2003
JMLR
JMLR 2003
An Approximate Analytical Approach to Resampling Averages
Abstract
Using a novel reformulation, we develop a framework to compute approximate resampling data averages analytically. The method avoids multiple retraining of statistical models on the samples. Our approach uses a combination of the replica "trick" of statistical physics and the TAP approach for approximate Bayesian inference. We demonstrate our approach on regression with Gaussian processes. A comparison with averages obtained by Monte-Carlo sampling shows that our method achieves good accuracy. [abs] [ pdf ][ ps.gz ][ ps ]
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— Variational Inference
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Trend Setter
— Bayesian Inference
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— monte carlo sampling
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— bayesian inference
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