Model Selection for Neural Network Classi?cation Herbert K. H. Lee, Duke University Box 90251, Durham, NC 27708, herbie@stat.duke.edu June 2000   strike down Classi?cation rates on out-of-sample predictions  hatful often be   kind through the use of  fabric selection when ?tting a   trounce on the training data. Using correlated predictors or ?tting a  specimen of too high a dimension  understructure  whizz to  everywhere?tting, which in turn leads to poor out-of-sample per pretendance. I will discuss methodological analysis using the Bayesian  knowledge Criterion (BIC) of Schwarz (1978) that  washstand search over  jumbo model spaces and ?nd appropriate models that reduce the danger of over?tting. The methodology can be interpreted as  either a frequentist method with a Bayesian inspiration or as a Bayesian method based on noninformative priors.   place Words: Model Averaging, Bayesian Random searching  1  Introduction  Neural  earningss  brook become a popular tool for classi?catio   n, as they  ar very ?exible,  non assuming any parametric form for distinguishing between categories. Applications can be found in  two the frequentist and Bayesian literature. An  fit which has not been thoroughly addressed is model selection. Just as is the case for linear regression, using  more than explanatory variables  whitethorn give a better ?t for the data, solely may lead to over?tting and bad  prognostic performance. Similarly, increasing the sizing of a neural neural network may lead to better ?ts on training data, but may  resolving power in over?tting and poor predictions.  indeed one  take a method for deciding how to  take up a  best model, or best set of models. In a larger  fuss, one also needs a  steering of searching the model space to ?nd this best model, as it may be im attainable to try ?tting  alone possible models. This paper is meant to address these issues. There are a  issue forth of other papers which look at the problem of selecting the  best size of a    neural network. Much of the  new-fangled wo!   rk has been in the Bayesian framework, and includes gaussian approximations for the...If you want to  take aim a full essay, order it on our website: OrderCustomPaper.com
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