17 research outputs found
Central limit theorems for martingales-II: convergence in the weak dual topology
A convergence theorem for martingales with c\`adl\`ag trajectories (right
continuous with left limits everywhere) is obtained in the sense of the weak
dual topology on Hilbert space, under conditions that are much weaker than
those required for any of the usual Skorohod topologies. Examples are provided
to show that these conditions are also very easy to check and yield useful
asymptotic results, especially when the limit is a mixture of stochastic
processes with discontinuities
Tests of independence and randomness for arbitrary data using copula-based covariances
In this article, we study tests of independence for data with arbitrary
distributions in the non-serial case, i.e., for independent and identically
distributed random vectors, as well as in the serial case, i.e., for time
series. These tests are derived from copula-based covariances and their
multivariate extensions using M\"obius transforms. We find the asymptotic
distributions of the statistics under the null hypothesis of independence or
randomness, as well as under contiguous alternatives. This enables us to find
out locally most powerful test statistics for some alternatives, whatever the
margins. Numerical experiments are performed for Wald's type combinations of
these statistics to assess the finite sample performance
On factor copula-based mixed regression models
In this article, a copula-based method for mixed regression models is
proposed, where the conditional distribution of the response variable, given
covariates, is modelled by a parametric family of continuous or discrete
distributions, and the effect of a common latent variable pertaining to a
cluster is modelled with a factor copula. We show how to estimate the
parameters of the copula and the parameters of the margins, and we find the
asymptotic behaviour of the estimation errors. Numerical experiments are
performed to assess the precision of the estimators for finite samples. An
example of an application is given using COVID-19 vaccination hesitancy from
several countries. Computations are based on R package CopulaGAMM
Identifiability and inference for copula-based semiparametric models for random vectors with arbitrary marginal distributions
In this paper, we study the identifiability and the estimation of the
parameters of a copula-based multivariate model when the margins are unknown
and are arbitrary, meaning that they can be continuous, discrete, or mixtures
of continuous and discrete. When at least one margin is not continuous, the
range of values determining the copula is not the entire unit square and this
situation could lead to identifiability issues that are discussed here. Next,
we propose estimation methods when the margins are unknown and arbitrary, using
pseudo log-likelihood adapted to the case of discontinuities. In view of
applications to large data sets, we also propose a pairwise composite pseudo
log-likelihood. These methodologies can also be easily modified to cover the
case of parametric margins. One of the main theoretical result is an extension
to arbitrary distributions of known convergence results of rank-based
statistics when the margins are continuous. As a by-product, under smoothness
assumptions, we obtain that the asymptotic distribution of the estimation
errors of our estimators are Gaussian. Finally, numerical experiments are
presented to assess the finite sample performance of the estimators, and the
usefulness of the proposed methodologies is illustrated with a copula-based
regression model for hydrological data. The proposed estimation is implemented
in the R package CopulaInference, together with a function for checking
identifiability.Comment: 5 figure