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Bayesian inference is a method of statistical inference that relies on treating the model parameters as random variables and applying Bayes' theorem to deduce subjective probability statements about the parameters or hypotheses, conditional on the observed dataset.
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Importance of parameterization choice in determining predictive quality
Given data $D$ you assume a predictive model parametrized by some parameters. You may then seek to do MLE or MAP estimate to determine those parameters. If you do MLE, then only likelihood function is …
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Difference between Bayesian Optimization and Bayesian Statistical Inference [closed]
Can someone give a lucid explanation pointing out how are Bayesian Optimization and Bayesian Statistical Inference different to each other? … I understand Bayesian Optimization generally refers to Gaussian Process and fitting GPs on your data. …
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applied papers on probabilistic generative models and inference engines
I am looking for applications papers where people choose some task on which they will do Bayesian inferencing and graphical modeling, and then build an inference engine to infer latent parameters. …