Abstract

Approximate Bayesian computation (ABC) has become one of the major tools of likelihood-free statistical inference in complex mathematical models. Simultaneously, stochastic differential equations (SDEs) have developed to an established tool for modelling time-dependent, real-world phenomena with underlying random effects. When applying ABC to stochastic models, two major difficulties arise: First, the derivation of effective summary statistics and proper distances is particularly challenging, since simulations from the stochastic process under the same parameter configuration result in different trajectories. Second, exact simulation schemes to generate trajectories from the stochastic model are rarely available, requiring the derivation of suitable numerical methods for the synthetic data generation. To obtain summaries that are less sensitive to the intrinsic stochasticity of the model, we propose to build up the statistical method (e.g. the choice of the summary statistics) on the underlying structural properties of the model. Here, we focus on the existence of an invariant measure and we map the data to their estimated invariant density and invariant spectral density. Then, to ensure that these model properties are kept in the synthetic data generation, we adopt measure-preserving numerical splitting schemes. The derived property-based and measure-preserving ABC method is illustrated on the broad class of partially observed Hamiltonian type SDEs, both with simulated data and with real electroencephalography data. The derived summaries are particularly robust to the model simulation, and this fact, combined with the proposed reliable numerical scheme, yields accurate ABC inference. In contrast, the inference returned using standard numerical methods (Euler–Maruyama discretisation) fails. The proposed ingredients can be incorporated into any type of ABC algorithm and directly applied to all SDEs that are characterised by an invariant distribution and for which a measure-preserving numerical method can be derived.

Highlights

  • Over the last decades, stochastic differential equations (SDEs) have become an established and powerful toolElectronic supplementary material The online version of this article contains supplementary material, which is available to authorized users.B Irene TubikanecStatistics and Computing (2020) 30:627–648 we tackle here

  • The idea of the basic acceptance–rejection approximate Bayesian computation (ABC) algorithm is to keep a sampled parameter value from the prior as a realisation from the approximate posterior, if the distance between the summary statistics of the synthetic dataset, which is generated conditioned on this parameter value, and the summaries of the original reference data is smaller than some tolerance level

  • Besides the tolerance level, the quality of the ABC method depends strongly on the choice of suitable summary statistics combined with a proper distance measure and on the numerical method used to generate the synthetic data from the model

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Summary

Introduction

Stochastic differential equations (SDEs) have become an established and powerful tool.

B Irene Tubikanec
The ABC method
An effective choice of summaries and distances: spectral density-based ABC
A new proposal of synthetic data generation: measure-preserving ABC
An illustration on Hamiltonian type SDEs
Structural model property
Measure-preserving numerical splitting schemes
Implementation details
Validation of the proposed ABC method when exact simulation is possible
Weakly damped stochastic harmonic oscillator: the model and its properties
The stochastic Jansen and Rit neural mass model
Parameter inference from simulated data
Parameter inference from real EEG data
Conclusion
Full Text
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