International audienceA method for investigating the internal knowledge representation constructed by neural net learning is described: it is shown how from a given weight matrix defining a feedforward artificial neural net, we can induce characteristic patterns of each of the classes of inputs classified by that net. These characteristic patterns, called prototypes, are found by a gradient descent search of the space of inputs. After an exposition of the theory, results are given for the well known LED recognition problem where a network simulates recognition of decimal digits displayed on a seven-segment LED display. Contrary to theoretical intuition, the experimental results indicate that the computed prototypes retain only some of the f...
Traditionally, when training supervised classifiers with Backpropagation, the training dataset is a ...
A prototype is a general description which depicts what an entire set of exemplars, belonging to a c...
The ease of learning concepts from examples in empirical machine learning depends on the attributes ...
International audienceA method for investigating the internal knowledge representation constructed b...
International audienceA method for investigating the internal knowledge representation constructed b...
We propose a new method of feature extraction that allows to apply pattern-recognition abilities of ...
Abstract. We propose a new method of feature extraction that allows to apply pattern-recognition abi...
The architecture of a neural network with its links and weights can be viewed as a knowledge represe...
This paper introduces a method for the generation of images that activate any target neuron or group...
Abstract—A pattern recognition system refers to a system deployed for the classification of data pat...
The aim of this thesis is to explain and practically show the operation of different types of neural...
The corners and the middle points, which are extracted as features from the line approximation of a ...
This report contains some remarks about the backpropagation method for neural net learning. We conce...
The corners and the middle points, which are extracted as features from the line approximation of a ...
Artificial neural networks can be imagined like artificial brains in science fiction stories. These ...
Traditionally, when training supervised classifiers with Backpropagation, the training dataset is a ...
A prototype is a general description which depicts what an entire set of exemplars, belonging to a c...
The ease of learning concepts from examples in empirical machine learning depends on the attributes ...
International audienceA method for investigating the internal knowledge representation constructed b...
International audienceA method for investigating the internal knowledge representation constructed b...
We propose a new method of feature extraction that allows to apply pattern-recognition abilities of ...
Abstract. We propose a new method of feature extraction that allows to apply pattern-recognition abi...
The architecture of a neural network with its links and weights can be viewed as a knowledge represe...
This paper introduces a method for the generation of images that activate any target neuron or group...
Abstract—A pattern recognition system refers to a system deployed for the classification of data pat...
The aim of this thesis is to explain and practically show the operation of different types of neural...
The corners and the middle points, which are extracted as features from the line approximation of a ...
This report contains some remarks about the backpropagation method for neural net learning. We conce...
The corners and the middle points, which are extracted as features from the line approximation of a ...
Artificial neural networks can be imagined like artificial brains in science fiction stories. These ...
Traditionally, when training supervised classifiers with Backpropagation, the training dataset is a ...
A prototype is a general description which depicts what an entire set of exemplars, belonging to a c...
The ease of learning concepts from examples in empirical machine learning depends on the attributes ...