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Titlebook: Artificial Neural Networks - ICANN 96; 6th International Co Christoph Malsburg,Werner Seelen,Bernhard Sendhoff Conference proceedings 1996

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期刊全称Artificial Neural Networks - ICANN 96
期刊简称6th International Co
影响因子2023Christoph Malsburg,Werner Seelen,Bernhard Sendhoff
视频video
学科分类Lecture Notes in Computer Science
图书封面Titlebook: Artificial Neural Networks - ICANN 96; 6th International Co Christoph Malsburg,Werner Seelen,Bernhard Sendhoff Conference proceedings 1996
影响因子This book constitutes the refereed proceedings of the sixth International Conference on Artificial Neural Networks - ICANN 96, held in Bochum, Germany in July 1996..The 145 papers included were carefully selected from numerous submissions on the basis of at least three reviews; also included are abstracts of the six invited plenary talks. All in all, the set of papers presented reflects the state of the art in the field of ANNs. Among the topics and areas covered are a broad spectrum of theoretical aspects, applications in various fields, sensory processing, cognitive science and AI, implementations, and neurobiology.
Pindex Conference proceedings 1996
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Autoassociative memory with high storage capacity,y with the number of inputs per neuron is far greater than the linear growth in the famous Hopfield network [2]. This paper shows that the GNU attains an even higher capacity with the use of pyramids of neurons instead of single neurons as its nodes. The paper also shows that the storage capacity/co
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Bayesian inference of noise levels in regression,puts, together with additive Gaussian noise having constant variance. The use of maximum likelihood to train such models then corresponds to the minimization of a sum-of-squares error function. In many applications a more realistic model would allow the noise variance itself to depend on the input v
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Complexity reduction in probabilistic neural networks,tionally prohibitive, as all training data need to be stored and each individual training vector gives rise to a new term of the estimate. Given an original training sample of size . in a .-dimensional space, a simple binned kernel estimate with .+4) terms can be shown to attain an estimation accura
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Regularization by early stopping in single layer perceptron training,scriminant function. On the way between these two classifiers one has a regularized discriminant analysis. That is equivalent to the “weight decay” regularization term added to the cost function. Thus early stopping plays a role of regularization of the network.
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