International audienceThis paper focuses on the possibility of enabling vector quantization learning techniques into dynamic neural fields, as an attempt to enrich their usage in bio-inspired applications. As mathematical approaches prove rather difficult to propose a practical solution, due to the non-linear character of the field equations, we adopt a different perspective in order to deal with this problem. This consists in simulating the evolution of the field and design an empirical method able to measure its quality. The developed benchmark framework implementing this approach is used to check whether a given field is capable to behave as expected in various situations, in particular those involving self-organization by vector quantiz...
International audienceAs introduced by Amari, dynamic neural fields (DNF) are a mathematical formali...
Kohonen's Learning Vector Quantization (LVQ) is modified by attributing training counters to ea...
Villmann T, Schleif F-M, Hammer B. Supervised Neural Gas and Relevance Learning in Learning Vector Q...
International audienceThis paper focuses on the possibility of enabling vector quantization learning...
This paper focuses on the possibility of enabling vec-tor quantization learning techniques into dyna...
Schleif F-M, Villmann T. Neural Maps and Learning Vector Quantization - Theory and Applications. In:...
International audienceDespite being successfully used in the design of various biologically-inspired...
Villmann T, Hammer B. Supervised Neural Gas for Learning Vector Quantization. In: Polani D, Kim J, M...
International audienceIn this paper, dynamic neural fields are used to develop key features of a cort...
This paper focuses on recent developments in the use of Artificial Neural Networks (ANNs) for Vector...
Witoelar A, Biehl M, Ghosh A, Hammer B. Learning dynamics and robustness of vector quantization and ...
The authors investigate the performance of two neural network architectures for vector quantization ...
A large variety of machine learning models which aim at vector quantization have been proposed. Howe...
ISBN : 978-2-9532965-0-1In this paper, the behavior of dynamic neural fields is studied through the ...
Villmann T, Schleif F-M. Functional Vector Quantization by Neural Maps. In: Institute of Electrical ...
International audienceAs introduced by Amari, dynamic neural fields (DNF) are a mathematical formali...
Kohonen's Learning Vector Quantization (LVQ) is modified by attributing training counters to ea...
Villmann T, Schleif F-M, Hammer B. Supervised Neural Gas and Relevance Learning in Learning Vector Q...
International audienceThis paper focuses on the possibility of enabling vector quantization learning...
This paper focuses on the possibility of enabling vec-tor quantization learning techniques into dyna...
Schleif F-M, Villmann T. Neural Maps and Learning Vector Quantization - Theory and Applications. In:...
International audienceDespite being successfully used in the design of various biologically-inspired...
Villmann T, Hammer B. Supervised Neural Gas for Learning Vector Quantization. In: Polani D, Kim J, M...
International audienceIn this paper, dynamic neural fields are used to develop key features of a cort...
This paper focuses on recent developments in the use of Artificial Neural Networks (ANNs) for Vector...
Witoelar A, Biehl M, Ghosh A, Hammer B. Learning dynamics and robustness of vector quantization and ...
The authors investigate the performance of two neural network architectures for vector quantization ...
A large variety of machine learning models which aim at vector quantization have been proposed. Howe...
ISBN : 978-2-9532965-0-1In this paper, the behavior of dynamic neural fields is studied through the ...
Villmann T, Schleif F-M. Functional Vector Quantization by Neural Maps. In: Institute of Electrical ...
International audienceAs introduced by Amari, dynamic neural fields (DNF) are a mathematical formali...
Kohonen's Learning Vector Quantization (LVQ) is modified by attributing training counters to ea...
Villmann T, Schleif F-M, Hammer B. Supervised Neural Gas and Relevance Learning in Learning Vector Q...