Visit our new beta site!

neural network

From: The Columbia Encyclopedia, Sixth Edition  |  Date: 2008

neural network or neural computing, computer architecture modeled upon the human brain 's interconnected system of neurons. Neural networks imitate the brain's ability to sort out patterns and learn from trial and error, discerning and extracting the relationships that underlie the data with which it is presented. Most neural networks are software simulations run on conventional computers. In neural computers, transistor circuits serve as the neurons and variable resistors act as the interconnection between axons and dendrites (see nervous system ). A neural network on an integrated circuit , with 1,024 silicon "neurons," has also been developed. Each neuron in the network has one or more inputs and produces an output; each input has a weighting factor, which modifies the value entering the neuron. The neuron mathematically manipulates the inputs, and outputs the result. The neural network is simply neurons joined together, with the output from one neuron becoming input to others until the final output is reached. The network learns when examples (with known results) are presented to it; the weighting factors are adjusted—either through human intervention or by a programmed algorithm—to bring the final output closer to the known result.

Neural networks are good at providing very fast, very close approximations of the correct answer. Although they are not as well suited as conventional computers for performing mathematical calculations or moving and comparing alphabetic characters, neural networks excel at recognizing shapes or patterns, learning from experience, or sorting relevant data from irrelevant. Their applications can be categorized into classification, recognition and identification, assessment, monitoring and control, and forecasting and prediction. Among the tasks for which they are well suited are handwriting recognition, foreign language translation, process control, financial forecasting, medical data interpretation, artificial intelligence research, and parallel processing implementations of conventional processing tasks. In an ironic reversal, neural networks are being used to model disorders of the brain in an effort to discover better therapeutic strategies.

Bibliography: See Y. Burnod, An Adaptive Neural Network: The Cerebral Cortex (1990); J. S. Judd, Neural Network Design and the Complexity of Learning (1990); S. I. Gallant, Neural Network Learning and Expert Systems (1993); L. Medsker, Hybrid Neural Network and Expert Systems (1994); R. L. Harvey, Neural Network Principles (1994).



Author not available, NEURAL NETWORK., The Columbia Encyclopedia, Sixth Edition 2008

Related articles from HighBeam Research:

Neural-network modeling: neural-network modeling tools enable the engineer to study and analyze the complex interactions between material and process inputs with the goal of predicting final component properties.
Advanced Materials & Processes; 11/1/2005; Furrer, David Thaler, Stephen; 3110 words; Neural-network models are mathematical tools designed ... measured output values. Quite a variety of neural network models have been designed to fit a range ... application. [FIGURE 1 OMITTED] In particular, neural-network models have multiplied for manufacturing ...
Neural networks to model dynamic systems with time delays.(Statistical Data Included)
IIE Transactions; 3/1/2002; Ramirez-Beltran, Nazario D. Montes, Jaime A.; 9357 words; ... technique is combined with neural networks to detect the reaction delay ... change with a two-by-two tran sition matrix and the tracking ... time delays. They used a neural network approach to model and control ... also introduces a method for neural network design, this ...
Neural networks in ocean engineering
Ships and Offshore Structures; 1/1/2006; Jain, P; Deo, M C; 5915 words; ... The soft computing technique of neural network is being extensively used across ... It is found that, in general, neural networks provide a better alternative ... The relative advantages of the neural network schemes proposed by various investigators ...
Neural-network IC architectures define suitable applications. (integrated circuits)
EDN; 7/4/1991; Wright, Maury; 2082 words; ... MD1220 actually simulates a neural network, albeit with a parallel architecture ... continuous training simply. The Neural Semiconductor NUSU32 falls ... IC directly implements a neural network because there is a local ... difficult in the case of neural-network ICs. You can't ...
Three-step method evaluates neural networks for your application. (includes related article on seven design steps for back-propagation neural networks) (Tutorial)
EDN; 8/6/1992; Lawrence, Jeannette Andriola, Peter; 4102 words; ... available data may lead you to formulating a neural-network implementation. If the problem type fits and the data is sufficient, a neural network can do the thinking for you. Neural networks are the core of many well-known applications ...
A neural network - could it work for you?
Financial Executive; 5/1/1990; Smith, J. Clarke; 2310 words; A neural network--could it work for you? The cream of ... artificial-intelligence crop today is the neural network--systems that learn from their experiences ... living, breathing human being. Called neural networks, such artificial intelligence systems ...
Artificial neural network application to business performance with economic value added.(Manuscripts)
Academy of Information and Management Sciences Journal; 1/1/2003; Lee, Chang W.; 3315 words; ... single-layer or multi-layers networks is interpreted as an adaptive ... improved capability of the neural network model to generalize. Some ... with associative memory neural networks with the development of self-organizing feature maps that use a topology for ... optimal solution as the ...
Evaluation of an Artificial Neural Network to Predict Urea Nitrogen Appearance for Critically Ill Multiple-Trauma Patients
JPEN, Journal of Parenteral and Enteral Nutrition; 11/1/2005; Dickerson, Roland N; Mason, Darius L; Croce, Martin A; Minard, Gayle; Brown, Rex O; 4087 words; ... Computer-based simulated biologic neural network models have made significant strides ... regression model and an artificial neural network for estimating urea nitrogen appearance ... back-propagation, supervised neural network. Bias and precision of both methods ...
CONSTRUCTIVE GRADIENT NEURAL NETWORK
Neural Network World; 1/1/2005; Ondrácek, Tomás; 3666 words; ... learning phase it defines the neural network topology (the number of neurons ... near to the desired final network state. In the second learning ... algorithm to refine all the network weights. The proposal of ... Geometric representation of the neural network The often-used functional ...
Designing neural networks commands skill and savvy. (includes related articles on California Scientific Software's Brainmaker, HNC Inc.'s Explorenet 3000, Neuralware Inc.'s Neuralworks, Neural Computer Sciences' Neural Desk and Neurodynamx Inc.'s Dynamind software) (Tutorial)
EDN; 12/5/1991; Wright, Maury; 2607 words; ... COMPANIES offer relatively low-cost neural-network simulation software that runs ... gathering good data to train a neural network can require all the skill and ... you've developed as an engineer. Neural networks excel at recognizing patterns ...
Going fishing with a neural network. (use of neural network technology for predicting and trading the markets) (Trading Techniques )
Futures (Cedar Falls, Iowa); 9/1/1992; Jurik, Mark; 1500 words; Neural network technology is increasingly used by traders ... improve forecasting accuracy. Artificial neural networks, a new and upcoming technology, are ... nonlinear relationships in data. (See Neural networks: Brainy way to trade? , Futures, August ...
Stochastic Neural Networks With Applications to Nonlinear Time Series.
Journal of the American Statistical Association; 9/1/2001; LAI, TZE LEUNG WONG, SAMUEL PO-SHING; 12670 words; We consider a variant of the conventional neural network model, called the stochastic neural network, that can be used to approximate complex ... computational complexity than those for conventional neural networks. This enables us to carry out model selection ...
Neural networks provide solutions to nonlinear problems. (real-time control systems) (also includes related article on other applications for neural networks)
Mechanical Engineering-CIME; 10/1/1993; Puttre, Michael; 2516 words; ... systems is a major thrust of neural network development in engineering. Systems ... rigorous models of dynamic systems. Neural networks have been conceived as a method ... work by a process of comparison. Neural networks are saddled with an unfortunate ...
Neural-network computers.
The Futurist; 9/1/1989; 615 words; Neural-Network Computers Computer systems with self-learni ... increasingly finding their way onto the market. Neural networks, modeled after the human brain, may ... of other smart technologies. A simple neural network consists of layers of processors interconnected ...
Applying a neural network collocation method to an incompletely known dynamical system via weak constraint data assimilation
Monthly Weather Review; 8/1/2003; Liaqat, Ali; Fukuhara, Makoto; Takeda, Tatsuoki; 4544 words; ABSTRACT A method based on a neural network collocation method is proposed ... weak constraint property of the neural network collocation method is used. The ... unknown. The object function of the neural network training is composed of squared ...

See all results from premium newspaper and magazine articles, images, maps and more at HighBeam Research.

Related articles from newspapers, magazines and other sources:

A comparison of neural networks and econometric discrete dependent variable models in prediction of occupational attainment.
Journal of Academy of Business and Economics; 1/1/2004; Gavidia, Jose V. Gupta, Vipul K.; 6071 words;
Custom architectures for fuzzy and neural networks controllers.
Journal of Computer Science & Technology; 10/1/2002; Nelson, Acosta Marcelo, Tosini; 4884 words;
Using neural networks to predict MBA student success.(Master of Business Administration)
College Student Journal; 3/1/2004; Naik, Bijayananda Ragothaman, Srinivasan; 2780 words;
Classification of color textures with random field models and neural networks.
Journal of Computer Science & Technology; 10/1/2005; Hernandez, Orlando J. Cook, John Griffin, Michael De Rama, Cynthia McGovern, Michael; 4227 words;
Neural Network Control of Nonliner Discrete-Time Systems.(Brief Article)(Book Review)
SciTech Book News; 3/1/2007; 244 words;
Making the obscure more obvious.(using neural network technology to determine safety of railroad cars and track)
Railway Age; 11/1/1999; Shust, Bill Li, Dingqing Salahifar, Tulug; 1272 words;
A parallel approach for backpropagation learning of neural networks.
Journal of Computer Science & Technology; 3/1/1999; Piccoli F., Crespo, M. Gallard R., Prinsta M.; 5214 words;
A NEURAL NETWORK APPROACH TO IDENTIFYING ADOLESCENT ADJUSTMENT.(Statistical Data Included)
Adolescence; 3/22/2001; Nair, Jyotsna Nair, Satish S. Kashani, Javad H. Reid, John C. Rao, Venkatesh G.; 2930 words;
Application of artificial neural network for analysis of self-excited induction generator.
Journal of Computer Science & Technology; 10/1/2006; Khela, Raja Singh Bansal, Raj Kumar Sandhu, K.S. Goel, Ashok Kumar; 3377 words;
A General Neural Network for Processing Stimuli Known to Elicit Sexual Arousal, Disgust, or Amusement.(Section II: Clinical Sexology)(Brief Article)
The Journal of Sex Research; 2/1/2006; 246 words;
Browse by alphabet: