English

Reconciling Individual Probability Forecasts

Machine Learning 2023-05-09 v2 Data Structures and Algorithms Statistics Theory Statistics Theory

Abstract

Individual probabilities refer to the probabilities of outcomes that are realized only once: the probability that it will rain tomorrow, the probability that Alice will die within the next 12 months, the probability that Bob will be arrested for a violent crime in the next 18 months, etc. Individual probabilities are fundamentally unknowable. Nevertheless, we show that two parties who agree on the data -- or on how to sample from a data distribution -- cannot agree to disagree on how to model individual probabilities. This is because any two models of individual probabilities that substantially disagree can together be used to empirically falsify and improve at least one of the two models. This can be efficiently iterated in a process of "reconciliation" that results in models that both parties agree are superior to the models they started with, and which themselves (almost) agree on the forecasts of individual probabilities (almost) everywhere. We conclude that although individual probabilities are unknowable, they are contestable via a computationally and data efficient process that must lead to agreement. Thus we cannot find ourselves in a situation in which we have two equally accurate and unimprovable models that disagree substantially in their predictions -- providing an answer to what is sometimes called the predictive or model multiplicity problem.

Keywords

Cite

@article{arxiv.2209.01687,
  title  = {Reconciling Individual Probability Forecasts},
  author = {Aaron Roth and Alexander Tolbert and Scott Weinstein},
  journal= {arXiv preprint arXiv:2209.01687},
  year   = {2023}
}

Comments

This is the full version of a paper that appears in the proceedings of FAccT 2023: The Sixth Annual ACM Conference on Fairness, Accountability, and Transparency, 2023

R2 v1 2026-06-28T00:42:37.715Z