TIME-SERIES MODELS FORECASTING PERFORMANCE IN THE BALTIC STOCK MARKET
TIME-SERIES MODELS FORECASTING PERFORMANCE IN THE BALTIC STOCK MARKET
Author(s): Žana GrigaliūnienėSubject(s): Economy
Published by: Vilniaus Universiteto Leidykla
Keywords: time-series models; forecasting; forecast errors; average ranks; quarterly earnings.
Summary/Abstract: Contradicting evidence on time-series and !nancial analysts’ forecasting performance calls for further research in emerging markets. Motivation to use time-series models rather than analysts’ forecasts stems from recent research that reports time-series predictions to be superior to analysts’ forecasts in predicting earnings for longer periods and for small firms that are hardly followed by financial analysts, especially in emerging markets. The paper aims to explore time-series models performance in forecasting quarterly earnings for Baltic firms in 2000-2009. The paper uses simple and seasonal random walk models with and without drift, Foster’s, Brown-Rozeff’s and Griffn-Watts’ models to forecast quarterly earnings. It also employs the firm-specific Box-Jenkins methodology to perform time-series analysis for individual firms. Forecasting performance of selected models is compared on the basis of goodness-of-fit statistics. The paper finds that naïve time-series models outperform premier ARIMA family models in terms of mean percentage errors and average ranks. The findings suggest that investors use naïve models to form their expectations.
Journal: Organizations and Markets in Emerging Economies
- Issue Year: 4/2013
- Issue No: 07
- Page Range: 104-120
- Page Count: 17
- Language: English