Intro to Probabilistic Methods
The burn-in period refers to the initial phase in a Markov Chain Monte Carlo (MCMC) simulation where the samples generated are not yet representative of the target distribution. During this phase, the algorithm is adjusting, and the samples are often influenced by the starting values, leading to biased estimates. It's essential to discard these early samples to ensure the validity of the analysis, as they may not reflect the true behavior of the Markov chain.
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