Sequential Monte Carlo without likelihoods

UNSW Sydney

PubMed
Indexed incrossrefpubmed

Abstract

Recent new methods in Bayesian simulation have provided ways of evaluating posterior distributions in the presence of analytically or computationally intractable likelihood functions. Despite representing a substantial methodological advance, existing methods based on rejection sampling or Markov chain Monte Carlo can be highly inefficient and accordingly require far more iterations than may be practical to implement. Here we propose a sequential Monte Carlo sampler that convincingly overcomes these inefficiencies. We demonstrate its implementation through an epidemiological study of the transmission rate of tuberculosis.

Citation impact

898
total citations
FWCI
42.61
Percentile
100%
References
29
Citations per year

Authors

3

Topics & keywords

Keywords
  • Markov chain Monte Carlo
  • Monte Carlo method
  • Computer science
  • Bayesian probability
  • Rejection sampling
  • Hybrid Monte Carlo
  • Particle filter
  • Importance sampling
UN Sustainable Development Goals
  • Good health and well-being
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