Methodology for seasonality diagnostics is extremely important for statistical agencies, because such tools are necessary for making decisions whether to seasonally adjust a given series, and whether such an adjustment is adequate. This methodology must be statistical, in order to furnish quantification of Type I and II errors, and also to provide understanding about the requisite assumptions. We connect the concept of seasonality to a mathematical definition regarding the oscillatory character of the moving average (MA) representation coefficients, and define a new seasonality diagnostic based on autoregressive (AR) roots. The diagnostic is able to assess different forms of seasonality: dynamic versus stable, of arbitrary seasonal periods,...
In this chapter we use a simulation experiment to examine whether theseasonal adjustment methods Cen...
We present a method for investigating the evolution of trend and seasonality in an observed time ser...
We propose a new periodic autoregressive model for seasonally observed time series, where the number...
Abstract Background The study of the seasonal variati...
A comprehensive seasonally integrated periodic autoregressive model is suggested which is shown to b...
The traditional literature on seasonality has mainly focused attention on various statistical proced...
Book cover Mathematical and Statistical Methods for Actuarial Sciences and Finance pp 79–85Cite as ...
Many economic time series exhibit important systematic fluctuations within the year, i.e., seasonali...
textabstractThis book considers periodic time series models for seasonal data, characterized by para...
This article proposes an alternative methodology for modeling and forecasting seasonal series. The a...
We present a model and a computational procedure for dealing with seasonality and regime changes in ...
This chapter reviews the principal methods used by researchers when forecasting seasonal time series...
One of the most powerful and widely used methodologies for forecasting economic time series is the c...
textabstractExamples of descriptive models for changing seasonal patterns in economic time series ar...
Les procédures standards pour tester la présence de racines unitaires aux fréquences saisonnières so...
In this chapter we use a simulation experiment to examine whether theseasonal adjustment methods Cen...
We present a method for investigating the evolution of trend and seasonality in an observed time ser...
We propose a new periodic autoregressive model for seasonally observed time series, where the number...
Abstract Background The study of the seasonal variati...
A comprehensive seasonally integrated periodic autoregressive model is suggested which is shown to b...
The traditional literature on seasonality has mainly focused attention on various statistical proced...
Book cover Mathematical and Statistical Methods for Actuarial Sciences and Finance pp 79–85Cite as ...
Many economic time series exhibit important systematic fluctuations within the year, i.e., seasonali...
textabstractThis book considers periodic time series models for seasonal data, characterized by para...
This article proposes an alternative methodology for modeling and forecasting seasonal series. The a...
We present a model and a computational procedure for dealing with seasonality and regime changes in ...
This chapter reviews the principal methods used by researchers when forecasting seasonal time series...
One of the most powerful and widely used methodologies for forecasting economic time series is the c...
textabstractExamples of descriptive models for changing seasonal patterns in economic time series ar...
Les procédures standards pour tester la présence de racines unitaires aux fréquences saisonnières so...
In this chapter we use a simulation experiment to examine whether theseasonal adjustment methods Cen...
We present a method for investigating the evolution of trend and seasonality in an observed time ser...
We propose a new periodic autoregressive model for seasonally observed time series, where the number...