A Scaled Conjugate Gradient Algorithm for Fast Supervised Learning 论文

1990DAIMI Report Series引用 449
Neural Networks and ApplicationsOptical Systems and Laser TechnologyAdvanced Measurement and Metrology Techniques

详细信息

发表期刊/会议
DAIMI Report Series
发表日期
1990-11-01
发表年份
1990

关键词

Neural Networks and ApplicationsOptical Systems and Laser TechnologyAdvanced Measurement and Metrology Techniques

摘要

<p>A supervised learning algorithm (Scaled Conjugate Gradient, SCG) with superlinear convergence rate is introduced. The algorithm is based upon a class of optimization techniques well known in numerical analysis as the Conjugate Gradient Methods. SCG uses second order information from the neural network but requires only O(N) memory usage, where N is the number of weights in the network. The performance of SCG is benchmarked against the performance of the standard backpropagation algorithm (BP), the conjugate gradient backpropagation (CGB) and the one-step Broyden-Fletcher-Goldfarb-Shanno memoryless quasi-Newton algorithm (BFGS). SCG yields a speed-up of at least an order of magnitude relative to BP. The speed-up depends on the convergence criterion, i.e., the bigger demand for reduction in error the bigger the speed-up. SCG is fully automated including no user dependent parameters and avoids a time consuming line-search, which CGB and BFGS use in each iteration in order to determine an appropriate step size.</p><p> </p><p>Incorporating problem dependent structural information in the architecture of a neural network often lowers the overall complexity. The smaller the complexity of the neural network relative to the problem domain, the bigger the possibility that the weight space contains long ravines characterized by sharp curvature. While BP is inefficient on these ravine phenomena, it is shown that SCG handles them effectively.</p>

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