This report contains the talks accepted for the meeting of the working group "connectionism" of the German Society of Computer Science (GI) on September 29th, 1999 in Magdeburg. It takes place in conjunction with the GI-Workshop-Days "Learning, Knowledge Discovery, and Adaptivity". The meeting is devoted to the discussion of new trends and ongoing research projects in the areas of connectionism and neural networks with specific emphasis to knowledge discovery and adaptivity. In the first paper A. Albrecht and C.K. Wong of the Chinese University of Hong Kong propose a "Modified Perceptron Algorithm Using Logarithmic Cooling Functions". They consider the problem of separating n-dimensional vectors into two classes by linear threshold function...
XCSF is a modern form of Learning Classifier System (LCS) that has proven successful in a number of ...
The paper studies a stochastic extension of continuous recurrent neural networks and analyzes gradie...
We investigate a novel neural network model which uses stochastic weights. It is shown that the func...
The difficulties of learning in multilayered networks of computational units has limited the use of ...
AbstractA clear need exists within artificial intelligence for flexible systems capable of modifying...
This dissertation presents a new strategy for the automatic design of neural networks. The learning ...
Since the beginning of the 1980's, a lot of news approaches of biomimetic inspiration have been defi...
This volume contains 17 of the contributed papers presented at the 1st European Conference on Comput...
Any non-associative reinforcement learning algorithm can be viewed as a method for performing functi...
This paper follows the 25 years of development of methods and systems for knowledge-based neural net...
Random Neural Networks (RNNs) area classof Neural Networks (NNs) that can also be seen as a specific...
Title: Artificial Neural Networks and Their Usage For Knowledge Extraction Author: RNDr. Zuzana Petř...
Connectionist modeis, commonly referred to as neural networks, are computing models in which large n...
Connectionism's main contribution to cognitive science will prove to be the renewed impetus it has i...
This paper presents an overview and analysis of learning in Artificial Neural Systems (ANS's). It be...
XCSF is a modern form of Learning Classifier System (LCS) that has proven successful in a number of ...
The paper studies a stochastic extension of continuous recurrent neural networks and analyzes gradie...
We investigate a novel neural network model which uses stochastic weights. It is shown that the func...
The difficulties of learning in multilayered networks of computational units has limited the use of ...
AbstractA clear need exists within artificial intelligence for flexible systems capable of modifying...
This dissertation presents a new strategy for the automatic design of neural networks. The learning ...
Since the beginning of the 1980's, a lot of news approaches of biomimetic inspiration have been defi...
This volume contains 17 of the contributed papers presented at the 1st European Conference on Comput...
Any non-associative reinforcement learning algorithm can be viewed as a method for performing functi...
This paper follows the 25 years of development of methods and systems for knowledge-based neural net...
Random Neural Networks (RNNs) area classof Neural Networks (NNs) that can also be seen as a specific...
Title: Artificial Neural Networks and Their Usage For Knowledge Extraction Author: RNDr. Zuzana Petř...
Connectionist modeis, commonly referred to as neural networks, are computing models in which large n...
Connectionism's main contribution to cognitive science will prove to be the renewed impetus it has i...
This paper presents an overview and analysis of learning in Artificial Neural Systems (ANS's). It be...
XCSF is a modern form of Learning Classifier System (LCS) that has proven successful in a number of ...
The paper studies a stochastic extension of continuous recurrent neural networks and analyzes gradie...
We investigate a novel neural network model which uses stochastic weights. It is shown that the func...