AbstractA recently proposed method of multiple frequency estimation for mixed-spectrum time series is analyzed. The so-called PF method is a procedure that combines the autoregressive (AR) representation of superimposed sinusoids with the idea of parametric filtering. The gist of the method is to parametrize a linear filter in accord with a certain parametrization property, as suggested by the particular form of the bias encountered by Prony′s least-squares estimator for the AR model. It is shown that for any parametric filter with this property, the least-squares estimator obtained from the filtered data is almost surely contractive as a function of the filter parameter and has a unique multivariate fixed-point in the vicinity of the true ...
The problem to track time-varying properties of a signal is studied. The somewhat contradictory noti...
Some key theorems in the asymptotic theory for multivariate time series, using spectrl methods, are ...
AbstractTracking of an unknown frequency embedded in noise is widely applied in a variety of applica...
AbstractA recently proposed method of multiple frequency estimation for mixed-spectrum time series i...
A recently proposed method of multiple frequency estimation for mixed-spectrum time series is analyz...
The problem of estimating the frequencies of multiple sinusoids from noisy observations is addressed...
Twenty years ago Kay (1984) proposed an iterative filtering algorithm (IFA) for jointly estimating t...
Statistical inference for mixed spectral problems based on a parametric time series model is studied...
AbstractThe asymptotic normality of sample autocovariances is proved for time series with mixed-spec...
Based on an asymptotic analysis of the contraction mapping (CM) method of Li and Kedem (IEEE Trans. ...
A new time-varying autoregressive modeling has been proposed as a tool for time-frequency analysis o...
The old and important problem of estimating the discontinuous (mixed) spectrum of a series containin...
Time series observed at different temporal scales cannot be simultaneously analyzed by traditional m...
Time series modeling as the sum of a deterministic signal and an autoregressive (AR) process is stud...
2 We investigate autoregressive approximations of multiple frequency I(1), MFI(1), pro-cesses. The u...
The problem to track time-varying properties of a signal is studied. The somewhat contradictory noti...
Some key theorems in the asymptotic theory for multivariate time series, using spectrl methods, are ...
AbstractTracking of an unknown frequency embedded in noise is widely applied in a variety of applica...
AbstractA recently proposed method of multiple frequency estimation for mixed-spectrum time series i...
A recently proposed method of multiple frequency estimation for mixed-spectrum time series is analyz...
The problem of estimating the frequencies of multiple sinusoids from noisy observations is addressed...
Twenty years ago Kay (1984) proposed an iterative filtering algorithm (IFA) for jointly estimating t...
Statistical inference for mixed spectral problems based on a parametric time series model is studied...
AbstractThe asymptotic normality of sample autocovariances is proved for time series with mixed-spec...
Based on an asymptotic analysis of the contraction mapping (CM) method of Li and Kedem (IEEE Trans. ...
A new time-varying autoregressive modeling has been proposed as a tool for time-frequency analysis o...
The old and important problem of estimating the discontinuous (mixed) spectrum of a series containin...
Time series observed at different temporal scales cannot be simultaneously analyzed by traditional m...
Time series modeling as the sum of a deterministic signal and an autoregressive (AR) process is stud...
2 We investigate autoregressive approximations of multiple frequency I(1), MFI(1), pro-cesses. The u...
The problem to track time-varying properties of a signal is studied. The somewhat contradictory noti...
Some key theorems in the asymptotic theory for multivariate time series, using spectrl methods, are ...
AbstractTracking of an unknown frequency embedded in noise is widely applied in a variety of applica...