English

Implicit Deep Adaptive Design: Policy-Based Experimental Design without Likelihoods

Machine Learning 2021-11-04 v1 Artificial Intelligence Machine Learning Computation

Abstract

We introduce implicit Deep Adaptive Design (iDAD), a new method for performing adaptive experiments in real-time with implicit models. iDAD amortizes the cost of Bayesian optimal experimental design (BOED) by learning a design policy network upfront, which can then be deployed quickly at the time of the experiment. The iDAD network can be trained on any model which simulates differentiable samples, unlike previous design policy work that requires a closed form likelihood and conditionally independent experiments. At deployment, iDAD allows design decisions to be made in milliseconds, in contrast to traditional BOED approaches that require heavy computation during the experiment itself. We illustrate the applicability of iDAD on a number of experiments, and show that it provides a fast and effective mechanism for performing adaptive design with implicit models.

Keywords

Cite

@article{arxiv.2111.02329,
  title  = {Implicit Deep Adaptive Design: Policy-Based Experimental Design without Likelihoods},
  author = {Desi R. Ivanova and Adam Foster and Steven Kleinegesse and Michael U. Gutmann and Tom Rainforth},
  journal= {arXiv preprint arXiv:2111.02329},
  year   = {2021}
}

Comments

33 pages, 8 figures. Published as a conference paper at NeurIPS 2021

R2 v1 2026-06-24T07:24:43.604Z