A MODEL-SELECTION APPROACH TO ASSESSING THE INFORMATION IN THE TERM STRUCTURE USING LINEAR-MODELS AND ARTIFICIAL NEURAL NETWORKS

Citation
Nr. Swanson et H. White, A MODEL-SELECTION APPROACH TO ASSESSING THE INFORMATION IN THE TERM STRUCTURE USING LINEAR-MODELS AND ARTIFICIAL NEURAL NETWORKS, Journal of business & economic statistics, 13(3), 1995, pp. 265-275
Citations number
33
Categorie Soggetti
Social Sciences, Mathematical Methods",Economics
ISSN journal
07350015
Volume
13
Issue
3
Year of publication
1995
Pages
265 - 275
Database
ISI
SICI code
0735-0015(1995)13:3<265:AMATAT>2.0.ZU;2-W
Abstract
We take a model-selection approach to the question of whether forward- interest rates are useful in predicting future spot rates, using a var iety of out-of-sample forecast-based model-selection criteria-forecast mean squared error, forecast direction accuracy, and forecast-based t rading-system profitability. We also examine the usefulness of a class of novel prediction models called artificial neural networks and inve stigate the issue of appropriate window sizes for rolling-window-based prediction methods. Results indicate that the premium of the forward rate over the spot rate helps to predict the sign of future changes in the interest rate. Furthermore, model selection based on an in-sample Schwarz information criterion (SIC) does not appear to be a reliable guide to out-of-sample performance in the case of short-term interest rates. Thus, the in-sample SIC apparently fails to offer a convenient shortcut to true out-of-sample performance measures.