Publisher's Synopsis
"Elements of Artificial Neural Networks" provides a general introduction, focusing on a broad range of algorithms, for students and others who want to "use" neural networks rather than simply study them.;The authors describe most of the basic neural network models (with several detailed solved examples) and discuss the rationale and advantages of the models, as well as their limitations. The approach is requires very little mathematical or technical background. Written from a computer science and statistics point of view, the text stresses links to contiguous fields and may serve as a first course for students in economics and management.;The opening chapter sets the stage, presenting the basic concepts in a clear and objective way and tackling important - yet rarely addressed - questions related to the use of neural networks in practical situations. Subsequent chapters on supervised learning (single layer and multilayer networks), unsupervised learning and associative models are structured around classes of problems to which networks can be applied. Applications are discussed along with the algorithms. A separate chapter takes up optimization methods.;The most frequently used algorithms, such as backpropagation, are introduced early on, right after perceptrons, so that these can form the basis for initiating course projects. Algorithms published as late as 1995 are also included. All of the algorithms are presented using block-structured pseudo-code, and exercises are provided throughout. The book is accompanied by software implementing many commonly used neural network algorithms.