This paper presents an invariant discrete wavelet transform that enables point-to-point (aligned) comparison among all scales, contains no phase shifts, relaxes the strict assumption of a dyadic-length time series, deals effectively with boundary effects and is asymptotically efficient. It also introduces a new entropy-based methodology for the determination of the optimal level of the multiresolution decomposition, as opposed to subjective or ad-hoc approaches used hitherto. As an empirical application, the paper relies on wavelet analysis to reveal the complex dynamics across different timescales for one of the most widely traded foreign exchange rates, namely the Great Britain Pound. The examined period covers the global financial crisis...
In this paperwe will approach the analysis of time series by the discrete Haar wavelet trasnform and...
Business cycle synchronization is an essential criterion for creating and maintaining an optimal cur...
Wavelets orthogonally decompose data into different frequency components, and the temporal and frequ...
This paper relies on wavelet multiresolution analysis to investigate the dependence structure and pr...
This paper relies on wavelet multiresolution analysis to capture the dependence structure of currenc...
In this paper, we investigate the scaling properties of foreign exchange volatility. Our methodology...
The thesis deals with a brief compilation of the theory of Fourier transform, linear filtration and ...
textabstractWe briefly describe the major advantages of using the wavelet transform for the processi...
textabstractWe briefly describe the major advantages of using the wavelet transform for the processi...
The paper studies the impact of different time-scales on the market risk of individual stock market ...
This paper adds to the literature on the information content of different spreads for real activity ...
The article conducts analysis of behaviour of stock indices and currency rates before and after the ...
Available online: 18 December 2017The global financial crisis and the subsequent geopolitical turbul...
Conventional time series analysis, focusing exclusively on a time series at a given scale, lacks the...
International audienceThis paper proposes a new approach, based on the recent developments of the wa...
In this paperwe will approach the analysis of time series by the discrete Haar wavelet trasnform and...
Business cycle synchronization is an essential criterion for creating and maintaining an optimal cur...
Wavelets orthogonally decompose data into different frequency components, and the temporal and frequ...
This paper relies on wavelet multiresolution analysis to investigate the dependence structure and pr...
This paper relies on wavelet multiresolution analysis to capture the dependence structure of currenc...
In this paper, we investigate the scaling properties of foreign exchange volatility. Our methodology...
The thesis deals with a brief compilation of the theory of Fourier transform, linear filtration and ...
textabstractWe briefly describe the major advantages of using the wavelet transform for the processi...
textabstractWe briefly describe the major advantages of using the wavelet transform for the processi...
The paper studies the impact of different time-scales on the market risk of individual stock market ...
This paper adds to the literature on the information content of different spreads for real activity ...
The article conducts analysis of behaviour of stock indices and currency rates before and after the ...
Available online: 18 December 2017The global financial crisis and the subsequent geopolitical turbul...
Conventional time series analysis, focusing exclusively on a time series at a given scale, lacks the...
International audienceThis paper proposes a new approach, based on the recent developments of the wa...
In this paperwe will approach the analysis of time series by the discrete Haar wavelet trasnform and...
Business cycle synchronization is an essential criterion for creating and maintaining an optimal cur...
Wavelets orthogonally decompose data into different frequency components, and the temporal and frequ...