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Rate-Informed Discovery via Bayesian Adaptive Multifidelity Sampling

Authors :
Sinha, Aman
Nikdel, Payam
Paul, Supratik
Whiteson, Shimon
Publication Year :
2024

Abstract

Ensuring the safety of autonomous vehicles (AVs) requires both accurate estimation of their performance and efficient discovery of potential failure cases. This paper introduces Bayesian adaptive multifidelity sampling (BAMS), which leverages the power of adaptive Bayesian sampling to achieve efficient discovery while simultaneously estimating the rate of adverse events. BAMS prioritizes exploration of regions with potentially low performance, leading to the identification of novel and critical scenarios that traditional methods might miss. Using real-world AV data we demonstrate that BAMS discovers 10 times as many issues as Monte Carlo (MC) and importance sampling (IS) baselines, while at the same time generating rate estimates with variances 15 and 6 times narrower than MC and IS baselines respectively.<br />Comment: Published at CoRL 2024: https://openreview.net/forum?id=bftFwjSJxk

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2411.17826
Document Type :
Working Paper