Journal article
On the Nonlinear Predictability of Stock Returns Using Financial and Economic Variables
Abstract
In a recent article by Qi, neural networks trained by Bayesian regularization were used to predict excess returns on the S&P 500. The article concluded that the switching portfolio based on the recursive neural-network forecasts generates higher accumulated wealth with lower risks than that based on linear regression. Unfortunately, attempts to replicate the results were unsuccessful. Replicated results using the same software, approach and …
Authors
Racine J
Journal
Journal of Business and Economic Statistics, Vol. 19, No. 3, pp. 380–382
Publisher
Taylor & Francis
Publication Date
July 2001
DOI
10.1198/073500101681019927
ISSN
0735-0015