Citation:
Escanciano, J. C. (2007). Weak convergence of non-stationary multivariate marked processes with applications to martingale testing. Journal of Multivariate Analysis, 98 (7), pp. 1321-1336.
This paper establishes the weak convergence of a class of marked empirical processes of possibly nonstationary
and/or non-ergodic multivariate time series sequences under martingale conditions. The assumptions
involved are similar to those in Brown’s martingThis paper establishes the weak convergence of a class of marked empirical processes of possibly nonstationary
and/or non-ergodic multivariate time series sequences under martingale conditions. The assumptions
involved are similar to those in Brown’s martingale central limit theorem. In particular, no mixing
conditions are imposed. As an application, we propose a test statistic for the martingale hypothesis and
we derive its asymptotic null distribution. Finally, a Monte Carlo study shows that the asymptotic results
provide good approximations for small and moderate sample sizes. An application to the S&P 500 is also considered.[+][-]