AIDec 31, 2018

Impossibility and Uncertainty Theorems in AI Value Alignment (or why your AGI should not have a utility function)

arXiv:1901.00064v356 citations
Originality Incremental advance
AI Analysis

This addresses a foundational issue for AI safety in domains like healthcare or autonomous weapons, though it is incremental in proposing alternatives to existing methods.

The paper tackles the problem of using utility functions in AI systems for high-stakes decisions, arguing they are impractical due to impossibility theorems from ethics, and proposes uncertain objectives as an alternative, showing these lead to uncertainty theorems with proven lower bounds.

Utility functions or their equivalents (value functions, objective functions, loss functions, reward functions, preference orderings) are a central tool in most current machine learning systems. These mechanisms for defining goals and guiding optimization run into practical and conceptual difficulty when there are independent, multi-dimensional objectives that need to be pursued simultaneously and cannot be reduced to each other. Ethicists have proved several impossibility theorems that stem from this origin; those results appear to show that there is no way of formally specifying what it means for an outcome to be good for a population without violating strong human ethical intuitions (in such cases, the objective function is a social welfare function). We argue that this is a practical problem for any machine learning system (such as medical decision support systems or autonomous weapons) or rigidly rule-based bureaucracy that will make high stakes decisions about human lives: such systems should not use objective functions in the strict mathematical sense. We explore the alternative of using uncertain objectives, represented for instance as partially ordered preferences, or as probability distributions over total orders. We show that previously known impossibility theorems can be transformed into uncertainty theorems in both of those settings, and prove lower bounds on how much uncertainty is implied by the impossibility results. We close by proposing two conjectures about the relationship between uncertainty in objectives and severe unintended consequences from AI systems.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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