نتایج جستجو برای: multilayer perceptrons

تعداد نتایج: 20290  

Journal: :The Journal of the Korea Contents Association 2010

2000
Hiroyuki TAKIZAWA Taira NAKAJIMA Hiroaki KOBAYASHI Tadao NAKAMURA

A multilayer perceptron is usually considered a passive learner that only receives given training data. However, if a multilayer perceptron actively gathers training data that resolve its uncertainty about a problem being learnt, sufficiently accurate classification is attained with fewer training data. Recently, such active learning has been receiving an increasing interest. In this paper, we ...

Journal: :IEEE Transactions on Pattern Analysis and Machine Intelligence 1990

Journal: :The Journal of the Korea Contents Association 2009

Journal: :CoRR 2008
Fabrice Rossi Brieuc Conan-Guez

In some real world situations, linear models are not sufficient to represent accurately complex relations between input variables and output variables of a studied system. Multilayer Perceptrons are one of the most successful non-linear regression tool but they are unfortunately restricted to inputs and outputs that belong to a normed vector space. In this chapter, we propose a general recoding...

1990
Dennis W. Ruck Steven K. Rogers Matthew Kabrisky

The problem of selecting the best set of features for target recognition using a multilayer perceptron is addressed in this paper. A technique has been developed which analyzes the weights in a multilayer perceptron to determine which features the network finds important and which are unimportant. A brief introduction to the use of multilayer perceptrons for classification and the training rule...

1997
P. Moerland E. Fiesler I. Saxena

All-optical multilayer perceptrons diier in various ways from the ideal neural network model. Examples are the use of non-ideal activation functions which are truncated, asymmetric, and have a non-standard gain, restriction of the network parameters to non-negative values, and the limited accuracy of the weights. In this paper, a backpropagation-based learning rule is presented that compensates...

Journal: :Neurocomputing 2007
Madalina Olteanu Joseph Rynkiewicz

BIC criterion is widely used by the neural-network community for model selection tasks, although its convergence properties are not always theoretically established. In this paper we will focus on estimating the number of components in a mixture of multilayer perceptrons and proving the convergence of the BIC criterion in this frame. The penalized marginal-likelihood for mixture models and hidd...

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