Title: Combinatorial optimization and the mean field model
1Combinatorial optimization and the mean field
model
- Johan Wästlund
- Chalmers University of Technology
- Sweden
2Random instances of optimization problems
3Random instances of optimization problems
4Random instances of optimization problems
- Typical distance between nearby points is of
order n-1/2
5Random instances of optimization problems
- A tour consists of n links, therefore we expect
the total length of the minimum tour to scale
like n1/2 - Beardwood-Halton-Hammersley (1959)
6Mean field model of distance
- Distances Xij chosen as i.i.d. variables
- Given n and the distribution of distances, study
the random variable Ln - If the distribution models distances in d
dimensions, we expect Ln to scale like n1-1/d - In particular, pseudo-dimension 1 means Ln is
asymptotically independent of n
7Mean field model of distance
- The edges of a complete graph on n vertices are
given i. i. d. nonnegative costs - Exponential(1) distribution.
8Mean field model of distance
- We are interested in the cost of the minimum
matching, minimum traveling salesman tour etc,
for large n.
9Mean field model of distance
Convergence in probability to a constant?
10Matching
- Set of edges that gives a pairing of all points
11Statistical Physics / C-S
- Spin configuration
- Hamiltonian
- Ground state energy
- Temperature
- Gibbs measure
- Thermodynamic limit
- Feasible solution
- Cost of solution
- Cost of minimal solution
- Artificial parameter T
- Gibbs measure
- n?8
12Statistical physics
- Replica-cavity method of statistical mechanics
has given spectacular predictions for random
optimization problems - M. Mézard, G. Parisi 1980s
- Limit of p2/12 for minimum matching on the
complete graph (Aldous 2000) - Limit 2.0415 for the TSP (Wästlund 2006)
13- A. Frieze (2004) Up to now there has been
almost no progress analysing this random model of
the travelling salesman problem. - N. J. Cerf et al (1997) Researchers outside
physics remain largely unaware of the analytical
progress made on the random link TSP.
14Non-rigorous derivation of the p2/12 limit
- Matching problem on Kn for large n.
- In principle, this requires even n, but we shall
consider a relaxation - Let the edges be exponential of mean n, so that
the sequence of ordered edge costs from a given
vertex is approximately a Poisson process of rate
1.
15Non-rigorous derivation of the p2/12 limit
- The total cost of the minimum matching is of
order n. - Introduce a punishment cgt0 for not using a
particular vertex. - This makes the problem well-defined also for odd
n. - For fixed c, let n tend to infinity.
- As c tends to infinity, we expect to recover the
behavior of the original problem.
16Non-rigorous derivation of the p2/12 limit
- For large n, suppose that the problem behaves in
the same way for n-1 vertices. - Choose an arbitrary vertex to be the root
- What does the graph look like locally around the
root? - When only edges of cost lt2c are considered, the
graph becomes locally tree-like
17Non-rigorous derivation of the p2/12 limit
- Non-rigorous replica-cavity method
- Aldous derived equivalent equations with the
Poisson-Weighted Infinite Tree (PWIT)
18Non-rigorous derivation of the p2/12 limit
- Let X be the difference in cost between the
original problem and that with the root removed. - If the root is not matched, then X c. Otherwise
X xi Xi, where Xi is distributed like X, and
xi is the cost of the ith edge from the root. - The Xis are assumed to be independent.
19Non-rigorous derivation of the p2/12 limit
- It remains to do some calculations.
- We have
- where Xi is distributed like X
20Non-rigorous derivation of the p2/12 limit
-u
21Non-rigorous derivation of the p2/12 limit
22Non-rigorous derivation of the p2/12 limit
Hence
is constant
23Non-rigorous derivation of the p2/12 limit
f(-u)
- The constant depends on c and holds when
- cltultc
f(u)
24Non-rigorous derivation of the p2/12 limit
- From definition, exp(-f(c)) P(Xc) proportion
of vertices that are not matched, and exp(-f(-c))
exp(0) 1 - e-f(u) e-f(-u) 2 proportion of vertices
that are matched 1 when c infinity.
25Non-rigorous derivation of the p2/12 limit
26Non-rigorous derivation of the p2/12 limit
- What about the cost of the minimum matching?
27Non-rigorous derivation of the p2/12 limit
28Non-rigorous derivation of the p2/12 limit
29Non-rigorous derivation of the p2/12 limit
- Hence J area under the curve when f(u) is
plotted against f(-u)! - Expected cost n/2 times this area
- In the original setting ½ times the area
- p2/12.
30- The equation has the explicit solution
- This gives the cost
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32The exponential bipartite assignment problem
n
33The exponential bipartite assignment problem
- Exact formula conjectured by Parisi (1998)
- Suggests proof by induction
- Researchers in discrete math, combinatorics and
graph theory became interested - Generalizations
34Generalizations
- by Coppersmith Sorkin to incomplete matchings
- Remarkable paper by M. Buck, C. Chan D. Robbins
(2000) - Introduces weighted vertices
- Extremely close to proving Parisis conjecture!
35Incomplete matchings
n
m
36Weighted assignment problems
- Weights ?1,,?m, ?1,, ?n on vertices
- Edge cost exponential of rate ?i?j
- Conjectured formula for the expected cost of
minimum assignment - Formula for the probability that a vertex
participates in solution (trivial for less
general setting!)
37The Buck-Chan-Robbins urn process
- Balls are drawn with probabilities proportional
to weight
38Proofs of the conjectures
- Two independent proofs of the Parisi and
Coppersmith-Sorkin conjectures in 2003 (Nair,
Prabhakar, Sharma and Linusson, Wästlund)
39Rigorous method
- Relax by introducing an extra vertex
- Let the weight of the extra vertex go to zero
- Example Assignment problem with
- ?1?m1, ?1?n1, and ?m1 ?
- p P(extra vertex participates)
- p/n P(edge (m1,n) participates)
40Rigorous method
- p/n P(edge (m1,n) participates)
- When ??0, this is
- Hence
- By Buck-Chan-Robbins urn theorem,
41Rigorous method
- Hence
- Inductively this establishes the
Coppersmith-Sorkin formula
42Rigorous results
- Much simpler proofs of Parisi, Coppersmith-Sorkin,
Buck-Chan-Robbins formulas - Exact results for higher moments
- Exact results and limits for optimization
problems on the complete graph
43The 2-dimensional urn process
- 2-dimensional time until k balls have been drawn
44Limit shape as n?8
45Mean field TSP
- If the edge costs are i.i.d and satisfy
P(lltt)/t?1 as t?0 (pseudodimension 1), then as n
?8,
46- For the TSP, the replica-cavity approach gives
47- It follows that
- is constant, and 1 by boundary conditions
- Replica-cavity prediction agrees with the
rigorous result (Parisi 2006)
48Further exact formulas
49LP-relaxation of matching in the complete graph Kn
50Future work
- Explain why the cavity method gives the same
equation as the limit shape in the urn process - Reprove results of one method with the other
- Find the variance with the replica method
- Find rigorously the distribution of edge costs
participating in the solution (there is an exact
conjecture)
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