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Quantitative Convergence Rates for Stochastically Monotone Markov Chains
Published 30 Sep 2024 in math.PR | (2409.19874v1)
Abstract: For Markov chains and Markov processes exhibiting a form of stochastic monotonicity (larger states shift up transition probabilities in terms of stochastic dominance), stability and ergodicity results can be obtained using order-theoretic mixing conditions. We complement these results by providing quantitative bounds on deviations between distributions. We also show that well-known total variation bounds can be recovered as a special case.
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