Author:
Aushev Alexander,Tran Thong,Pesonen Henri,Howes Andrew,Kaski Samuel
Abstract
AbstractLikelihood-free inference (LFI) has been successfully applied to state-space models, where the likelihood of observations is not available but synthetic observations generated by a black-box simulator can be used for inference instead. However, much of the research up to now has been restricted to cases in which a model of state transition dynamics can be formulated in advance and the simulation budget is unrestricted. These methods fail to address the problem of state inference when simulations are computationally expensive and the Markovian state transition dynamics are undefined. The approach proposed in this manuscript enables LFI of states with a limited number of simulations by estimating the transition dynamics and using state predictions as proposals for simulations. In the experiments with non-stationary user models, the proposed method demonstrates significant improvement in accuracy for both state inference and prediction, where a multi-output Gaussian process is used for LFI of states and a Bayesian neural network as a surrogate model of transition dynamics.
Publisher
Springer Science and Business Media LLC
Subject
Computational Theory and Mathematics,Statistics, Probability and Uncertainty,Statistics and Probability,Theoretical Computer Science
Reference113 articles.
1. Alpaydin, E., Kaynak, C.: Cascading classifiers. Kybernetika 34(4), 369–374 (1998)
2. Alsing, J., Wandelt, B., Feeney, S.: Massive optimal data compression and density estimation for scalable, likelihood-free inference in cosmology. Mon. Not. R. Astron. Soc. 477(3), 2874–2885 (2018)
3. Alvarez, M.A., Lawrence, N.D.: Computationally efficient convolved multiple output Gaussian processes. J. Mach. Learn. Res. 12, 1459–1500 (2011)
4. Anderson, B.D., Moore, J.B.: Optimal filtering. Courier Corporation (2012)
5. Andrei, N.: Scaled conjugate gradient algorithms for unconstrained optimization. Comput. Optim. Appl. 38(3), 401–416 (2007)
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