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Wiley InterScience | ||||||||||||||
![]() Journal of the Royal Statistical Society: Series B (Statistical Methodology)Volume 70 Issue 1, Pages 95 - 118 Published Online: 2 Nov 2007 © 2010 The Royal Statistical Society and Blackwell Publishing Ltd Published on behalf of the Royal Statistical Society
Abstract | References | Full Text: HTML, PDF (Size: 918K) | Related Articles | Citation Tracking Model selection in high dimensions: a quadratic-risk-based approach Copyright 2008 Royal Statistical Society KEYWORDS Global comparison of models • High dimensional data • Mixture models • Model selection • Quadratic distance • Quadratic risk • Spectral degrees of freedom ABSTRACTSummary. We propose a general class of risk measures which can be used for data-based evaluation of parametric models. The loss function is defined as the generalized quadratic distance between the true density and the model proposed. These distances are characterized by a simple quadratic form structure that is adaptable through the choice of a non-negative definite kernel and a bandwidth parameter. Using asymptotic results for the quadratic distances we build a quick-to-compute approximation for the risk function. Its derivation is analogous to the Akaike information criterion but, unlike the Akaike information criterion, the quadratic risk is a global comparison tool. The method does not require resampling, which is a great advantage when point estimators are expensive to compute. The method is illustrated by using the problem of selecting the number of components in a mixture model, where it is shown that, by using an appropriate kernel, the method is computationally straightforward in arbitrarily high data dimensions. In this same context it is shown that the method has some clear advantages over the Akaike information criterion and Bayesian information criterion. [Received June 2006. Revised August 2007] |
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![]() | Significance |
Try to forecast the results of 10 different events, some sporting, some cultural, some just odd, that will take place between May and July 2010. Have Fun! | |