AI RESEARCH
Trees to Flows and Back: Unifying Decision Trees and Diffusion Models
arXiv CS.AI
•
ArXi:2605.00414v1 Announce Type: cross Decision trees and diffusion models are ostensibly disparate model classes, one discrete and hierarchical, the other continuous and dynamic. This work unifies the two by establishing a crisp mathematical correspondence between hierarchical decision trees and diffusion processes in appropriate limiting regimes. Our unification reveals a shared optimization principle: \emph{Global Trajectory Score Matching (GTSM)}, for which gradient boosting (in an idealized version) is asymptotically optimal.