Forecasting SASX-10 Index Using Multiple Regression Based on Principal Component Analysis
Abstract
Initially, the sample of study covered 17 macroeconomic factors as independent variables but we chosen in our model 9 statistically significant factors as independent variables (p < 0.05). After that, we have used multiple regression based on PCA scores to establish a meaningful relationship among various explanatory variables identified through the empirical analysis considering the available research studies. This paper provides an econometric analysis of the valuation SASX-10 Index.
Principal Component Analysis was used to reduce large number of explanatory variables and we have taken into consideration the multicollinearity problem among different independent variables. The main objective of this study was to forecast the value for SASX-10 Index using a multivariate statistical approach, Principal Component Analysis, to classify predictor variables according to interrelationships and to predict SASX-10 Index. For this purpose, PCA scores of 9 macroeconomic indicators were used as independent variables in multiple linear regression model for prediction of SASX-10 Index.
We have got some relationships of macroeconomic indicators with the SASX-10 market index. The result shows that the empirical characteristics of the SASX-10 Index are determined by the CPI, BIRS Index, SASX-10t-1 Index, CROBX10 Index, ATX Index, FTSE Italian STAR Index, SBITOP Index, KM/HRK and M1. Finally, we create four models with their loss function. After that, we compare loss function of all created forecasting models and the model Forecast 1 has a minimum of all loss function.
As it can be seen, 81.10% of variation in SASX-10 can be explained by explanatory variables. Accordingly, we forecast SASX-10 Index closed price for the period 01/12/2014 through 31/12/2014 by using four models.
Key words: Forecasting; SASX-10 index; Multiple regression analysis; Principal component analysis
Keywords
Full Text:
PDFDOI: http://dx.doi.org/10.3968/%25x
Refbacks
- There are currently no refbacks.
Copyright (c)
Reminder
We are currently accepting submissions via email only.
The registration and online submission functions have been disabled.
Please send your manuscripts to ibm@cscanada.net,or ibm@cscanada.org for consideration. We look forward to receiving your work.
Articles published in International Business and Management are licensed under Creative Commons Attribution 4.0 (CC-BY).
INTERNATIONAL BUSINESS AND MANAGEMENT Editorial office
Address: 1055 Rue Lucien-L'Allier, Unit #772, Montreal, QC H3G 3C4, Canada.
Telephone: 1-514-558 6138
Website: Http://www.cscanada.net Http://www.cscanada.org
E-mail: caooc@hotmail.com
Copyright © 2010 Canadian Research & Development Centre of Sciences and Cultures