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Statistical theory / Econometrics / Bayesian inference / Bayesian linear regression / Polynomial regression / Linear regression / Statistical inference / Normal distribution / Conjugate prior / Statistics / Bayesian statistics / Regression analysis
Date: 2013-03-22 00:17:04
Statistical theory
Econometrics
Bayesian inference
Bayesian linear regression
Polynomial regression
Linear regression
Statistical inference
Normal distribution
Conjugate prior
Statistics
Bayesian statistics
Regression analysis

Simplicity Bias in the Estimation of Causal Functions Daniel R. Little ([removed]) Richard M. Shiffrin ([removed]) Department of Psychological and Brain Sciences, Indiana University 1101 E. 10th St,

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Source URL: www.psych.unimelb.edu.au

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