Phase Transitions, Mixing Times and
the Ising Model on Trees
Alistair Sinclair, UC Berkeley (currently
visiting Microsoft Research)
November 11, 2003, Wean 7220
Abstract:
The mixing time of Markov chain Monte Carlo algorithms provides
one of the most compelling examples to date of the emerging connection
between phase transitions and computational complexity. Roughly
speaking, the physical notion of a phase transition frequently
has a computational manifestation in the form of a sudden jump
in the mixing time.
In this talk I will illustrate the above phenomenon in the special
case of the Ising model on trees, and also address the important
related issue of the effect of boundary conditions on the mixing
time. The techniques we use are quite general, and extend to many
other models including the hard-core model (independent sets)
and the Potts model (colorings).
This is joint work with Fabio Martinelli
and Dror Weitz.
No knowledge of statistical physics will be assumed.