Prediction Error Estimation Under Bregman Divergence for Non-Parametric Regression and Classification
Article first published online: 24 APR 2008
DOI: 10.1111/j.1467-9469.2008.00593.x
© Board of the Foundation of the Scandinavian Journal of Statistics 2008
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How to Cite
ZHANG, C. (2008), Prediction Error Estimation Under Bregman Divergence for Non-Parametric Regression and Classification. Scandinavian Journal of Statistics, 35: 496–523. doi: 10.1111/j.1467-9469.2008.00593.x
Publication History
- Issue published online: 22 AUG 2008
- Article first published online: 24 APR 2008
- Received March 2007, in final form December 2007
- Abstract
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Keywords:
- cross-validation;
- exponential family;
- generalized varying-coefficient model;
- local likelihood;
- loss function;
- prediction error
Abstract. Prediction error is critical to assess model fit and evaluate model prediction. We propose the cross-validation (CV) and approximated CV methods for estimating prediction error under the Bregman divergence (BD), which embeds nearly all of the commonly used loss functions in the regression, classification procedures and machine learning literature. The approximated CV formulas are analytically derived, which facilitate fast estimation of prediction error under BD. We then study a data-driven optimal bandwidth selector for local-likelihood estimation that minimizes the overall prediction error or equivalently the covariance penalty. It is shown that the covariance penalty and CV methods converge to the same mean-prediction-error-criterion. We also propose a lower-bound scheme for computing the local logistic regression estimates and demonstrate that the algorithm monotonically enhances the target local likelihood and converges. The idea and methods are extended to the generalized varying-coefficient models and additive models.

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