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Bayesian inference / Statistical theory / Regression analysis / Normal distribution / Loss function / Gamma distribution / Statistical hypothesis testing / Gaussian process / Chi-squared distribution / Statistics / Estimation theory / Econometrics
Date: 2015-01-22 04:54:51
Bayesian inference
Statistical theory
Regression analysis
Normal distribution
Loss function
Gamma distribution
Statistical hypothesis testing
Gaussian process
Chi-squared distribution
Statistics
Estimation theory
Econometrics

Gaussian Processes for Bayesian hypothesis tests on regression functions Alessio Benavoli Francesca Mangili

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