English

Sparse composite likelihood selection

Methodology 2021-07-21 v1

Abstract

Composite likelihood has shown promise in settings where the number of parameters pp is large due to its ability to break down complex models into simpler components, thus enabling inference even when the full likelihood is not tractable. Although there are a number of ways to formulate a valid composite likelihood in the finite-pp setting, there does not seem to exist agreement on how to construct composite likelihoods that are comp utationally efficient and statistically sound when pp is allowed to diverge. This article introduces a method to select sparse composite likelihoods by minimizing a criterion representing the statistical efficiency of the implied estimator plus an L1L_1-penalty discouraging the inclusion of too many sub-likelihood terms. Conditions under which consistent model selection occurs are studied. Examples illustrating the procedure are analysed in detail and applied to real data.

Keywords

Cite

@article{arxiv.2107.09586,
  title  = {Sparse composite likelihood selection},
  author = {Claudia Di Caterina and Davide Ferrari},
  journal= {arXiv preprint arXiv:2107.09586},
  year   = {2021}
}