English

Quantifying how AI Panels improve precision

Computers and Society 2026-04-24 v2 Artificial Intelligence Machine Learning Econometrics

Abstract

AI in applications like screening job applicants had become widespread, and may contribute to unemployment especially among the young. Biases in the AIs may become baked into the job selection process, but even in their absence, reliance on a single AI is problematic. In this paper we derive a simple formula to estimate, or at least place an upper bound on, the precision of such approaches for data resembling realistic CVs: P(q)ρnb+q(1ρ)1+(nb1)ρP(q) \approx \frac{\rho n^b + q(1-\rho)}{1 + (n^b - 1)\rho} where bq+0.8(1ρ)b \approx q^* + 0.8 (1 - \rho) and qq^* is qq clipped to [0.07,0.22][0.07, 0.22] where P(q)P(q) is the precision of the top qq quantile selected by a panel of nn AIs and ρ\rho is their average pairwise correlation. This equation provides a basis for considering how many AIs should be used in a Panel, depending on the importance of the decision. A quantitative discussion of the merits of using a diverse panel of AIs to support decision-making in such areas will move away from dangerous reliance on single AI systems and encourage a balanced assessment of the extent to which diversity needs to be built into the AI parts of the socioeconomic systems that are so important for our future.

Keywords

Cite

@article{arxiv.2604.16432,
  title  = {Quantifying how AI Panels improve precision},
  author = {Nicholas CL Beale},
  journal= {arXiv preprint arXiv:2604.16432},
  year   = {2026}
}

Comments

11 pages, 8 Figures, 13pp of Supplementary Information

R2 v1 2026-07-01T12:14:59.247Z