Anticipatory Thinking Challenges in Open Worlds: Risk Management
Adam Amos-Binks, Dustin Dannenhauer, Leilani H. Gilpin

TL;DR
This paper introduces new perception and cognition challenges to improve AI agents' anticipatory thinking for risk management in open-world environments, addressing real-world unpredictability.
Contribution
It unifies open-world risk management challenges and proposes perception and cognition challenges to enhance AI's anticipatory risk management capabilities.
Findings
Designed perception challenges for agents with imperfect perceptions
Developed cognition challenges for dynamic risk adjustment
Aims to stimulate research in open-world risk management solutions
Abstract
Anticipatory thinking drives our ability to manage risk - identification and mitigation - in everyday life, from bringing an umbrella when it might rain to buying car insurance. As AI systems become part of everyday life, they too have begun to manage risk. Autonomous vehicles log millions of miles, StarCraft and Go agents have similar capabilities to humans, implicitly managing risks presented by their opponents. To further increase performance in these tasks, out-of-distribution evaluation can characterize a model's bias, what we view as a type of risk management. However, learning to identify and mitigate low-frequency, high-impact risks is at odds with the observational bias required to train machine learning models. StarCraft and Go are closed-world domains whose risks are known and mitigations well documented, ideal for learning through repetition. Adversarial filtering datasets…
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Taxonomy
TopicsAdversarial Robustness in Machine Learning · Anomaly Detection Techniques and Applications · Bacillus and Francisella bacterial research
