The Institutional Production of Causation: Predictive Classification and the Governance of Human Behaviour
Abstract
Causation is increasingly produced prospectively through institutional systems rather than reconstructed retrospectively from events. Contemporary predictive systems generate causal environments through algorithmic classification, risk scoring, and procedural governance that structure behaviour, allocate resources, and determine outcomes before events occur.
This article demonstrates that classification functions as causal infrastructure by enabling governance through probabilistic association without mechanistic explanation. Historical evidence reveals that classification-based governance has long operated through procedural consistency rather than causal understanding.
The analysis examines how predictive classification reshapes human behaviour by displacing decision-making, restructuring agency, diffusing responsibility, and producing stratified opportunity structures.
These findings require reconceptualising causation itself: institutional systems do not measure pre-existing causal relationships but generate causal environments through systematic classification that operates prospectively.