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Multicommodity flow, well-linked terminals and routing problems Chandra Chekuri Lucent Bell Labs Joint work with Sanjeev Khanna and Bruce Shepherd – PowerPoint PPT presentation

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Title: Multicommodity flow, well-linked terminals and routing problems


1
Multicommodity flow, well-linked terminals and
routing problems
  • Chandra Chekuri
  • Lucent Bell Labs

Joint work with Sanjeev Khanna and Bruce
Shepherd Mostly based on paper in STOC 05
2
Routing Problems
  • Input Graph G(V,E), node pairs s1t1, s2t2, ...,
    sktk
  • Goal Route a maximum of si-ti pairs
  • Route?
  • EDP path for each pair, paths edge disjoint
  • NDP paths are node disjoint
  • AN-Flow flow of one unit per pair with edge/node
    capacity equal to 1

3
Disjoint paths vs An-Flow
4
Setup
  • Terminals X s1,t1,s2,t2,...,sk,tk
  • each terminal occurs in exactly one pair, X
    2k
  • Pairs matching M on X
  • Instance (G,X,M)
  • unit capacity graph
  • Focus edge problems, EDP and An-flow.

5
Multicommodity Flow Formulation (IP)
  • P(i) set of paths between si and ti
  • P P(1) P(2) ... P(k)
  • f(p) 1 if flow on path p 2 P, 0 otherwise
  • xi 1 if siti is routed, 0 otherwise
  • max åi xi s.t
  • xi åp 2 P(i) f(p) 1 i k
  • åp e 2 p f(p) 1 e 2 E
  • xi, f(p) 2 0,1

6
Multicommodity Flow Formulation (LP)
  • P(i) set of paths between si and ti
  • P P(1) P(2) ... P(k)
  • f(p) flow on path p 2 P
  • xi amount of flow routed for siti
  • max åi xi s.t
  • xi åp 2 P(i) f(p) 1 i k
  • åp e 2 p f(p) 1 e 2 E
  • xi, f(p) 2 0,1

7
Framework
  1. Start with an LP solution.
  2. Use LP solution to decompose the input instance
    into a collection well-linked instances.
  3. Use well-linkedness to route large fraction

8
Outline
  • Cut vs Flow well-linkedness
  • Well-linked decomposition
  • Multicommodity flow to well-linked decomp
  • decomposition via cuts
  • fractional well-linkedness to well-linkedness
  • Conclusions

9
Multicommodity Flows
  • MC Flow instance
  • capacitated graph G
  • non-negative demand matrix d on V x V
  • route dij flow for node pair ij
  • Product MC Flow instance
  • node weights p V ! R
  • implicitly defines d with dij p(i)p(j) / p(V)

10
Sparse Cuts and Multicomm. Flow
  • Given a cut (S, V-S) in G and demand matrix d
  • sparsity of S d(S) / d(S,V-S)
  • MCflow for d is feasible in G implies sparsity 1

S
V - S
11
Sparse Cuts and MC Flow
  • MCflow for d is feasible in G implies sparsity
    1
  • d is feasible in G if sparsity W(log n)
  • LR88,LLR94,AR94
  • For product MC Flow in planar G, sparisty of W(1)
    sufficient KPR93
  • Flow-cut gap b(G) minimum sparsity reqd for
    guaranteeing mc flow

12
Cut-Well-linked Set
  • Subset X is cut-well-linked in G if for every
    partition (S,V-S) , of edges cut is at least
    of X vertices in smaller side

for all S ½ V with S Å X X/2, d(S) S
Å X
13
Flow-Well-linked Set
  • Subset X is flow-well-linked in G if the
    following multicommodity flow is feasible in G
  • for u,v in X, d(uv) 1/X
  • product (uniform) multicommodity flow on X
  • p(u) 1 if u 2 X
  • 0 otherwise

14
Cut vs Flow well-linked
  • X flow-linked ) X is cut-linked
  • X cut-linked ) X flow-linked with congestion b(G)
  • b(G) worst case flow-cut gap for product
    multicommodity instances in G

15
Weighted versions
  • p X ! R weight function on X
  • p(v) weight of v in X
  • p-cut-linked for all S ½ V with p(S Å X)
    p(X)/2, d(S) p(S Å X)
  • p-flow-linked multicommodity flow instance with
    d(uv) p(u) p(v) / p(X) is feasible in G

16
Well-linked instance of EDP
  • Input instance G, X, M
  • X s1, t1, s2, t2, ..., sk, tk terminal set
  • M matching on X
  • (s1,t1), (s2,t2) ... (sk,tk)
  • X is well-linked in G

17
Well-linked instance weighted
  • Input instance G, X, M
  • X s1, t1, s2, t2, ..., sk, tk terminal set
  • M matching on X
  • (s1,t1), (s2,t2) ... (sk,tk)
  • X is p-well-linked in G for some p X ! R
  • Assume p(v) 1

18
Examples
Not a well-linked instance
A well-linked instance
19
Well-linked Decomposition
G, X, M
edge disjoint subgraphs
G1, X1, M1
G2, X2, M2
Gr, Xr, Mr
Mi ½ M Xi is well-linked in Gi
åi Xi OPT/a
20
Example
s2
t2
s2
t2
s3
t3
s4
t4
s3
t3
s4
t4
21
Well-linked Decomposition via Flow
G, X, M Flow f
G1, X1, M1
G2, X2, M2
Gr, Xr, Mr
Xi is pi-flow-well-linked in Gi
åi pi(Xi) f/a
22
Decomposition via trees/Racke
  • Simple decomposition for trees a O(1)
  • Represent G as a tree (approximately) Racke03
  • Done in CKS04
  • Decomposition based on recursive cuts CKS05
  • simple
  • better ratio
  • applies to node problems

23
Trees
  • Define p X ! R
  • p(sj) p(tj) fj the flow in LP
  • Suppose X is p/10-flow-well-linked done!
  • Otherwise exists cut of sparsity less than 1/10
  • Pick sparse cut (S,V-S) with S minimal

24
Trees
ce lt p(S)/10
V - S
S
terminals in S are p-well-linked!
25
Decomposition using Sparse Cuts
  • Start with LP soln for given instance
  • fj flow for pair sjtj assume flow decomposition
  • f åj fj total flow in LP
  • define p X ! R
  • p(sj) p(tj) fj

26
Decomposition Algorithm
  • If X is p / 10 b(G) log k-flow-linked STOP
  • Else
  • Find a (approx) sparse cut (S,V-S) wrt p in G
  • Remove flow on edges of dG(S)
  • G1 GS, G2 GV-S
  • Recurse on G1, G2 with remaining flow

27
Analysis
  • Remaining graphs at end of recursion
  • (G1,X1,p1) , (G2,X2,p2) , ...., (Gh, Xh, ph)
  • pi is the remaining flow for Xi
  • Xi is pi /10 b(G) log k flow-linked in G_i
  • åi pi(Xi) Original flow - edges cut

28
Bounding the number of edges cut
  • X is not p / 10 b(G) log k flow-linked
  • ) dG(S) p(S) / 10 log k

29
Analysis cont
  • Theorem total number of edge cut is f/2
  • T(x) max of edges cut if started with flow x
  • T(f) T(f1) T(f2) f1 / 10 log k
  • For f k, T(f) f/2

30
Analysis contd
  • åi pi (Xi) f/2
  • Xi is pi/10 b(G) log k flow-well-linked

31
Fractional to integer well-linked
  • Theorem
  • G, X, M input instance. X is p-flow-well-linked.
  • Then G, X, M s.t
  • M ½ M,
  • X is flow-well-linked
  • X W(p(X))

32
Edge case spanning tree clustering
  • T spanning tree of G, rooted at r
  • Tv subtree rooted at v
  • Can assume maximum degree of T is 4
  • 1. Find deepest node u s.t p(Tu) 1
  • Note p(Tu) 5
  • 2. Remove Tu from T
  • 3. Continue until p(T) 1

33
Spanning tree clustering
0.3
0.6
0.4
0.2
0.4
0.3
0.8
0.4
0.5
0.7
0.1
34
Spanning tree clustering
0.3
0.6
0.3
0.6
0.4
0.4
0.2
0.2
0.4
0.4
0.3
0.8
0.4
0.5
0.7
0.1
0.3
0.1
35
Tree clustering
  • T1, T2, ..., Th clusters
  • Claim h W(p(X))
  • Y is a set of representatives if Y Å Ti 1 for
    all i
  • Lemma Y is ½ - flow-well-linked

36
Representatives are well-linked
0.3
0.6
0.4
0.2
0.4
0.3
0.1
37
Representatives
  • Need representatives Y such that
  • Y ½ Xi
  • Y induces a large submatching of Mi
  • Simple greedy scheme works
  • pick si and ti
  • remove all terminals in trees of si and ti
  • continue

38
Node case
  • Well-linked decomposition same as for edge case
  • Use node-separators instead of edge separators
  • Clustering is not straighforward (cant assume
    degree bound)
  • In CKS05 weaker bounds than for edge case
  • Recent work same as for edge case. More
    technically involved

39
Lower Bounds
  • Well-linked decomposition has to lose W(log1/2 n)
    factor
  • Implicitly from integrality gap results for
    all-or-nothing flow problem Chuzhoy-Khanna05
  • Conjecture W(log n) factor lower bound

40
Flows, Cuts, and Integer Flows
NP-hard
NP-hard
Solvable
max integer flow
max frac flow
min multicut


graph theory
41
Weaker decomp for planar graphs
  • Well-linked decomp yields O(log n) approx for
    planar graph EDP (congestion 2)
  • Recent result for planar EDP O(1) approx with
    congestion 4 CKS 05
  • Weaker decomp based on planar graph properties.
  • Q well-linked in planar loses W(log n) ?

42
Open problems
  • Improve upper/lower bounds on well-linked
    decomposition. Q(log n)?
  • Approx algorithms for EDP/NDP in general graphs
    with congestion O(1)
  • essentially reduced to a graph theory problem
  • Directed graphs?

43
Thank You!
44
Trees to Graphs using Racke
  • Hierarchical graph decomposition Racke03
  • Given graph G, exists capacitated tree T(G) s.t
  • T(G) approximates G w.r.t sparse cuts
  • Approximation factor O(b(G) log n log log n)
    Harrelson-Hildrum-Rao04
  • Apply algo. on T(G) to get decomposition for G
  • Loss polylog(n)
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