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Nonlinear time series with long memory: a model for stochastic volatility

✍ Scribed by Peter M. Robinson; Paolo Zaffaroni


Publisher
Elsevier Science
Year
1998
Tongue
English
Weight
568 KB
Volume
68
Category
Article
ISSN
0378-3758

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✦ Synopsis


We introduce a nonlinear model of stochastic volatility within the class of "product type" models. It allows different degrees of dependence for the "raw" series and for the "squared" series, for instance implying weak dependence in the former and long memory in the latter. We discuss its main statistical properties with respect to the common set of stylized facts characterizing financial assets' returns time series dynamics, and apply it to several series of asset returns.


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