We present a model and a computational procedure for dealing with seasonality and regime changes in time series. In this work we are interested in time series which in addition to trend display seasonality in mean, in autocorrelation and in variance. These type of series appears in many areas, including hydrology, meteorology, economics and finance. The seasonality is accounted for by subset PAR modelling, for which each season follows a possibly different Autoregressive model. Levels, trend, autoregressive parameters and residual variances are allowed to change their values at fixed unknown times. The identification of number and location of structural changes, as well as $PAR$ lags indicators, is based on Genetic Algorithms, which are sui...
In this article, we introduce an automatic identi\ufb01cation procedure for transfer function model...
Extreme data points are important in environmental, financial, and insurance set-tings. In this work...
textabstractIn this paper we put forward a new time series model, which describes nonlinearity and s...
This paper proposes an extension of Periodic AutoRegressive (PAR) modelling for time series with evo...
Many nonstationary time series exhibit changes in the trend and seasonality structure, that may be m...
We propose a new periodic autoregressive model for seasonally observed time series, where the number...
A comprehensive seasonally integrated periodic autoregressive model is suggested which is shown to b...
textabstractWe propose a new periodic autoregressive model for seasonally observed time series, wher...
One of the most powerful and widely used methodologies for forecasting economic time series is the c...
Book cover Mathematical and Statistical Methods for Actuarial Sciences and Finance pp 79–85Cite as ...
We propose a new periodic autoregressive model for seasonally observed time series, where the number...
Rsriodic autoregressive time series models [PAR] are models which allow the AR parameters to vary wi...
textabstractThis book considers periodic time series models for seasonal data, characterized by para...
Methodology for seasonality diagnostics is extremely important for statistical agencies, because suc...
We present a method for investigating the evolution of trend and seasonality in an observed time ser...
In this article, we introduce an automatic identi\ufb01cation procedure for transfer function model...
Extreme data points are important in environmental, financial, and insurance set-tings. In this work...
textabstractIn this paper we put forward a new time series model, which describes nonlinearity and s...
This paper proposes an extension of Periodic AutoRegressive (PAR) modelling for time series with evo...
Many nonstationary time series exhibit changes in the trend and seasonality structure, that may be m...
We propose a new periodic autoregressive model for seasonally observed time series, where the number...
A comprehensive seasonally integrated periodic autoregressive model is suggested which is shown to b...
textabstractWe propose a new periodic autoregressive model for seasonally observed time series, wher...
One of the most powerful and widely used methodologies for forecasting economic time series is the c...
Book cover Mathematical and Statistical Methods for Actuarial Sciences and Finance pp 79–85Cite as ...
We propose a new periodic autoregressive model for seasonally observed time series, where the number...
Rsriodic autoregressive time series models [PAR] are models which allow the AR parameters to vary wi...
textabstractThis book considers periodic time series models for seasonal data, characterized by para...
Methodology for seasonality diagnostics is extremely important for statistical agencies, because suc...
We present a method for investigating the evolution of trend and seasonality in an observed time ser...
In this article, we introduce an automatic identi\ufb01cation procedure for transfer function model...
Extreme data points are important in environmental, financial, and insurance set-tings. In this work...
textabstractIn this paper we put forward a new time series model, which describes nonlinearity and s...