Unlock: Burn-in and Convergence Diagnostics
Burn-in is only the first filter. Modern MCMC trust comes from split rank-normalized R-hat, bulk and tail ESS, trace behavior, and sampler-specific warnings like divergences.
213 Prerequisites0 Mastered0 Working169 Gaps
Prerequisite mastery21%
Recommended probe
Realizability Assumption is your weakest prerequisite with available questions. You haven't been assessed on this topic yet.
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