We propose a new seasonal adjustment method based on the Regularized Singular Value Decomposition (RSVD) of the matrix obtained by reshaping the seasonal time series data. The method is flexible enough to capture two kinds of seasonality: the fixed seasonality that does not change over time and the time-varying seasonality that varies from one season to another. RSVD represents the time-varying seasonality by a linear combination of several seasonal patterns. The right singular vectors capture multiple seasonal patterns, and the corresponding left singular vectors capture the magnitudes of those seasonal patterns and how they change over time. By assuming the time-varying seasonal patterns change smoothly over time, the RSVD uses penalized ...
The intention of this paper is to define and estimate several classes of models of seasonal behavior...
Seasonality (or periodicity) and trend are features describing an observed sequence, and extracting ...
We describe observation driven time series models for Student-t and EGB2 conditional distributions i...
Decomposing complex time series into trend, seasonality, and remainder components is an important ta...
New innovations state space modeling tools, incorporating Box-Cox transformations, Fourier series wi...
We present a method for investigating the evolution of trend and seasonality in an observed time ser...
summary:The paper suggests a generalization of widely used Holt-Winters smoothing and forecasting me...
Time series of different nature might be characterised by the presence of deterministic and/or stoch...
The decomposition of a given time series into trend, seasonal component, and irregular component is ...
Considering that many macroeconomic time series present changing seasonal behaviour, there is a need...
The paper studies the seasonal time series as elements of a (finite dimensional) Hilbert space and p...
The paper discusses a new, fully recursive approach to the adaptive modelling, forecasting and seaso...
Methodology for seasonality diagnostics is extremely important for statistical agencies, because suc...
In a world replete with observations (physical as well as virtual), many data sets are represented b...
This chapter reviews the principal methods used by researchers when forecasting seasonal time series...
The intention of this paper is to define and estimate several classes of models of seasonal behavior...
Seasonality (or periodicity) and trend are features describing an observed sequence, and extracting ...
We describe observation driven time series models for Student-t and EGB2 conditional distributions i...
Decomposing complex time series into trend, seasonality, and remainder components is an important ta...
New innovations state space modeling tools, incorporating Box-Cox transformations, Fourier series wi...
We present a method for investigating the evolution of trend and seasonality in an observed time ser...
summary:The paper suggests a generalization of widely used Holt-Winters smoothing and forecasting me...
Time series of different nature might be characterised by the presence of deterministic and/or stoch...
The decomposition of a given time series into trend, seasonal component, and irregular component is ...
Considering that many macroeconomic time series present changing seasonal behaviour, there is a need...
The paper studies the seasonal time series as elements of a (finite dimensional) Hilbert space and p...
The paper discusses a new, fully recursive approach to the adaptive modelling, forecasting and seaso...
Methodology for seasonality diagnostics is extremely important for statistical agencies, because suc...
In a world replete with observations (physical as well as virtual), many data sets are represented b...
This chapter reviews the principal methods used by researchers when forecasting seasonal time series...
The intention of this paper is to define and estimate several classes of models of seasonal behavior...
Seasonality (or periodicity) and trend are features describing an observed sequence, and extracting ...
We describe observation driven time series models for Student-t and EGB2 conditional distributions i...