Title of article :
Improved sign-based learning algorithm derived by the composite nonlinear Jacobi process
Author/Authors :
Anastasiadis، نويسنده , , Aristoklis D. and Magoulas، نويسنده , , George D. and Vrahatis، نويسنده , , Michael N.، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2006
Abstract :
In this paper a globally convergent first-order training algorithm is proposed that uses sign-based information of the batch error measure in the framework of the nonlinear Jacobi process. This approach allows us to equip the recently proposed Jacobi–Rprop method with the global convergence property, i.e. convergence to a local minimizer from any initial starting point. We also propose a strategy that ensures the search direction of the globally convergent Jacobi–Rprop is a descent one. The behaviour of the algorithm is empirically investigated in eight benchmark problems. Simulation results verify that there are indeed improvements on the convergence success of the algorithm.
Keywords :
Nonlinear iterative methods , Pattern classification , Convergence analysis , Feedforward neural networks , global convergence , Nonlinear Jacobi , Supervised learning
Journal title :
Journal of Computational and Applied Mathematics
Journal title :
Journal of Computational and Applied Mathematics