LGCOMLOTOct 7, 2022

Design Amortization for Bayesian Optimal Experimental Design

arXiv:2210.03283v27 citationsh-index: 38
Originality Incremental advance
AI Analysis

This work addresses a computational bottleneck for statisticians and researchers conducting controlled experiments, offering an incremental improvement over prior variational approaches.

The paper tackles the intractability of evaluating expected information gain in Bayesian optimal experimental design by introducing a neural architecture that optimizes a single variational model for infinitely many designs, achieving improved accuracy and sample efficiency over existing methods.

Bayesian optimal experimental design is a sub-field of statistics focused on developing methods to make efficient use of experimental resources. Any potential design is evaluated in terms of a utility function, such as the (theoretically well-justified) expected information gain (EIG); unfortunately however, under most circumstances the EIG is intractable to evaluate. In this work we build off of successful variational approaches, which optimize a parameterized variational model with respect to bounds on the EIG. Past work focused on learning a new variational model from scratch for each new design considered. Here we present a novel neural architecture that allows experimenters to optimize a single variational model that can estimate the EIG for potentially infinitely many designs. To further improve computational efficiency, we also propose to train the variational model on a significantly cheaper-to-evaluate lower bound, and show empirically that the resulting model provides an excellent guide for more accurate, but expensive to evaluate bounds on the EIG. We demonstrate the effectiveness of our technique on generalized linear models, a class of statistical models that is widely used in the analysis of controlled experiments. Experiments show that our method is able to greatly improve accuracy over existing approximation strategies, and achieve these results with far better sample efficiency.

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