Anticipatory Thinking Challenges in Open Worlds: Risk Management

06/22/2023
by   Adam Amos-Binks, et al.
0

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 provide difficult examples but are laborious to curate and static, both barriers to real-world risk management. Adversarial robustness focuses on model poisoning under the assumption there is an adversary with malicious intent, without considering naturally occurring adversarial examples. These methods are all important steps towards improving risk management but do so without considering open-worlds. We unify these open-world risk management challenges with two contributions. The first is our perception challenges, designed for agents with imperfect perceptions of their environment whose consequences have a high impact. Our second contribution are cognition challenges, designed for agents that must dynamically adjust their risk exposure as they identify new risks and learn new mitigations. Our goal with these challenges is to spur research into solutions that assess and improve the anticipatory thinking required by AI agents to manage risk in open-worlds and ultimately the real-world.

READ FULL TEXT

page 1

page 2

page 3

research
12/16/2022

Three lines of defense against risks from AI

Organizations that develop and deploy artificial intelligence (AI) syste...
research
04/21/2022

The Risks of Machine Learning Systems

The speed and scale at which machine learning (ML) systems are deployed ...
research
03/20/2022

Synergy between 6G and AI: Open Future Horizons and Impending Security Risks

This paper investigates the synergy between 6G and AI. It argues that th...
research
06/16/2023

You Don't Need Robust Machine Learning to Manage Adversarial Attack Risks

The robustness of modern machine learning (ML) models has become an incr...
research
06/28/2019

Anticipatory Thinking: A Metacognitive Capability

Anticipatory thinking is a complex cognitive process for assessing and m...
research
03/28/2020

AI reputational risk management

The benefits of AI are many. It can help tackle climate change, strength...
research
03/24/2022

A Manifold View of Adversarial Risk

The adversarial risk of a machine learning model has been widely studied...

Please sign up or login with your details

Forgot password? Click here to reset