AI RESEARCH

Scalable Simulation-Based Model Inference with Test-Time Complexity Control

arXiv CS.AI

ArXi:2603.15292v1 Announce Type: cross Simulation plays a central role in scientific discovery. In many applications, the bottleneck is no longer running a simulator; it is choosing among large families of plausible simulators, each corresponding to different forward models/hypotheses consistent with observations. Over large model families, classical Bayesian workflows for model selection are impractical. Furthermore, amortized model selection methods typically hard-code a fixed model prior or complexity penalty at