Data Science Statistics
The burn-in period is the initial phase in a Markov Chain Monte Carlo (MCMC) simulation where the algorithm transitions from its starting state to a distribution that closely resembles the target distribution. During this phase, the samples generated may not be representative, and thus, they are often discarded to ensure that subsequent samples provide a more accurate estimation of the desired statistical properties.
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