Publication detail

Tuning of Fuzzy Neural Network Classifier

ZBOŘIL, F., DAO ANH, M.

Original Title

Tuning of Fuzzy Neural Network Classifier

English Title

Tuning of Fuzzy Neural Network Classifier

Type

conference paper

Language

en

Original Abstract

The paper delas with a Fuzzy Restricted Coulomb Energy (FRCE) neural network. The network has the same architecture as a primitive RCE neural network: it consists of three layers: input layer X, hidden layer H (prototype layer) and output layer Y. There is a full set of connections between input and prototype layers, but only partial set of connections exits between hidden and output layers. Each neuron in the input layer represents a feature of an incoming pattern that the network must assign to some pattern class. Each neuron in the hidden layer contains information about an example of a learned class that occurs in the training data. In the output layer, each neuron corresponds to an individual class, i.e. it represents one category of patterns. The FRCE principle and it structure, learning an recalling algorithms and some experiments with FRCE are described in the paper.

English abstract

The paper delas with a Fuzzy Restricted Coulomb Energy (FRCE) neural network. The network has the same architecture as a primitive RCE neural network: it consists of three layers: input layer X, hidden layer H (prototype layer) and output layer Y. There is a full set of connections between input and prototype layers, but only partial set of connections exits between hidden and output layers. Each neuron in the input layer represents a feature of an incoming pattern that the network must assign to some pattern class. Each neuron in the hidden layer contains information about an example of a learned class that occurs in the training data. In the output layer, each neuron corresponds to an individual class, i.e. it represents one category of patterns. The FRCE principle and it structure, learning an recalling algorithms and some experiments with FRCE are described in the paper.

Keywords

Fuzzy Sets, Neural Network, Fuzzy Pattern Recognition, Restricted Coulomb Energy, Fuzzy Neural Network.

RIV year

2001

Released

09.05.2001

Location

Ostrava

ISBN

80-85988-57-7

Book

Proceedings of the 35th Spring International Conference MOSIS'01

Pages from

201

Pages to

206

Pages count

6

Documents

BibTex


@inproceedings{BUT5591,
  author="Minh {Dao Anh} and František {Zbořil}",
  title="Tuning of Fuzzy Neural Network Classifier",
  annote="The paper delas with a Fuzzy Restricted Coulomb Energy (FRCE) neural network. The network has the same architecture as a primitive RCE neural network: it consists of three layers: input layer X, hidden layer H (prototype layer) and output layer Y. There is a full set of connections between input and prototype layers, but only partial set of connections exits between hidden and output layers. Each neuron in the input layer represents a feature of an incoming pattern that the network must assign to some pattern class. Each neuron in the hidden layer contains information about an example of a learned class that occurs in the training data. In the output layer, each neuron corresponds to an individual class, i.e. it represents one category of patterns. The FRCE principle and it structure, learning an recalling algorithms and some experiments with FRCE are described in the paper.",
  booktitle="Proceedings of the 35th Spring International Conference MOSIS'01",
  chapter="5591",
  year="2001",
  month="may",
  pages="201--206",
  type="conference paper"
}