Risk of investing in a financial asset is quantified by functionals of squared returns. Discrete time stochastic volatility (SV) models impose a convenient and practically relevant time series dependence structure on the log-squared returns. Different long-term risk characteristics are postulated by short-memory SV and long-memory SV models. It is therefore important to test which of these two alternatives is suitable for a specific asset. Most standard tests are confounded by deterministic trends. This paper introduces a new, wavelet-based, test of the null hypothesis of short versus long memory in volatility which is robust to deterministic trends. In finite samples, the test performs better than currently available tests which are based ...
Long-term memory effect in stock prices might be captured, if any, with alternative models. Though G...
ACL-3International audienceIn this article, we propose two new semiparametric estimators in the wave...
We present an application of wavelet techniques to non-stationary time series with the aim of detect...
ii Abstract This thesis focuses on one of the attractive topics of current financial literature, the...
Summary. We present and study the performance of the semiparametric wavelet estimator for the long{m...
Memory in finance is the foundation of a well-established forecasting model, and new financial theor...
Conventional time series theory and spectral analysis have independently achieved significant popula...
Purpose - This paper, using Turkish stock index data, set outs to present long-term memory effect us...
In this paper we consider trend to be smooth deterministic changes over long scales, and tackle the ...
Long-term memory effect in stock prices might be captured, if any, with alternative models. Though G...
We consider the problem of testing for homogeneity of variance in a time series with long memory str...
This paper seeks to understand the long memory behaviour of global equity returns using novel method...
The first paper describes an alternative approach for testing the existence of trend among time seri...
Financial time series analysis is a highly empirical discipline concerned with the evolution of the...
Cette thèse fait appel à la théorie des ondelettes pour estimer le paramètre de mémoire longue dans ...
Long-term memory effect in stock prices might be captured, if any, with alternative models. Though G...
ACL-3International audienceIn this article, we propose two new semiparametric estimators in the wave...
We present an application of wavelet techniques to non-stationary time series with the aim of detect...
ii Abstract This thesis focuses on one of the attractive topics of current financial literature, the...
Summary. We present and study the performance of the semiparametric wavelet estimator for the long{m...
Memory in finance is the foundation of a well-established forecasting model, and new financial theor...
Conventional time series theory and spectral analysis have independently achieved significant popula...
Purpose - This paper, using Turkish stock index data, set outs to present long-term memory effect us...
In this paper we consider trend to be smooth deterministic changes over long scales, and tackle the ...
Long-term memory effect in stock prices might be captured, if any, with alternative models. Though G...
We consider the problem of testing for homogeneity of variance in a time series with long memory str...
This paper seeks to understand the long memory behaviour of global equity returns using novel method...
The first paper describes an alternative approach for testing the existence of trend among time seri...
Financial time series analysis is a highly empirical discipline concerned with the evolution of the...
Cette thèse fait appel à la théorie des ondelettes pour estimer le paramètre de mémoire longue dans ...
Long-term memory effect in stock prices might be captured, if any, with alternative models. Though G...
ACL-3International audienceIn this article, we propose two new semiparametric estimators in the wave...
We present an application of wavelet techniques to non-stationary time series with the aim of detect...