A Bayesian machine scientist to aid in the solution of challenging scientific problems
Citations Over TimeTop 10% of 2020 papers
Abstract
Closed-form, interpretable mathematical models have been instrumental for advancing our understanding of the world; with the data revolution, we may now be in a position to uncover new such models for many systems from physics to the social sciences. However, to deal with increasing amounts of data, we need "machine scientists" that are able to extract these models automatically from data. Here, we introduce a Bayesian machine scientist, which establishes the plausibility of models using explicit approximations to the exact marginal posterior over models and establishes its prior expectations about models by learning from a large empirical corpus of mathematical expressions. It explores the space of models using Markov chain Monte Carlo. We show that this approach uncovers accurate models for synthetic and real data and provides out-of-sample predictions that are more accurate than those of existing approaches and of other nonparametric methods.
Related Papers
- → Adaptive Metropolis-coupled MCMC for BEAST 2(2020)55 cited
- → River water quality modelling and simulation based on Markov Chain Monte Carlo computation and Bayesian inference model(2020)13 cited
- → Stochastic Gradient MCMC with Repulsive Forces(2018)26 cited
- Learning of Bayesian network based on MCMC algorithm(2004)
- → Details on O-SBL(MCMC): A Compressive Sensing Algorithm for Sparse Signal Recovery for the SMV/MMV Problem Using Sparse Bayesian Learning and Markov Chain Monte Carlo Inference(2019)