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- Optimization of the Architecture of Neural Networks Using a Deletion/Substitution/Addition Algorithm
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- Blythe Durbin, Postdoctoral Fellow, Division of Biostatistics, School of Public Health, University of California, Berkeley
- Sandrine Dudoit, Division of Biostatistics,
School of Public Health, University of California, Berkeley
- Mark J. van der Laan, Division of Biostatistics, School of Public Health, University of California, Berkeley
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- Abstract:
- Neural networks are a popular machine learning tool,
particularly in applications such as the prediction of protein
secondary structure. However, overfitting poses an obstacle to their
effective use for this and other problems. Due to the large number
of parameters in a typical neural network, one may obtain a network
fit that perfectly predicts the learning data yet fails to
generalize to other data sets. One way of reducing the size of the
parameter space is to alter the network topology so that some edges
are removed; however, it is often not immediately apparent which
edges should be eliminated. We propose a data-adaptive method of
selecting an optimal network architecture using the
Deletion/Substitution/Addition algorithm introduced in
Sinisi and van der Laan (2004) and Molinaro and van der Laan (2004).
Results of this approach in the regression case are presented on two
simulated data sets and the diabetes data of Efron et al. (2002).
- Subject Area:
- General Biostatistics
- Suggested Citation:
- Blythe Durbin, Sandrine Dudoit, and Mark J. van der Laan,
"Optimization of the Architecture of Neural Networks Using a Deletion/Substitution/Addition Algorithm"
(March 2005).
U.C. Berkeley Division of Biostatistics Working Paper Series.
Working Paper 170.
http://www.bepress.com/ucbbiostat/paper170