AI RESEARCH

Prismatic World Model: Learning Compositional Dynamics for Planning in Hybrid Systems

arXiv CS.AI

ArXi:2512.08411v2 Announce Type: replace Model-based planning in robotic domains is challenged by the hybrid nature of physical dynamics, where continuous motion is punctuated by discrete events such as contacts and impacts. Conventional latent world models typically employ monolithic neural networks that enforce global continuity, which over-smooths distinct dynamic modes (e.g., sticking vs. sliding, flight vs. stance). For a planner, this smoothing results in compounding errors during long-horizon lookaheads, rendering the search process unreliable at physical boundaries.