The Markov-quantile process attached to a family of Marginals
Charles Boubel (IRMA), Nicolas Juillet (IRMA)

TL;DR
This paper introduces the Markov-quantile process, a novel Markov process with given marginals derived from quantile processes, applicable without regularity assumptions, and connects to stochastic order, optimal transport, and the continuity equation.
Contribution
It constructs a unique Markov process from a family of marginals using order arguments, extending quantile process concepts to continuous parameters without regularity constraints.
Findings
Existence of a unique Markov process with specified marginals.
The process has increasing trajectories when marginals are stochastically ordered.
Connection to optimal transport and the continuity equation in Wasserstein space.
Abstract
Let = (t)tR be any 1-parameter family of probability measures on R. Its quantile process (Gt)tR : ]0, 1[ RR, given by Gt() = inf{x R : t(]--, x]) > }, is not Markov in general. We modify it to build the Markov process we call "Markov-quantile".We first describe the discrete analogue: if (n)nZ is a family of probability measures on R, a Markov process Y = (Yn)nZ such that Law(Yn) = n is given by the data of its couplings from n to n + 1, i.e. Law((Yn, Yn+1)), and the process Y is the inhomogeneous Markov chain having those couplings as transitions. Therefore, there is a canonical Markov process with marginals n and as similar as possible to the quantile process: the chain whose transitions are the quantile couplings. We show that an analogous process exists for a continuous parameter t: there…
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Taxonomy
TopicsBayesian Methods and Mixture Models · Markov Chains and Monte Carlo Methods · Stochastic processes and financial applications
