The paper investigates whether transforming a time series leads to an improvement in forecasting accuracy. The class of transformations that is considered is the Box-Cox power transformation, which applies to series measured on a ratio scale. We propose a nonparametric approach for estimating the optimal transformation parameter based on the frequency domain estimation of the prediction error variance, and also conduct an extensive recursive forecast experiment on a large set of seasonal monthly macroeconomic time series related to industrial production and retail turnover. In about one fifth of the series considered the Box-Cox transformation produces forecasts significantly better than the untransformed data at one-step-ahead horizon; in ...
<p>Forecasting performance of the eight statistical methods included in the study for one-step-ahead...
This paper investigates whether transforming the Consumer Price Index with a class of power transfor...
The aim of this study is to develop novel forecasting methodologies. The applications of our propose...
The paper investigates whether transforming a time series leads to an improvement in forecasting acc...
The paper investigates whether transforming a time series leads to an improvement in forecasting acc...
The paper investigates whether transforming a time series leads to an improvement in forecasting acc...
The paper investigates whether transforming a time series leads to an improvement in forecasting acc...
The paper investigates whether transforming a time series leads to an improvement in forecasting acc...
The paper investigates whether transforming a time series leads to an improvement in forecasting acc...
The paper investigates whether transforming a time series leads to an improvement in forecasting acc...
The paper investigates whether transforming a time series leads to an improvement in forecasting acc...
The Box-Cox transformation is a technique mostly utilized to turn the probabilistic distribution of ...
The authors examine the small sample properties and forecasting performance of estimators In models ...
The authors examine the small sample properties and forecasting performance of estimators In models ...
Peer Reviewedhttps://deepblue.lib.umich.edu/bitstream/2027.42/147030/1/rssc00953.pd
<p>Forecasting performance of the eight statistical methods included in the study for one-step-ahead...
This paper investigates whether transforming the Consumer Price Index with a class of power transfor...
The aim of this study is to develop novel forecasting methodologies. The applications of our propose...
The paper investigates whether transforming a time series leads to an improvement in forecasting acc...
The paper investigates whether transforming a time series leads to an improvement in forecasting acc...
The paper investigates whether transforming a time series leads to an improvement in forecasting acc...
The paper investigates whether transforming a time series leads to an improvement in forecasting acc...
The paper investigates whether transforming a time series leads to an improvement in forecasting acc...
The paper investigates whether transforming a time series leads to an improvement in forecasting acc...
The paper investigates whether transforming a time series leads to an improvement in forecasting acc...
The paper investigates whether transforming a time series leads to an improvement in forecasting acc...
The Box-Cox transformation is a technique mostly utilized to turn the probabilistic distribution of ...
The authors examine the small sample properties and forecasting performance of estimators In models ...
The authors examine the small sample properties and forecasting performance of estimators In models ...
Peer Reviewedhttps://deepblue.lib.umich.edu/bitstream/2027.42/147030/1/rssc00953.pd
<p>Forecasting performance of the eight statistical methods included in the study for one-step-ahead...
This paper investigates whether transforming the Consumer Price Index with a class of power transfor...
The aim of this study is to develop novel forecasting methodologies. The applications of our propose...