Statistical techniques based on scaling indices are applied to detect and investigate patterns in empirically given time series. The key idea is to use the distribution of scaling indices obtained from a delay representation of the empirical time series to distinguish between random and non-random components. Statistical tests for this purpose are designed and applied to specific examples. It is shown that a selection of subseries by scaling indices can significantly enhance the signal-to-noise ratio as compared to that of the total time series
SUMMARY: Many studies produce categorical time series in which harmonic analysis is of interest. Alt...
Time series analysis is a tremendous research area in statistics and econometrics. In a previous rev...
Abstract We propose a new scale space method for the discovery of structure in the correlation betwe...
The methods currently used to determine the scaling exponent of a complex dynamic process described ...
The presented method called Significant Non-stationarities, represents an exploratory tool for ident...
Abstract—A statistical test is described for determining if scaling exponents vary over time. It is ...
Summary The goal of statistical scale space analysis is to extract scale-dependent features from noi...
. The concept of the spectral envelope was recently introduced as a statistical basis for the freque...
Multi-scale systems, involving complex interacting processes that occur over a range of temporal and...
Article discussing a method of statistical analysis based on the Shannon entropy of the diffusion pr...
The first paper describes an alternative approach for testing the existence of trend among time seri...
. This chapter is concerned with two subjects. The first one is a method of signal preprocessing cal...
Scaling invariance of time series has been making great contributions in diverse research fields. Bu...
In this paper we have analyzed scaling properties of time series of stock market indices (...
Statistical analysis of time series. With compelling arguments we show that the Diffusion Entropy An...
SUMMARY: Many studies produce categorical time series in which harmonic analysis is of interest. Alt...
Time series analysis is a tremendous research area in statistics and econometrics. In a previous rev...
Abstract We propose a new scale space method for the discovery of structure in the correlation betwe...
The methods currently used to determine the scaling exponent of a complex dynamic process described ...
The presented method called Significant Non-stationarities, represents an exploratory tool for ident...
Abstract—A statistical test is described for determining if scaling exponents vary over time. It is ...
Summary The goal of statistical scale space analysis is to extract scale-dependent features from noi...
. The concept of the spectral envelope was recently introduced as a statistical basis for the freque...
Multi-scale systems, involving complex interacting processes that occur over a range of temporal and...
Article discussing a method of statistical analysis based on the Shannon entropy of the diffusion pr...
The first paper describes an alternative approach for testing the existence of trend among time seri...
. This chapter is concerned with two subjects. The first one is a method of signal preprocessing cal...
Scaling invariance of time series has been making great contributions in diverse research fields. Bu...
In this paper we have analyzed scaling properties of time series of stock market indices (...
Statistical analysis of time series. With compelling arguments we show that the Diffusion Entropy An...
SUMMARY: Many studies produce categorical time series in which harmonic analysis is of interest. Alt...
Time series analysis is a tremendous research area in statistics and econometrics. In a previous rev...
Abstract We propose a new scale space method for the discovery of structure in the correlation betwe...