Recent advances in artificial intelligence reveal the limits of purely predictive systems and call for a shift toward causal and collaborative reasoning. Drawing inspiration from the revolution of Grothendieck in mathematics, we introduce the relativity of causal knowledge, which posits structural causal models (SCMs) are inherently imperfect, subjective representations embedded within networks of relationships. By leveraging category theory, we arrange SCMs into a functor category and show that their observational and interventional probability measures naturally form convex structures. This result allows us to encode non-intervened SCMs with convex spaces of probability measures. Next, using sheaf theory, we construct the network sheaf and cosheaf of causal knowledge. These structures enable the transfer of causal knowledge across the network while incorporating interventional consistency and the perspective of the subjects, ultimately leading to the formal, mathematical definition of relative causal knowledge.

The Relativity of Causal Knowledge / D'Acunto, Gabriele; Battiloro, Claudio. - (2025). (Intervento presentato al convegno Conference on Uncertainty in Artificial Intelligence tenutosi a Rio de Janeiro; Brasile).

The Relativity of Causal Knowledge

Gabriele D'Acunto
Primo
;
Claudio Battiloro
2025

Abstract

Recent advances in artificial intelligence reveal the limits of purely predictive systems and call for a shift toward causal and collaborative reasoning. Drawing inspiration from the revolution of Grothendieck in mathematics, we introduce the relativity of causal knowledge, which posits structural causal models (SCMs) are inherently imperfect, subjective representations embedded within networks of relationships. By leveraging category theory, we arrange SCMs into a functor category and show that their observational and interventional probability measures naturally form convex structures. This result allows us to encode non-intervened SCMs with convex spaces of probability measures. Next, using sheaf theory, we construct the network sheaf and cosheaf of causal knowledge. These structures enable the transfer of causal knowledge across the network while incorporating interventional consistency and the perspective of the subjects, ultimately leading to the formal, mathematical definition of relative causal knowledge.
2025
Conference on Uncertainty in Artificial Intelligence
structural causal model; relative causal knowledge; category theory; network sheaves; causal abstraction
04 Pubblicazione in atti di convegno::04b Atto di convegno in volume
The Relativity of Causal Knowledge / D'Acunto, Gabriele; Battiloro, Claudio. - (2025). (Intervento presentato al convegno Conference on Uncertainty in Artificial Intelligence tenutosi a Rio de Janeiro; Brasile).
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/1745527
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