Currently displaying 1 – 5 of 5

Showing per page

Order by Relevance | Title | Year of publication

Coupling a stochastic approximation version of EM with an MCMC procedure

Estelle KuhnMarc Lavielle — 2004

ESAIM: Probability and Statistics

The stochastic approximation version of EM (SAEM) proposed by Delyon et al. (1999) is a powerful alternative to EM when the E-step is intractable. Convergence of SAEM toward a maximum of the observed likelihood is established when the unobserved data are simulated at each iteration under the conditional distribution. We show that this very restrictive assumption can be weakened. Indeed, the results of Benveniste et al. for stochastic approximation with markovian perturbations are used to establish...

Random thresholds for linear model selection

Marc LavielleCarenne Ludeña — 2008

ESAIM: Probability and Statistics

A method is introduced to select the significant or non null mean terms among a collection of independent random variables. As an application we consider the problem of recovering the significant coefficients in non ordered model selection. The method is based on a convenient random centering of the partial sums of the ordered observations. Based on -statistics methods we show consistency of the proposed estimator. An extension to unknown parametric distributions is considered. Simulated examples...

Coupling a stochastic approximation version of EM with an MCMC procedure

Estelle KuhnMarc Lavielle — 2010

ESAIM: Probability and Statistics

The stochastic approximation version of EM (SAEM) proposed by Delyon (1999) is a powerful alternative to EM when the E-step is intractable. Convergence of SAEM toward a maximum of the observed likelihood is established when the unobserved data are simulated at each iteration under the conditional distribution. We show that this very restrictive assumption can be weakened. Indeed, the results of Benveniste for stochastic approximation with Markovian perturbations are used to establish the convergence of...

Sharp large deviations for Gaussian quadratic forms with applications

Bernard BercuFabrice GamboaMarc Lavielle — 2010

ESAIM: Probability and Statistics

Under regularity assumptions, we establish a sharp large deviation principle for Hermitian quadratic forms of stationary Gaussian processes. Our result is similar to the well-known Bahadur-Rao theorem [2] on the sample mean. We also provide several examples of application such as the sharp large deviation properties of the Neyman-Pearson likelihood ratio test, of the sum of squares, of the Yule-Walker estimator of the parameter of a stable autoregressive Gaussian process, and finally of the empirical...

Page 1

Download Results (CSV)