Coping With Simulators That Don't Always Return

03/28/2020
by   Andrew Warrington, et al.
6

Deterministic models are approximations of reality that are easy to interpret and often easier to build than stochastic alternatives. Unfortunately, as nature is capricious, observational data can never be fully explained by deterministic models in practice. Observation and process noise need to be added to adapt deterministic models to behave stochastically, such that they are capable of explaining and extrapolating from noisy data. We investigate and address computational inefficiencies that arise from adding process noise to deterministic simulators that fail to return for certain inputs; a property we describe as "brittle." We show how to train a conditional normalizing flow to propose perturbations such that the simulator succeeds with high probability, increasing computational efficiency.

READ FULL TEXT
research
06/15/2022

Deterministic and Random Perturbations of the Kepler Problem

We investigate perturbations in the Kepler problem. We offer an overview...
research
05/09/2012

Deterministic POMDPs Revisited

We study a subclass of POMDPs, called Deterministic POMDPs, that is char...
research
09/08/2022

Most probable flows for Kunita SDEs

We identify most probable flows for Kunita Brownian motions, i.e. stocha...
research
04/09/2018

Cauchy noise loss for stochastic optimization of random matrix models via free deterministic equivalents

Based on free probability theory and stochastic optimization, we introdu...
research
02/05/2020

Evaluating approval-based multiwinner voting in terms of robustness to noise

Approval-based multiwinner voting rules have recently received much atte...
research
08/20/2023

Explaining Emergence

Emergence is a pregnant property in various fields. It is the fact for a...
research
12/09/2014

POPE: Post Optimization Posterior Evaluation of Likelihood Free Models

In many domains, scientists build complex simulators of natural phenomen...

Please sign up or login with your details

Forgot password? Click here to reset