Title of article :
A new class of quasi-Newtonian methods for optimal learning in MLP-networks
Author/Authors :
A.، Bortoletti, نويسنده , , C.، Di Fiore, نويسنده , , S.، Fanelli, نويسنده , , P.، Zellini, نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2003
Pages :
-262
From page :
263
To page :
0
Abstract :
In this paper, we present a new class of quasi-Newton methods for an effective learning in large multilayer perceptron (MLP)-networks. The algorithms introduced in this work, named LQN, utilize an iterative scheme of a generalized BFGS-type method, involving a suitable family of matrix algebras L. The main advantages of these innovative methods are based upon the fact that they have an O(nlogn) complexity per step and that they require O(n) memory allocations. Numerical experiences, performed on a set of standard benchmarks of MLP-networks, show the competitivity of the LQN methods, especially for large values of n.
Keywords :
Use of global and time-dependent local dominance rules to improve the neighborhood structure of the search space , Exploration capability of the genetic algorithm , Effectiveness of the algorithm
Journal title :
IEEE TRANSACTIONS ON NEURAL NETWORKS
Serial Year :
2003
Journal title :
IEEE TRANSACTIONS ON NEURAL NETWORKS
Record number :
62808
Link To Document :
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