Bayesian Information Criteria - DIC and WAIC
We chat about the struggles of nailing down effective parameters and discuss conceptual and practical differences between Deviance Information Criterion (DIC) and Watanabe-Akaike Information Criterion (WAIC). We finish with a brief demo in R.

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Multilevel Logistic Regression and Pooling

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Bayesian Multilevel Models - Random Slopes

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The French Do Not Care About Work

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Gil Strang's Final 18.06 Linear Algebra Lecture

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Hamiltonian Monte Carlo

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Image Lab Software: Densitometric Analysis of Gels and Western Blots

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The Hard Fall of Porsche

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Frequentist vs Bayesian and Introducing Priors

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The Passage of Time and the Meaning of Life | Sean Carroll

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Why Money, Success, and Pleasure Aren’t Enough

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John Mearsheimer & Sergey Karaganov: Atomschlag auf Europa zur Wiederherstellung der Abschreckung

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Introduction to Bayesian GLMs with Poisson

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MCMC convergence in perfect case

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Bayesian zero-inflated models

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How Dopamine & Serotonin Shape Decisions, Motivation & Learning | Dr. Read Montague

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Bayesian Modeling with R and Stan (Reupload)

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ACLS Drugs Review with Nurse Eunice 📚💉

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Something is jamming GPS over Europe. Here's what we found

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What do tech pioneers think about the AI revolution? - The Engineers, BBC World Service

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