Title :
Deterministic design for neural network learning: an approach based on discrepancy
Author :
Cervellera, Cristiano ; Muselli, Marco
Author_Institution :
Inst. di Studi sui Sistemi Intelligenti per l´´Automazione, Genova, Italy
fDate :
5/1/2004 12:00:00 AM
Abstract :
The general problem of reconstructing an unknown function from a finite collection of samples is considered, in case the position of each input vector in the training set is not fixed beforehand but is part of the learning process. In particular, the consistency of the empirical risk minimization (ERM) principle is analyzed, when the points in the input space are generated by employing a purely deterministic algorithm (deterministic learning). When the output generation is not subject to noise, classical number-theoretic results, involving discrepancy and variation, enable the establishment of a sufficient condition for the consistency of the ERM principle. In addition, the adoption of low-discrepancy sequences enables the achievement of a learning rate of O(1/L), with L being the size of the training set. An extension to the noisy case is provided, which shows that the good properties of deterministic learning are preserved, if the level of noise at the output is not high. Simulation results confirm the validity of the proposed approach.
Keywords :
deterministic algorithms; learning (artificial intelligence); neural nets; deterministic algorithm; discrepancy approach; empirical risk minimization principle; learning process; learning rate; neural network learning; noise level; training set; unknown function reconstruction; Algorithm design and analysis; Neural networks; Noise generators; Noise level; Probability density function; Risk analysis; Risk management; Sufficient conditions; Telecommunication computing; Testing; Artificial Intelligence; Neural Networks (Computer);
Journal_Title :
Neural Networks, IEEE Transactions on
DOI :
10.1109/TNN.2004.824413