Evolution and The Knightian Blindspot of Machine Learning
Joel Lehman, Elliot Meyerson, Tarek El-Gaaly, Kenneth O., Stanley, Tarin Ziyaee

TL;DR
This paper highlights a critical oversight in machine learning, specifically its neglect of Knightian uncertainty, which hampers robustness in open-world scenarios, and suggests biological evolution as a model for overcoming this blind spot.
Contribution
The paper identifies the neglect of Knightian uncertainty in ML formalisms and proposes evolutionary mechanisms as a pathway to improve robustness to unknown challenges.
Findings
Reinforcement learning struggles with unforeseen open-world situations.
Biological evolution achieves robustness without explicit formalism.
Addressing Knightian uncertainty could enhance ML robustness.
Abstract
This paper claims that machine learning (ML) largely overlooks an important facet of general intelligence: robustness to a qualitatively unknown future in an open world. Such robustness relates to Knightian uncertainty (KU) in economics, i.e. uncertainty that cannot be quantified, which is excluded from consideration in ML's key formalisms. This paper aims to identify this blind spot, argue its importance, and catalyze research into addressing it, which we believe is necessary to create truly robust open-world AI. To help illuminate the blind spot, we contrast one area of ML, reinforcement learning (RL), with the process of biological evolution. Despite staggering ongoing progress, RL still struggles in open-world situations, often failing under unforeseen situations. For example, the idea of zero-shot transferring a self-driving car policy trained only in the US to the UK currently…
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Taxonomy
TopicsComputability, Logic, AI Algorithms · Evolutionary Algorithms and Applications
