THAIJan 12

A Model of Artificial Jagged Intelligence

arXiv:2601.07573v13 citationsh-index: 4SSRN
Originality Incremental advance
AI Analysis

This addresses the challenge of unpredictable AI performance for users and developers, offering a theoretical framework to understand adoption and scaling effects, though it is incremental in applying economic modeling to AI reliability.

The paper tackles the problem of uneven performance in generative AI systems, termed Artificial Jagged Intelligence (AJI), by developing an economic model that explains adoption based on local reliability and user information. The result shows that scaling improves average quality but does not eliminate jaggedness, with learning rates bounded by information gain.

Generative AI systems often display highly uneven performance across tasks that appear ``nearby'': they can be excellent on one prompt and confidently wrong on another with only small changes in wording or context. We call this phenomenon Artificial Jagged Intelligence (AJI). This paper develops a tractable economic model of AJI that treats adoption as an information problem: users care about \emph{local} reliability, but typically observe only coarse, global quality signals. In a baseline one-dimensional landscape, truth is a rough Brownian process, and the model ``knows'' scattered points drawn from a Poisson process. The model interpolates optimally, and the local error is measured by posterior variance. We derive an adoption threshold for a blind user, show that experienced errors are amplified by the inspection paradox, and interpret scaling laws as denser coverage that improves average quality without eliminating jaggedness. We then study mastery and calibration: a calibrated user who can condition on local uncertainty enjoys positive expected value even in domains that fail the blind adoption test. Modelling mastery as learning a reliability map via Gaussian process regression yields a learning-rate bound driven by information gain, clarifying when discovering ``where the model works'' is slow. Finally, we study how scaling interacts with discoverability: when calibrated signals and user mastery accelerate the harvesting of scale improvements, and when opacity can make gains from scaling effectively invisible.

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