نتایج جستجو برای: backpropagation neural network

تعداد نتایج: 833396  

2001
JingTao YAO

Traditional backpropagation neural networks training criterion is based on goodness-of-fit which is also the most popular criterion forecasting. How ever, in the context of financial time series forecasting, we are not only concerned at how good the forecasts fit their target. In order to increase the forecastability in terms of profit earning, we propose a profit based adjusted weight factor f...

Journal: :CoRR 2012
Sudarshan Nandy Partha Pratim Sarkar Achintya Das

ABSTRACT Optimization algorithms are normally influenced by metaheuristic approach. In recent years several hybrid methods for optimization are developed to find out a better solution. The proposed work using meta-heuristic Nature Inspired algorithm is applied with back-propagation method to train a feedforward neural network. Firefly algorithm is a nature inspired meta-heuristic algorithm, and...

1999
Martin Mandischer Hannes Geyer Peter Ulbig

In this paper we report results for the prediction of thermodynamic properties based on neural networks, evolutionary algorithms and a combination of them. We compare backpropagation trained networks and evolution strategy trained networks with two physical models. Experimental data for the enthalpy of vaporization were taken from the literature in our investigation. The input information for b...

1996
Chung-Yao Wen

In this paper, we present a novel neural network architecture called M-net, which exploits the don't-care information in training multilayer feedforward neural networks. Our method takes advantage of the user's prior knowledge as well as the neural network's ability to learn from examples. The user's prior knowledge is encoded in the form of don't-care inputs to reduce the number of training pa...

Journal: :CoRR 2018
Varun Ranganathan S. Natarajan

The backpropagation algorithm, which had been originally introduced in the 1970s, is the workhorse of learning in neural networks. This backpropagation algorithm makes use of the famous machine learning algorithm known as Gradient Descent, which is a first-order iterative optimization algorithm for finding the minimum of a function. To find a local minimum of a function using gradient descent, ...

1998
Martin Mandischer Hannes Geyer Peter Ulbig

In this paper 1 we report results for the prediction of thermo-dynamic properties based on neural networks, evolutionary algorithms and a combination of them. We compare backpropagation trained networks and evolution strategy trained networks with two physical models. Experimental data for the enthalpy of vaporization were taken from the literature in our investigation. The input information fo...

Journal: :Intelligent Automation & Soft Computing 2007
Pedro Ponce Jaime J. Rodríguez Rivas

This paper shows a small structured neural network speed estimator for induction motors using the direct torque control (DTC) method. The neural network was trained using the backpropagation technique. The small structure reduces off line training and processing times. The overall algorithm based on a conventional DTC close loop is simple, and the results are validated through simulation and im...

1995
John Wawrzynek Krste Asanovic Brian Kingsbury James Beck David Johnson Nelson Morgan

We report on our development of a high-performance system for neural network and other signal processing applications. We have designed and implemented a vector microprocessor and packaged it as an attached processor for a conventional workstation. We present performance comparisons with commercial workstations on neural network backpropagation training. The SPERT-II system demonstrates signifi...

Journal: :IJEBM 2005
Yi-Chung Hu Fang-Mei Tseng

Bankruptcy prediction is an important classification problem for a business, and has become a major concern of managers. In this paper, two well-known backpropagation neural network models serving as data mining tools for classification problems are employed to perform bankruptcy forecasting: one is the backpropagation multi-layer perceptron, and the other is the radial basis function network. ...

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