Empirical thesis.Bibliography: pages 95-97.1. Introduction -- 2. Literature review -- 3. Nonparametric methods -- 4. Parametric methods -- 5. Power comparisons -- 6. Conclusion and future work.This thesis is concerned with determining whether two time series have been generated by underlying processes with the same spectral shape. This question has arisen in the literature in a variety of disciplines, including signal processing, economics and the natural sciences. Most of the methods that have been proposed to discriminate between spectral densities are nonparametric and are based on the periodogram. The statistical properties of these tests, however, are generally developed on the assumption that the underlying processes are Gaussian whit...
In statistical data analysis it is often important to compare, classify, and cluster di¤erent time s...
In this dissertation, we propose a new spectral method that could be used to overcome two issues in ...
In statistical data analysis it is often important to compare, classify, and cluster di¤erent time s...
A normality assumption is usually made for the discrimination between two stationary time series pro...
We investigated the problem of testing equality among spectral densities of several independent stat...
We discuss in this paper the problem of determining whether two time series have been produced by th...
We discuss in this paper the problem of determining whether two time series have been produced by th...
A new time-varying autoregressive modeling has been proposed as a tool for time-frequency analysis o...
In the case of time-series analysis, it is often more convenient to rely on the frequency domain tha...
Motivated by a recent paper of Caiado et al. (2009), we investigate testing problems for spectral de...
Publisher Copyright: © 2022A nonparametric procedure for identifying the differencing operator of a ...
We propose a general bootstrap procedure to approximate the null distribution of nonparametric frequ...
We review spectral analysis and its application in inference for stationary processes. As can be see...
The generalised autocovariance function is defined for a stationary stochastic process as the invers...
This thesis provides a necessary and sufficient condition for asymptotic efficiency of a nonparametr...
In statistical data analysis it is often important to compare, classify, and cluster di¤erent time s...
In this dissertation, we propose a new spectral method that could be used to overcome two issues in ...
In statistical data analysis it is often important to compare, classify, and cluster di¤erent time s...
A normality assumption is usually made for the discrimination between two stationary time series pro...
We investigated the problem of testing equality among spectral densities of several independent stat...
We discuss in this paper the problem of determining whether two time series have been produced by th...
We discuss in this paper the problem of determining whether two time series have been produced by th...
A new time-varying autoregressive modeling has been proposed as a tool for time-frequency analysis o...
In the case of time-series analysis, it is often more convenient to rely on the frequency domain tha...
Motivated by a recent paper of Caiado et al. (2009), we investigate testing problems for spectral de...
Publisher Copyright: © 2022A nonparametric procedure for identifying the differencing operator of a ...
We propose a general bootstrap procedure to approximate the null distribution of nonparametric frequ...
We review spectral analysis and its application in inference for stationary processes. As can be see...
The generalised autocovariance function is defined for a stationary stochastic process as the invers...
This thesis provides a necessary and sufficient condition for asymptotic efficiency of a nonparametr...
In statistical data analysis it is often important to compare, classify, and cluster di¤erent time s...
In this dissertation, we propose a new spectral method that could be used to overcome two issues in ...
In statistical data analysis it is often important to compare, classify, and cluster di¤erent time s...