In this paper we introduce the concept of \textit{conic martingales}. This class refers to stochastic processes having the martingale property, but that evolve within given (possibly time-dependent) boundaries. We first review some results about the martingale property of solution to driftless stochastic differential equations. We then provide a simple way to construct and handle such processes. Specific attention is paid to martingales in $[0,1]$. One of these martingales proves to be analytically tractable. It is shown that up to shifting and rescaling constants, it is the only martingale (with the trivial constant, Brownian motion and Geometric Brownian motion) having a separable diffusion coefficient $\sigma(t,y)=g(t)h(y)$ and that can be obtained via a time-homogeneous mapping of \textit{Gaussian diffusions}. The approach is exemplified by modeling stochastic conditional survival probabilities in the univariate and bivariate cases.
UCLouvainSSH/IMMAQ/CORE-Center for operations research and econometrics
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Jeanblanc, M., & Vrins, F. (2018). Conic martingales from Stochastic integrals. Mathematical Finance, 28(2), 516-535. https://doi.org/10.1111/mafi.12147 (Original work published 2018)