An adaptive algorithm for function minimization based on conjugate gradients for the problem of finding linear discriminant functions in pattern classification is developed. The algorithm converges to a solution in both consistent and inconsistent cases in a finite number of steps on several datasets. We have applied our algorithm and compared its performance with the adaptive versions of the Ho-Kashyap procedure (AHK). We have also compared the batch version of the algorithm with the batch mode AHK. The results show that the proposed adaptive conjugate gradient algorithm (CGA) gives vastly superior performance in terms of both the number of training cycles required and the classification rate. Also, the batch mode CGA performs much better ...
In recent years pattern recognition has evolved to a mature discipline and has been successfully app...
The convolution neural network (CNN) has achieved state-of-the-art performance in many computer visi...
The performance of the modified adaptive conjugate gradient (CG) algorithms based on the iterative C...
The conjugate gradient optimization algorithm is combined with the modified back propagation algorit...
Amodified form of the partial conjugate gradient algorithm is presented which uses a gradient aver-a...
The conjugate gradient optimization algorithm usually used for nonlinear least squares is presented ...
A supervised learning algorithm (Scaled Conjugate Gradient, SCG) with superlinear convergence rate i...
Recently, an adaptive algorithm with desirable properties and useful applications, namely the Optimu...
Recurrent networks constitute an elegant way of increasing the capacity of feedforward networks to d...
Recurrent networks constitute an elegant way of increasing the capacity of feedforward networks to d...
Recently, deep learning based techniques have garnered significant interest and popularity in a vari...
Linear classifiers, that is, classifiers based on linear discriminant functions, are formally intro...
This thesis addresses the issue of applying a "globally" convergent optimization scheme to the train...
Since the discovery of the back-propagation method, many modified and new algorithms have been propo...
Abstract—Conjugate gradient methods constitute an excellent choice for efficiently training large ne...
In recent years pattern recognition has evolved to a mature discipline and has been successfully app...
The convolution neural network (CNN) has achieved state-of-the-art performance in many computer visi...
The performance of the modified adaptive conjugate gradient (CG) algorithms based on the iterative C...
The conjugate gradient optimization algorithm is combined with the modified back propagation algorit...
Amodified form of the partial conjugate gradient algorithm is presented which uses a gradient aver-a...
The conjugate gradient optimization algorithm usually used for nonlinear least squares is presented ...
A supervised learning algorithm (Scaled Conjugate Gradient, SCG) with superlinear convergence rate i...
Recently, an adaptive algorithm with desirable properties and useful applications, namely the Optimu...
Recurrent networks constitute an elegant way of increasing the capacity of feedforward networks to d...
Recurrent networks constitute an elegant way of increasing the capacity of feedforward networks to d...
Recently, deep learning based techniques have garnered significant interest and popularity in a vari...
Linear classifiers, that is, classifiers based on linear discriminant functions, are formally intro...
This thesis addresses the issue of applying a "globally" convergent optimization scheme to the train...
Since the discovery of the back-propagation method, many modified and new algorithms have been propo...
Abstract—Conjugate gradient methods constitute an excellent choice for efficiently training large ne...
In recent years pattern recognition has evolved to a mature discipline and has been successfully app...
The convolution neural network (CNN) has achieved state-of-the-art performance in many computer visi...
The performance of the modified adaptive conjugate gradient (CG) algorithms based on the iterative C...