Bruno Feunou
;
Cedric Okou
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risk‐neutral moment‐based estimation of affine option pricing models (replication data)

This paper provides a novel methodology for estimating option pricing models based on risk-neutral moments. We synthesize the distribution extracted from a panel of option prices and exploit linear relationships between risk-neutral cumulants and latent factors within the continuous time affine stochastic volatility framework. We find that fitting the Andersen et al. (Journal of Financial Economics, 2015, 117(3), 558-584) option valuation model to risk-neutral moments captures the bulk of the information in option prices. Our estimation strategy is effective, easy to implement, and robust, as it allows for a direct linear filtering of the latent factors and a quasi-maximum likelihood estimation of model parameters. From a practical perspective, employing risk-neutral moments instead of option prices also helps circumvent several sources of numerical errors and substantially lessens the computational burden inherent in working with a large panel of option contracts.

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Suggested Citation

Feunou, Bruno; Okou, Cedric (2018): Risk‐neutral moment‐based estimation of affine option pricing models (replication data). Version: 1. Journal of Applied Econometrics. Dataset. https://journaldata.zbw.eu/dataset/riskneutral-momentbased-estimation-of-affine-option-pricing-models?activity_id=faff18ec-d966-4050-b35a-731c7fefe81c