Information criteria (IC) are often used to decide between forecasting models. Commonly used criteria include Akaike's IC and Schwarz's Bayesian IC. They involve the sum of two terms: the model's log likelihood and a penalty for the number of model parameters. The likelihood is calculated with equal weight being given to all observations. We propose that greater weight should be put on more recent observations in order to reflect more recent accuracy. This seems particularly pertinent when selecting among exponential smoothing methods, as they are based on an exponential weighting principle. In this paper, we use exponential weighting within the calculation of the log likelihood for the IC. Our empirical analysis uses supermarket sales and ...
Information criteria (IC) are used widely to choose between competing alternative models. When these...
A b s t r a c t. The purpose of the paper it to compare the performance of both information and pred...
Model selection is often conducted by ranking models by their out-of-sample forecast error. Such cri...
Information criteria (IC) are often used to decide between forecasting models. Commonly used criteri...
In this paper, we consider a recently proposed information criteria (IC) for selecting among forecas...
In this paper, we propose a new Empirical Information Criterion (EIC) for model selection which pena...
Applications of exponential smoothing to forecast time series usually rely on three basic methods: s...
It is standard in applied work to select forecasting models by ranking candidate models by their pre...
Although artificial neural networks (ANN) have been widely used in forecasting time series, the dete...
Although artificial neural networks (ANN) have been widely used in forecasting time series, the dete...
Stock & Watson (1999) consider the relative quality of different univariate forecasting techniques. ...
WOS: 000274554900021Although artificial neural networks (ANN) have been widely used in forecasting t...
This paper develops two weighted measures for model selection by generalizing the Kullback-Leibler d...
Forecasters have been using various criteria to select the most appropriate model from a pool of can...
A b s t r a c t. The focus in the paper is on the information criteria approach and especially the A...
Information criteria (IC) are used widely to choose between competing alternative models. When these...
A b s t r a c t. The purpose of the paper it to compare the performance of both information and pred...
Model selection is often conducted by ranking models by their out-of-sample forecast error. Such cri...
Information criteria (IC) are often used to decide between forecasting models. Commonly used criteri...
In this paper, we consider a recently proposed information criteria (IC) for selecting among forecas...
In this paper, we propose a new Empirical Information Criterion (EIC) for model selection which pena...
Applications of exponential smoothing to forecast time series usually rely on three basic methods: s...
It is standard in applied work to select forecasting models by ranking candidate models by their pre...
Although artificial neural networks (ANN) have been widely used in forecasting time series, the dete...
Although artificial neural networks (ANN) have been widely used in forecasting time series, the dete...
Stock & Watson (1999) consider the relative quality of different univariate forecasting techniques. ...
WOS: 000274554900021Although artificial neural networks (ANN) have been widely used in forecasting t...
This paper develops two weighted measures for model selection by generalizing the Kullback-Leibler d...
Forecasters have been using various criteria to select the most appropriate model from a pool of can...
A b s t r a c t. The focus in the paper is on the information criteria approach and especially the A...
Information criteria (IC) are used widely to choose between competing alternative models. When these...
A b s t r a c t. The purpose of the paper it to compare the performance of both information and pred...
Model selection is often conducted by ranking models by their out-of-sample forecast error. Such cri...