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Estimation and Inference with the Efficient Method of Moments: With

Applications to Stochastic Volatility Models and Option Pricing

van der Sluis, P.J.

Publication date

1999

Link to publication

Citation for published version (APA):

van der Sluis, P. J. (1999). Estimation and Inference with the Efficient Method of Moments:

With Applications to Stochastic Volatility Models and Option Pricing. Thela Thesis. TI

Research Series nr. 204.

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