Approximate Bayesian computation with path signatures
Simulation models often lack tractable likelihood functions, making likelihood-free inference methods indispensable. Approximate Bayesian computation generates likelihood-free posterior samples by comparing simulated and observed data through some distance measure, but existing approaches are often...
Auteurs principaux: | Dyer, J, Cannon, P, Schmon, SM |
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Format: | Conference item |
Langue: | English |
Publié: |
Proceedings of Machine Learning Research
2024
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