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arxiv: 2112.03718 · v1 · pith:3YSVV5VR · submitted 2021-12-07 · q-fin.MF · econ.EM· stat.ML

A Bayesian take on option pricing with Gaussian processes

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classification q-fin.MF econ.EMstat.ML
keywords bayesiandatafunctiongaussianinferencelocalmodeloption
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Local volatility is a versatile option pricing model due to its state dependent diffusion coefficient. Calibration is, however, non-trivial as it involves both proposing a hypothesis model of the latent function and a method for fitting it to data. In this paper we present novel Bayesian inference with Gaussian process priors. We obtain a rich representation of the local volatility function with a probabilistic notion of uncertainty attached to the calibrate. We propose an inference algorithm and apply our approach to S&P 500 market data.

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  1. Robust financial calibration: a Bayesian approach for neural SDEs

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    Bayesian neural SDE calibration produces posterior mixtures that deliver robust bounds on implied volatility by jointly using historical and option data, learning the historical-to-risk-neutral measure change, and sam...