We introduce a seasonal adjustment method based on quantile regression that focuses on capturing different forms of deterministic seasonal patterns. Given a variable of interest, by describing its seasonal behaviour over an approximation of the entire conditional distribution, we are capable of removing seasonal patterns affecting the mean and/or the variance or seasonal patterns varying over quantiles of the conditional distribution. We provide empirical examples based on simulated and real data through which we compare our proposal to least squares approaches
The intention of this paper is to define and estimate several classes of models of seasonal behavior...
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...
Time series of different nature might be characterised by the presence of deterministic and/or stoch...
Across disciplines, researchers are often interested in gaining a deeper understanding of trends in ...
The identification and estimation of trends in hydroclimatic time series remains an important task i...
The aim of this paper is to develop a model-based seasonal adjustment method which will yield the sa...
We investigate intradaily seasonal patterns on the distribution of high frequency financial returns....
The adjustment of economic and social time series for seasonal variation has been and continues to b...
After demonstrating that any nontrivial technique for seasonally adjusting time series inevitably le...
The seasonal adjustment method proposed by Schlicht (1981) can be viewed as a method that minimizes ...
This chapter reviews the principal methods used by researchers when forecasting seasonal time series...
The occurrence of heat waves, heavy rainfall, or drought periods have an increasing trend nowadays a...
We propose a new seasonal adjustment method based on the Regularized Singular Value Decomposition (R...
Quantile regression extends ordinary least-squares regression to quantiles of the response variable....
The intention of this paper is to define and estimate several classes of models of seasonal behavior...
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...
Time series of different nature might be characterised by the presence of deterministic and/or stoch...
Across disciplines, researchers are often interested in gaining a deeper understanding of trends in ...
The identification and estimation of trends in hydroclimatic time series remains an important task i...
The aim of this paper is to develop a model-based seasonal adjustment method which will yield the sa...
We investigate intradaily seasonal patterns on the distribution of high frequency financial returns....
The adjustment of economic and social time series for seasonal variation has been and continues to b...
After demonstrating that any nontrivial technique for seasonally adjusting time series inevitably le...
The seasonal adjustment method proposed by Schlicht (1981) can be viewed as a method that minimizes ...
This chapter reviews the principal methods used by researchers when forecasting seasonal time series...
The occurrence of heat waves, heavy rainfall, or drought periods have an increasing trend nowadays a...
We propose a new seasonal adjustment method based on the Regularized Singular Value Decomposition (R...
Quantile regression extends ordinary least-squares regression to quantiles of the response variable....
The intention of this paper is to define and estimate several classes of models of seasonal behavior...
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...