Though a great deal of research work has been devoted to the development of dimensionality reduction...
Conservative spatial queries, such as range search and nearest neighbor reclamation, involve only co...
In the real world, many problems are continuous in nature. In some cases, finding the global solutio...
This paper gives details of the steps needed to undertake neighbourhood search for a combinatorial o...
We consider supervised dimension reduction (SDR) for problems with discrete inputs. Existing methods...
Introduction The methods of intensification and diversification are indispensable in successful met...
Methods for automatic algorithm configuration integrate some search mechanism for generating candida...
This paper presents the Clustering Search (CS) as a new hybrid metaheuristic, which works in conjunc...
This book constitutes the refereed post-conference proceedings of the 6th International Conference o...
International audienceIn this article we investigate a new variant of Variable Neighborhood Search (...