DocumentCode :
1511605
Title :
Forecasting volatility with neural regression: A contribution to model adequacy
Author :
Refenes, Apostolos-Paul N. ; Holt, Will T.
Author_Institution :
Dept. of Decision Sci., London Bus. Sch., London, UK
Volume :
12
Issue :
4
fYear :
2001
fDate :
7/1/2001 12:00:00 AM
Firstpage :
850
Lastpage :
864
Abstract :
Neural nets´ usefulness for forecasting is limited by problems of overfitting and the lack of rigorous procedures for model identification, selection and adequacy testing. This paper describes a methodology for neural model misspecification testing. We introduce a generalization of the Durbin-Watson statistic for neural regression and discuss the general issues of misspecification testing using residual analysis. We derive a generalized influence matrix for neural estimators which enables us to evaluate the distribution of the statistic. We deploy Monte Carlo simulation to compare the power of the test for neural and linear regressors. While residual testing is not a sufficient condition for model adequacy, it is nevertheless a necessary condition to demonstrate that the model is a good approximation to the data generating process, particularly as neural-network estimation procedures are susceptible to partial convergence. The work is also an important step toward developing rigorous procedures for neural model identification, selection and adequacy testing which have started to appear in the literature. We demonstrate its applicability in the nontrivial problem of forecasting implied volatility innovations using high-frequency stock index options. Each step of the model building process is validated using statistical tests to verify variable significance and model adequacy with the results confirming the presence of nonlinear relationships in implied volatility innovations
Keywords :
Monte Carlo methods; convergence; forecasting theory; identification; matrix algebra; neural nets; statistical analysis; Monte Carlo simulation; generalized influence matrix; high-frequency stock index options; implied volatility innovation forecasting; linear regressors; neural estimators; neural model adequacy testing; neural model identification; neural model misspecification testing; neural model selection; neural nets; neural regression; neural regressors; neural-network estimation procedures; overfitting; partial convergence; residual analysis; Convergence; Neural networks; Performance evaluation; Predictive models; Statistical analysis; Statistical distributions; Statistics; Sufficient conditions; Technological innovation; Testing;
fLanguage :
English
Journal_Title :
Neural Networks, IEEE Transactions on
Publisher :
ieee
ISSN :
1045-9227
Type :
jour
DOI :
10.1109/72.935095
Filename :
935095
Link To Document :
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