Suppose we observe an ergodic Markov chain on the real line, with a parametric model for the autoregression function, i.e. the conditional mean of the transition distribution. If one specifies, in addition, a parametric model for the conditional variance, one can define a simple estimator for the parameter, the maximum quasi-likelihood estimator. It is robust against misspecification of the conditional variance, but not efficient. We construct an estimator which is adaptive in the sense that it is efficient if the conditional variance is misspecified, and asymptotically as good as the maximum quasi-likelihood estimator if the conditional variance is correctly specified. The adaptive estimator is a weighted nonlinear least squares estimator,...
In this paper for the first time the adaptive efficient estimation problem for nonparametric autoreg...
Stable autoregressive models of known finite order are considered with martingale differences errors...
In this paper, we study the problem of estimating a Markov chain X (signal) from its noisy partial i...
Consider an ergodic Markov chain on the real line, with parametric models for the conditional mean a...
International audienceThis paper deals with the estimation of a autoregression function at a given p...
Consider a controlled Markov chain whose transition probabilities depend upon an unknown parameter a...
This work is devoted to analyzing adaptive filtering algorithms with the use of sign-regressor for ra...
This work is devoted to analyzing adaptive filtering algorithms with the use of sign-regressor for r...
Stable autoregressive models of known finite order are considered with martingale differ-ences error...
We characterize efficient estimators for the expectation of a function under the invariant distribut...
Abstract. This paper considers Bayesian parameter estimation and an associated adaptive control sche...
We constuct a sequential adaptive procedure for estimating the autoregressive function at a given po...
We consider a problem of estimating a conditional variance function of an autoregressive process. A ...
We focus on the linear model with conditional heteroskedasticity of unknown form. "Adaptive" estimat...
Consider a countable state controlled Markov chain whose transition probability is specified up to a...
In this paper for the first time the adaptive efficient estimation problem for nonparametric autoreg...
Stable autoregressive models of known finite order are considered with martingale differences errors...
In this paper, we study the problem of estimating a Markov chain X (signal) from its noisy partial i...
Consider an ergodic Markov chain on the real line, with parametric models for the conditional mean a...
International audienceThis paper deals with the estimation of a autoregression function at a given p...
Consider a controlled Markov chain whose transition probabilities depend upon an unknown parameter a...
This work is devoted to analyzing adaptive filtering algorithms with the use of sign-regressor for ra...
This work is devoted to analyzing adaptive filtering algorithms with the use of sign-regressor for r...
Stable autoregressive models of known finite order are considered with martingale differ-ences error...
We characterize efficient estimators for the expectation of a function under the invariant distribut...
Abstract. This paper considers Bayesian parameter estimation and an associated adaptive control sche...
We constuct a sequential adaptive procedure for estimating the autoregressive function at a given po...
We consider a problem of estimating a conditional variance function of an autoregressive process. A ...
We focus on the linear model with conditional heteroskedasticity of unknown form. "Adaptive" estimat...
Consider a countable state controlled Markov chain whose transition probability is specified up to a...
In this paper for the first time the adaptive efficient estimation problem for nonparametric autoreg...
Stable autoregressive models of known finite order are considered with martingale differences errors...
In this paper, we study the problem of estimating a Markov chain X (signal) from its noisy partial i...