Physics – High Energy Physics – High Energy Physics - Experiment
Scientific paper
1995-01-18
Nucl.Instrum.Meth.A361:290-296,1995
Physics
High Energy Physics
High Energy Physics - Experiment
11 pages, latex, 3 figures appended as uuencoded file
Scientific paper
10.1016/0168-9002(95)00247-2
Feedforward neural networks with error backpropagation (FFBP) are widely applied to pattern recognition. One general problem encountered with this type of neural networks is the uncertainty, whether the minimization procedure has converged to a global minimum of the cost function. To overcome this problem a novel approach to minimize the error function is presented. It allows to monitor the approach to the global minimum and as an outcome several ambiguities related to the choice of free parameters of the minimization procedure are removed.
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