Conditional Heteroscedasticity in Time Series of Stock Returns: Evidence and Forecasts.
This article presents new evidence about the time-series behavior of stock prices. Daily return series exhibit significant levels of second-order dependence, and they cannot be modeled as linear white-noise processes. A reasonable return-generating process is empirically shown to be a first-order autoregressive process with conditionally heteroskedastic innovations. In particular, generalized autoregressive conditional heteroskedastic GARCH (1, 1) processes fit to data very satisfactorily. Various out-of-sample forecasts of monthly return variances are generated and compared statistically. Forecasts based on the GARCH model are found to be superior. Copyright 1989 by the University of Chicago.
Year of publication: |
1989
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Authors: | Akgiray, Vedat |
Published in: |
The Journal of Business. - University of Chicago Press. - Vol. 62.1989, 1, p. 55-80
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Publisher: |
University of Chicago Press |
Saved in:
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