Our book introduces a method to evaluate the accuracy of trend estimation algorithms under conditions similar to those encountered in real time series processing. This method is based on Monte Carlo experiments with artificial time series numerically generated by an original algorithm. The second part of the book contains several automatic algorithms for trend estimation and time series partitioning. The source codes of the computer programs implementing these original automatic algorithms are given in the appendix and will be freely available on the web. The book contains clear statement of the conditions and the approximations under which the algorithms work, as well as the proper interpretation of their results. We illustrate the functio...
In this paper we provide a comprehensive Bayesian posterior analysis of trend determination in gener...
This book aims to provide readers with the current information, developments, and trends in a time s...
We discuss some challenges presented by trending data in time series econometrics. To the empirical ...
Abstract. This paper analyses methods of trend estimation focusing on a process of calculation of th...
Part 12: Data Mining-ForecastingInternational audienceThe developed forecasting algorithm creates tr...
This thesis suggests a general approach for estimating the trend of a univariate time series. It beg...
This article presents a review of some modern approaches to trend extraction for one-dimensional tim...
This book explores widely used seasonal adjustment methods and recent developments in real time tren...
This book explores widely used seasonal adjustment methods and recent developments in real time tren...
The need to extract the trend from a given time series is a common problem in a wide variety of fiel...
The paper discusses the issue of estimation of exponential trend parameters in terms of its applicat...
SUMMARY Many different approaches have been proposed to deal with the signal extraction problem in g...
Automatic forecasts of large numbers of univariate time series are often needed in business and othe...
Time series non-stationarity can be detected thanks to autocorrelation functions. But trend nature, ...
Trend estimation deals with the characterization of the underlying, or long–run, evolution of a time...
In this paper we provide a comprehensive Bayesian posterior analysis of trend determination in gener...
This book aims to provide readers with the current information, developments, and trends in a time s...
We discuss some challenges presented by trending data in time series econometrics. To the empirical ...
Abstract. This paper analyses methods of trend estimation focusing on a process of calculation of th...
Part 12: Data Mining-ForecastingInternational audienceThe developed forecasting algorithm creates tr...
This thesis suggests a general approach for estimating the trend of a univariate time series. It beg...
This article presents a review of some modern approaches to trend extraction for one-dimensional tim...
This book explores widely used seasonal adjustment methods and recent developments in real time tren...
This book explores widely used seasonal adjustment methods and recent developments in real time tren...
The need to extract the trend from a given time series is a common problem in a wide variety of fiel...
The paper discusses the issue of estimation of exponential trend parameters in terms of its applicat...
SUMMARY Many different approaches have been proposed to deal with the signal extraction problem in g...
Automatic forecasts of large numbers of univariate time series are often needed in business and othe...
Time series non-stationarity can be detected thanks to autocorrelation functions. But trend nature, ...
Trend estimation deals with the characterization of the underlying, or long–run, evolution of a time...
In this paper we provide a comprehensive Bayesian posterior analysis of trend determination in gener...
This book aims to provide readers with the current information, developments, and trends in a time s...
We discuss some challenges presented by trending data in time series econometrics. To the empirical ...