In this study, robust nonparametric spectral estimation methods for non-Gaussian environments are proposed. For this aim, the autocorrelation function estimator obtained from sample spatial sign covariance matrix is used together with classical nonparametric spectral estimation methods such as periodogram and Blackman-Tukey. Performances of classical spectral estimation methods and robust methods suggested in this study are compared by applying them to one Gaussian process and one non-Gaussian heavy-tailed stochastic process. The results obtained show that, for non-Gaussian environments, the proposed robust nonparametric spectral estimation methods could perform better compared to the classical methods
Gaussian processes that can be decomposed into a smooth mean function and a stationary autocorrelate...
This thesis is concerned with nonparametric techniques for inferring properties of time series. Firs...
This thesis is concerned with nonparametric techniques for inferring properties of time series. Firs...
In this study, robust nonparametric spectral estimation methods for non-Gaussian environments are pr...
Spectral Analysis is one of the most important methods in signal processing. In practical applicatio...
Spectral estimation can be defined as the art of recovering the frequency content in a measured sign...
AbstractSuppose that {z(t)} is a non-Gaussian vector stationary process with spectral density matrix...
This thesis provides a necessary and sufficient condition for asymptotic efficiency of a nonparametr...
Various robust modifications of the classical methods of power spectra esti- mation, both nonparame...
When a dataset is corrupted by noise, the model for data generating process is misspecified and can ...
This paper presents a new approach to auto-regressive and moving average (ARMA) modeling based on th...
Random processes with almost periodic covariance function are considered from a spectral outlook. Gi...
none2noIn this paper we propose a new non parametric estimator of the spectral matrix of a multivari...
A new time-varying autoregressive modeling has been proposed as a tool for time-frequency analysis o...
Gaussian processes that can be decomposed into a smooth mean function and a stationary autocorrelate...
Gaussian processes that can be decomposed into a smooth mean function and a stationary autocorrelate...
This thesis is concerned with nonparametric techniques for inferring properties of time series. Firs...
This thesis is concerned with nonparametric techniques for inferring properties of time series. Firs...
In this study, robust nonparametric spectral estimation methods for non-Gaussian environments are pr...
Spectral Analysis is one of the most important methods in signal processing. In practical applicatio...
Spectral estimation can be defined as the art of recovering the frequency content in a measured sign...
AbstractSuppose that {z(t)} is a non-Gaussian vector stationary process with spectral density matrix...
This thesis provides a necessary and sufficient condition for asymptotic efficiency of a nonparametr...
Various robust modifications of the classical methods of power spectra esti- mation, both nonparame...
When a dataset is corrupted by noise, the model for data generating process is misspecified and can ...
This paper presents a new approach to auto-regressive and moving average (ARMA) modeling based on th...
Random processes with almost periodic covariance function are considered from a spectral outlook. Gi...
none2noIn this paper we propose a new non parametric estimator of the spectral matrix of a multivari...
A new time-varying autoregressive modeling has been proposed as a tool for time-frequency analysis o...
Gaussian processes that can be decomposed into a smooth mean function and a stationary autocorrelate...
Gaussian processes that can be decomposed into a smooth mean function and a stationary autocorrelate...
This thesis is concerned with nonparametric techniques for inferring properties of time series. Firs...
This thesis is concerned with nonparametric techniques for inferring properties of time series. Firs...