Conventional time series theory and spectral analysis have independently achieved significant popularity in mainstream economics and finance research over long periods. However, the fact remains that each is somewhat lacking if the other is absent. To overcome this problem, a new methodology, wavelet analysis, has been developed to capture all the information localized in time and in frequency, which provides us with an ideal tool to study non-stationary time series. This paper aims to explore the application of a variety of wavelet-based methodologies in conjunction with conventional techniques, such as the Generalized Autoregressive Conditional Heteroskedasticity (GARCH) models and long-memory parameter estimates, in analysing the short a...
Wavelets orthogonally decompose data into different frequency components, and the temporal and frequ...
Long-term memory effect in stock prices might be captured, if any, with alternative models. Though G...
[[abstract]]This paper proposes a wavelet-based multivariate GARCH model to investigate the return a...
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...
Financial time series analysis is a highly empirical discipline concerned with the evolution of the...
Summary. We present and study the performance of the semiparametric wavelet estimator for the long{m...
In this paper we show the degrees of persistence of the time series if eight European stock market i...
Memory in finance is the foundation of a well-established forecasting model, and new financial theor...
This paper seeks to understand the long memory behaviour of global equity returns using novel method...
Wavelets orthogonally decompose data into different frequency components, and the temporal and frequ...
Purpose - This paper, using Turkish stock index data, set outs to present long-term memory effect us...
The paper treats of an issue that is interrelated to the prediction inseparably. Namely if one model...
We show that there is strong evidence of long-range dependence in the volatilities of several German...
Wavelets orthogonally decompose data into different frequency components, and the temporal and frequ...
Long-term memory effect in stock prices might be captured, if any, with alternative models. Though G...
[[abstract]]This paper proposes a wavelet-based multivariate GARCH model to investigate the return a...
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...
Financial time series analysis is a highly empirical discipline concerned with the evolution of the...
Summary. We present and study the performance of the semiparametric wavelet estimator for the long{m...
In this paper we show the degrees of persistence of the time series if eight European stock market i...
Memory in finance is the foundation of a well-established forecasting model, and new financial theor...
This paper seeks to understand the long memory behaviour of global equity returns using novel method...
Wavelets orthogonally decompose data into different frequency components, and the temporal and frequ...
Purpose - This paper, using Turkish stock index data, set outs to present long-term memory effect us...
The paper treats of an issue that is interrelated to the prediction inseparably. Namely if one model...
We show that there is strong evidence of long-range dependence in the volatilities of several German...
Wavelets orthogonally decompose data into different frequency components, and the temporal and frequ...
Long-term memory effect in stock prices might be captured, if any, with alternative models. Though G...
[[abstract]]This paper proposes a wavelet-based multivariate GARCH model to investigate the return a...