The monotonicity of the Franz-Parisi potential is equivalent with Low-degree MMSE lower bounds

arXiv stat.ML / 3/23/2026

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Key Points

  • The paper addresses a long-standing open problem by proving an equivalence between low-degree MMSE lower bounds (a rigorous hardness approach) and the monotonicity of the annealed Franz–Parisi (FP) potential (a statistical-physics hardness approach) for a broad class of Gaussian additive models (GAMs).
  • It establishes that, for these estimation problems, the effectiveness of low-degree polynomial estimators is tightly linked to whether the annealed FP potential exhibits monotonic behavior as a function of model parameters like the signal-to-noise ratio λ.
  • The authors derive implications for computational limits: assuming a low-degree conjecture for GAMs, the polynomial-time boundary of detectability/estimation can be inferred from FP-potential monotonicity.
  • The result conceptually aligns rigorous mathematics with physics predictions from the 1990s about using local stability/monotonicity to forecast algorithmic hardness.

Abstract

Over the last decades, two distinct approaches have been instrumental to our understanding of the computational complexity of statistical estimation. The statistical physics literature predicts algorithmic hardness through local stability and monotonicity properties of the Franz--Parisi (FP) potential \cite{franz1995recipes,franz1997phase}, while the mathematically rigorous literature characterizes hardness via the limitations of restricted algorithmic classes, most notably low-degree polynomial estimators \cite{hopkins2017efficient}. For many inference models, these two perspectives yield strikingly consistent predictions, giving rise to a long-standing open problem of establishing a precise mathematical relationship between them. In this work, we show that for estimation problems the power of low-degree polynomials is equivalent to the monotonicity of the annealed FP potential for a broad family of Gaussian additive models (GAMs) with signal-to-noise ratio \lambda. In particular, subject to a low-degree conjecture for GAMs, our results imply that the polynomial-time limits of these models are directly implied by the monotonicity of the annealed FP potential, in conceptual agreement with predictions from the physics literature dating back to the 1990s.