Rapid Mixing on Random Regular Graphs beyond Uniqueness
By: Xiaoyu Chen , Zejia Chen , Zongchen Chen and more
Potential Business Impact:
Makes computers solve hard problems much faster.
The hardcore model is a fundamental probabilistic model extensively studied in statistical physics, probability theory, and computer science. For graphs of maximum degree $\Delta$, a well-known computational phase transition occurs at the tree-uniqueness threshold $\lambda_c(\Delta) = \frac{(\Delta-1)^{\Delta-1}}{(\Delta-2)^\Delta}$, where the mixing behavior of the Glauber dynamics (a simple Markov chain) undergoes a sharp transition. It is conjectured that random regular graphs exhibit different mixing behavior, with the slowdown occurring far beyond the uniqueness threshold. We confirm this conjecture by showing that, for the hardcore model on random $\Delta$-regular graphs, the Glauber dynamics mixes rapidly with high probability when $\lambda = O(1/\sqrt{\Delta})$, which is significantly beyond the uniqueness threshold $\lambda_c(\Delta) \approx e/\Delta$. Our result establishes a sharp distinction between the hardcore model on worst-case and beyond-worst-case instances, showing that the worst-case and average-case complexities of sampling and counting are fundamentally different. This result of rapid mixing on random instances follows from a new criterion we establish for rapid mixing of Glauber dynamics for any distribution supported on a downward closed set family. Our criterion is simple, general, and easy to check. In addition to proving new mixing conditions for the hardcore model, we also establish improved mixing time bounds for sampling uniform matchings or $b$ matchings on graphs, the random cluster model on matroids with $q \in [0,1)$, and the determinantal point process. Our proof of this new criterion for rapid mixing combines and generalizes several recent tools in a novel way, including a trickle down theorem for field dynamics, spectral/entropic stability, and a new comparison result between field dynamics and Glauber dynamics.
Similar Papers
Improved Mixing of Critical Hardcore Model
Data Structures and Algorithms
Helps computers find patterns faster in complex data.
Subexponential and Parameterized Mixing Times of Glauber Dynamics on Independent Sets
Data Structures and Algorithms
Finds patterns faster in complex networks.
Rapid Mixing of Glauber Dynamics for Monotone Systems via Entropic Independence
Discrete Mathematics
Makes computer models learn faster and better.