Memory in finance is the foundation of a well-established forecasting model, and new financial theory research shows that the stochastic memory model depends on different time windows. To accurately identify the multivariate long memory model in the financial market, this paper proposes the concept of a moving V-statistic on the basis of a modified R/S method to determine whether the time series has a long-range dependence and subsequently to apply wavelet-based multiresolution analysis to study the multifractality of the financial time series to determine the initial data windows. Finally, we check the moving V-statistic estimation in wavelet analysis in the same condition; the paper selects the volatilities of the gold foreign exchange ra...
Wavelets orthogonally decompose data into different frequency components, and the temporal and frequ...
Summary. We present and study the performance of the semiparametric wavelet estimator for the long{m...
After I survey some papers about time-frequency for economic data, I found that wavelet is a new met...
Financial time series analysis is a highly empirical discipline concerned with the evolution of the...
This paper seeks to understand the long memory behaviour of global equity returns using novel method...
Conventional time series theory and spectral analysis have independently achieved significant popula...
We present an application of wavelet techniques to non-stationary time series with the aim of detect...
<div><p>This paper demonstrates the utilization of wavelet-based tools for the analysis and predicti...
Risk of investing in a financial asset is quantified by functionals of squared returns. Discrete tim...
ii Abstract This thesis focuses on one of the attractive topics of current financial literature, the...
Purpose - This paper, using Turkish stock index data, set outs to present long-term memory effect us...
Financial processes may possess long memory and their probability densities may display heavy tails....
textabstractWe briefly describe the major advantages of using the wavelet transform for the processi...
The thesis shows the relationship between the persistence in the financial markets returns and their...
textabstractWe briefly describe the major advantages of using the wavelet transform for the processi...
Wavelets orthogonally decompose data into different frequency components, and the temporal and frequ...
Summary. We present and study the performance of the semiparametric wavelet estimator for the long{m...
After I survey some papers about time-frequency for economic data, I found that wavelet is a new met...
Financial time series analysis is a highly empirical discipline concerned with the evolution of the...
This paper seeks to understand the long memory behaviour of global equity returns using novel method...
Conventional time series theory and spectral analysis have independently achieved significant popula...
We present an application of wavelet techniques to non-stationary time series with the aim of detect...
<div><p>This paper demonstrates the utilization of wavelet-based tools for the analysis and predicti...
Risk of investing in a financial asset is quantified by functionals of squared returns. Discrete tim...
ii Abstract This thesis focuses on one of the attractive topics of current financial literature, the...
Purpose - This paper, using Turkish stock index data, set outs to present long-term memory effect us...
Financial processes may possess long memory and their probability densities may display heavy tails....
textabstractWe briefly describe the major advantages of using the wavelet transform for the processi...
The thesis shows the relationship between the persistence in the financial markets returns and their...
textabstractWe briefly describe the major advantages of using the wavelet transform for the processi...
Wavelets orthogonally decompose data into different frequency components, and the temporal and frequ...
Summary. We present and study the performance of the semiparametric wavelet estimator for the long{m...
After I survey some papers about time-frequency for economic data, I found that wavelet is a new met...