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Simulation based composite likelihood.

Lorenzo Rimella1,2, Chris Jewell3, Paul Fearnhead3

  • 1ESOMAS, University of Turin, Via Verdi 8, 10124 Turin, Italy.

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|February 28, 2025
PubMed
Summary
This summary is machine-generated.

We developed Simulation Based Composite Likelihood (SimBa-CL) to efficiently analyze high-dimensional hidden Markov models. This novel method approximates model likelihoods using Monte Carlo sampling, enabling faster parameter optimization and confidence set construction.

Keywords:
Composite likelihoodHidden Markov modelIndividual-based modelsMonte Carlo approximation

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Area of Science:

  • Statistics
  • Computational Biology
  • Machine Learning

Background:

  • High-dimensional hidden Markov models (HMMs) present significant computational challenges, primarily due to the exponential increase in cost for likelihood calculations.
  • Existing methods often struggle with scalability and efficiency when dealing with complex, high-dimensional data.

Purpose of the Study:

  • To introduce a novel composite likelihood approach, Simulation Based Composite Likelihood (SimBa-CL), for efficient inference in high-dimensional HMMs.
  • To provide a method that overcomes the computational bottlenecks associated with traditional likelihood calculations in complex models.

Main Methods:

  • SimBa-CL approximates the model's likelihood by the product of its marginals, estimated via Monte Carlo sampling.
  • The approach utilizes automatic differentiation for efficient gradient and Hessian calculation, facilitating parameter optimization.
  • It shares similarities with Approximate Bayesian Computation (ABC) by requiring model simulations but differs by providing a guided likelihood approximation.

Main Results:

  • Extensive empirical results validate the theoretical underpinnings of SimBa-CL.
  • The method demonstrates significant advantages over existing techniques like Sequential Monte Carlo (SMC).
  • SimBa-CL was successfully applied to analyze real-world Aphtovirus data, showcasing its practical utility.

Conclusions:

  • SimBa-CL offers a computationally efficient and effective solution for inference in high-dimensional hidden Markov models.
  • The method's ability to speed up optimization and construct confidence sets makes it a valuable tool for complex statistical modeling.
  • Its successful application to biological data highlights its potential impact in various scientific domains.