Journal Article10.1162/NECO.1993.5.3.483
Pattern discrimination using feedforward networks: A benchmark study of scaling behavior
TL;DR: The discrimination powers of multilayer perceptron (MLP) and learning vector quantization networks are compared for overlapping gaussian distributions and it is shown that the MLP network handles high-dimensional problems in a more efficient way than LVQ.
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Abstract: The discrimination powers of multilayer perceptron (MLP) and learning vector quantization (LVQ) networks are compared for overlapping gaussian distributions It is shown, both analytically and with Monte Carlo studies, that the MLP network handles high-dimensional problems in a more efficient way than LVQ This is mainly due to the sigmoidal form of the MLP transfer function, but also to the fact that the MLP uses hyperplanes more efficiently Both algorithms are equally robust to limited training sets and the learning curves fall off like 1/M, where M is the training set size, which is compared to theoretical predictions from statistical estimates and Vapnik-Chervonenkis bounds
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Citations
Modification of Kohonen's SOFM to Simulate Cortical Plasticity Induced by Coactivation Input Patterns
Marianne Andres,Oliver Schlüter,Friederike Spengler,Hubert R. Dinse +3 more
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Hydroelectric power plant management relying on neural networks and expert system integration
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•Dissertation
Extending and benchmarking Cascade-Correlation : extensions to the Cascade-Correlation architecture and benchmarking of feed-forward supervised artificial neural networks
SG Waugh
- 01 Jan 1995
TL;DR: This thesis is divided into two parts: the first examines various extensions to Cascade-Correlation, and the second examines the benchmarking of feed-forward supervised artificial neural networks, including back-propagation and Cascade- Correlation.
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Cooperative modular neural network classifiers
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TL;DR: This thesis proposes a new modular neural network design for classi cation which outperforms the state-of-the-art modular and non-modular neural classi ers using the same supervised learning scheme.
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An Overview of SOM Literature
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- 01 Jan 1995
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8
References
Some methods for classification and analysis of multivariate observations
James B. MacQueen
- 01 Jan 1967
TL;DR: The k-means algorithm as mentioned in this paper partitions an N-dimensional population into k sets on the basis of a sample, which is a generalization of the ordinary sample mean, and it is shown to give partitions which are reasonably efficient in the sense of within-class variance.
Parallel Distributed Processing: Explorations in the Microstructure of Cognition: Foundations
David E. Rumelhart,James L. McClelland,Au +2 more
- 17 Jul 1986
TL;DR: The fundamental principles, basic mechanisms, and formal analyses involved in the development of parallel distributed processing (PDP) systems are presented in individual chapters contributed by leading experts.
16.7K
Pattern Classification and Scene Analysis
TL;DR: We provide a unified, comprehensive and up-to-date treatment of both statistical and descriptive methods for pattern recognition.
12.5K
•Book
Self Organization And Associative Memory
Teuvo Kohonen
- 01 Jan 1984
TL;DR: The purpose and nature of Biological Memory, as well as some of the aspects of Memory Aspects, are explained.
9.8K