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Predictable Artificial Intelligence

9 October 2023
Lexin Zhou
Pablo Antonio Moreno Casares
Fernando Martínez-Plumed
John Burden
Ryan Burnell
Lucy G. Cheke
Cesar Ferri
Alexandru Marcoci
Behzad Mehrbakhsh
Yael Moros-Daval
Seán Ó hÉigeartaigh
Danaja Rutar
Wout Schellaert
Konstantinos Voudouris
José Hernández-Orallo
ArXiv (abs)PDFHTML
Abstract

We introduce the fundamental ideas and challenges of Predictable AI, a nascent research area that explores the ways in which we can anticipate key validity indicators (e.g., performance, safety) of present and future AI ecosystems. We argue that achieving predictability is crucial for fostering trust, liability, control, alignment and safety of AI ecosystems, and thus should be prioritised over performance. We formally characterise predictability, explore its most relevant components, illustrate what can be predicted, describe alternative candidates for predictors, as well as the trade-offs between maximising validity and predictability. To illustrate these concepts, we bring an array of illustrative examples covering diverse ecosystem configurations. Predictable AI is related to other areas of technical and non-technical AI research, but have distinctive questions, hypotheses, techniques and challenges. This paper aims to elucidate them, calls for identifying paths towards a landscape of predictably valid AI systems and outlines the potential impact of this emergent field.

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