Monolithic neural networks may be trained from measured data to establish knowledge about the process. Unfortunately, this knowledge is not guaranteed to be found and – if at all – hard to extract. Modular neural networks are better suited for this purpose. Domain-ordered by topology, rule extraction is performed module by module. This has all the benefits of a divide-and-conquer method and opens the way to structured design. This paper discusses a next step in this direction by illustrating the potential of base functions to design the neural model
Aimed at the pattern classification and the system-modelling problem with complex time-varying signa...
(eng) Artificial neural networks may learn to solve arbitrary complex problems. But knowledge acquir...
Abstract. This paper considers the general problem of function estimation with a modular approach of...
Monolithic neural networks may be trained from measured data to establish knowledge about the proces...
Monolithic neural networks may be trained from measured data to establish knowledge about the proces...
Monolithic neural networks may be trained from measured data to establish knowl-edge about the proce...
Neural networks learn knowledge from data. For a monolithic structure, this knowledge can be easily ...
Problem description. The learning of monolithic neural networks becomes harder with growing network ...
Problem description. The learning of monolithic neural networks becomes harder with growing network ...
Recent years has seen the emergence of a new paradigm in system’s identification known as Artifici...
Since the early development of artificial neural networks, researchers have tried to analyze trained...
Despite their success-story, artificial neural networks have one major disadvantage compared to othe...
Current research in modular neural networks (MNNs) have essentially two aims; to model systematic me...
Artificial neural networks are empirical models which adjust their internal parameters, using a suit...
Contrary to the common opinion, neural networks may be used for knowledge extraction. Recently, a ne...
Aimed at the pattern classification and the system-modelling problem with complex time-varying signa...
(eng) Artificial neural networks may learn to solve arbitrary complex problems. But knowledge acquir...
Abstract. This paper considers the general problem of function estimation with a modular approach of...
Monolithic neural networks may be trained from measured data to establish knowledge about the proces...
Monolithic neural networks may be trained from measured data to establish knowledge about the proces...
Monolithic neural networks may be trained from measured data to establish knowl-edge about the proce...
Neural networks learn knowledge from data. For a monolithic structure, this knowledge can be easily ...
Problem description. The learning of monolithic neural networks becomes harder with growing network ...
Problem description. The learning of monolithic neural networks becomes harder with growing network ...
Recent years has seen the emergence of a new paradigm in system’s identification known as Artifici...
Since the early development of artificial neural networks, researchers have tried to analyze trained...
Despite their success-story, artificial neural networks have one major disadvantage compared to othe...
Current research in modular neural networks (MNNs) have essentially two aims; to model systematic me...
Artificial neural networks are empirical models which adjust their internal parameters, using a suit...
Contrary to the common opinion, neural networks may be used for knowledge extraction. Recently, a ne...
Aimed at the pattern classification and the system-modelling problem with complex time-varying signa...
(eng) Artificial neural networks may learn to solve arbitrary complex problems. But knowledge acquir...
Abstract. This paper considers the general problem of function estimation with a modular approach of...