In this work we propose a new class of long-memory models with time-varying fractional parameter. In particular, the dynamics of the long-memory coefficient, d, is specified through a stochastic recurrence equation driven by the score of the predictive likelihood, as suggested by Creal et al. (J Appl Econom 28:777–795, 2013) and Harvey (Dynamic models for volatility and heavy tails: with applications to financial and economic time series, Cambridge University Press, Cambridge, 2013). We demonstrate the validity of the proposed model by a Monte Carlo experiment and an application to two real time series
Title: Long range dependence in time series Author: Alexander Till Department: Department of Probabi...
Abstract: This paper explores the implications of asset return predictability on long-term portfolio...
International audienceTwo recent contributions have found conditions for large dimensional networks ...
International audienceThis paper generalizes the standard long memory modeling by assuming that the ...
This paper generalizes the standard long memory modeling by assuming that the long memory parameter ...
This paper considers a flexible class of time series models generated by Gegenbauer polynomials inco...
A two-stage forecasting approach for long memory time series is introduced. In the first step, we es...
A key stylised fact noted in the irregularly-spaced event literature is long memory in durations. Du...
We develop a new simultaneous time series model for volatility and dependence in daily financial ret...
This paper proposes a new fractional model with a time-varying long-memory parameter. The latter evo...
In forecasting problems it is important to know whether or not recent events rep-resent a regime cha...
It is well known that accurately measuring and forecasting financial volatility plays a central role...
The dissertation consists of three chapters on econometric methods related to parameter instability,...
This study proposes a method of modeling long-memory phenomenon with time-varying long-memory charac...
ACL-3International audienceThis paper proposes a new fractional model with a time-varying long-memor...
Title: Long range dependence in time series Author: Alexander Till Department: Department of Probabi...
Abstract: This paper explores the implications of asset return predictability on long-term portfolio...
International audienceTwo recent contributions have found conditions for large dimensional networks ...
International audienceThis paper generalizes the standard long memory modeling by assuming that the ...
This paper generalizes the standard long memory modeling by assuming that the long memory parameter ...
This paper considers a flexible class of time series models generated by Gegenbauer polynomials inco...
A two-stage forecasting approach for long memory time series is introduced. In the first step, we es...
A key stylised fact noted in the irregularly-spaced event literature is long memory in durations. Du...
We develop a new simultaneous time series model for volatility and dependence in daily financial ret...
This paper proposes a new fractional model with a time-varying long-memory parameter. The latter evo...
In forecasting problems it is important to know whether or not recent events rep-resent a regime cha...
It is well known that accurately measuring and forecasting financial volatility plays a central role...
The dissertation consists of three chapters on econometric methods related to parameter instability,...
This study proposes a method of modeling long-memory phenomenon with time-varying long-memory charac...
ACL-3International audienceThis paper proposes a new fractional model with a time-varying long-memor...
Title: Long range dependence in time series Author: Alexander Till Department: Department of Probabi...
Abstract: This paper explores the implications of asset return predictability on long-term portfolio...
International audienceTwo recent contributions have found conditions for large dimensional networks ...