Chapter 7

Network Flow notes

Intro & 7.1: Maximum Flow & Ford-Fulkerson

  • Network flow problems include the bipartite matching problem, among others. Networks are graphs whose edges carry something and whose nodes facilitate passing traffic between edges.
  • Network models can be seen as having capacity on edges, or how much they can carry.
  • They have sources, or nodes that have no in-edges, and sinks, or nodes without out-edges.
  • We define a flow network as
    • A digraph G=(V,E) with
    • Associated capacity for each edge, c_e
    • A single sink t
    • a single source s
  • We say an s-t flow is a function f: (each edge in E) to a nonnegative real number so that f(e) = flow(e)
    • For each edge, 0⇐f(e)⇐c_e
    • For each node in V, excluding s and t, the flow into e is equal to the flow out of e.
  • The value of a flow is the amount of flow generated at s.
  • Given a flow network, what if we want to arrange our traffic to efficiently use our capacity?
  • We do this as follows:
    • For each edge e, f(e) is 0 initially
    • While an s-t path remains in the residual graph
      • Consider a simple path s-t path, P
      • f' = augment(f,P)
      • f = f'
      • the residual graph is the residual graph of f'
  • We use augment(f,P):
    • b = bottleneck(P,f)
    • for each (u,v)-edge e in P,
      • if e is a forward edge, increase f(e)+ = b
      • else e = v,u and f(e) - = b
    • return f
  • If all capacities, this algorithm (the Ford-Fulkerson algorithm) terminates in C ( = sum(c_e) for all out edges of s) iterations of the while-loop
    • And it can be implemented in O(mC) time
  • Wordy but interesting, 7/10

7.2: Network Flows & Minimum Cuts

  • Consider an s-t cut: a partition (A,B) of V such that s∈A and t∈B. The capacity of an (A,B) cut, or c(A,B) is the sum of all c_e for each out edge e of A.
  • For an s-t flow and an s-t cut (A,B), v(f) = the out flow of A - the in-flow of A
  • For any s-t flow and any s-t cut (A,B), v(f) < = c(A,B).
  • If f is an s-t flow so that the residual graph has no s-t path, there is an s-t cut (_A,_B) in G so that f(v) = c(_A,_B). Then, v(f) is the maximum of all flows in G and (_A,_B) has the minimum capacity of any s-t cut.
  • the Ford-Fulkerson flow is a maximum flow
  • Reminded me of real analysis, straightforward, 7/10

7.5: Bipartite Matching

  • We wish to match edges to a subset such that each node appears in max one edge of the edge subset, such that the matching has the largest possible size.
  • We solve this as follows:
    • Look at G, constructing a flow network by directing all edges in G from X to Y, then adding a node s and an (s,x) edge from s to each node in X. We add a node t and an edge (y,t) from every edge in Y to t. We give every edge in the flow network a capacity of 1. Then we compute the maximum s-t flow.
  • The size of the maximum matching in G equals the max flow in the flow network G' and edges carrying flow from X to Y in G' are in the matching in G.
    • We can do this in O(mn) time.
    • What if the graph has no perfect matching?
      • If this isn't the case, for all A in side X of G, we have more nodes in A's adjacent nodes than in the A component.
      • Either we can find a perfect matching or an appropriate subset _G in O(mn) time.
    • 4/10

7.7: Maximum Flow Extensions

  • What if we have a set of sources and a set of sinks?
  • Consider the case where sources have fixed supply and sinks have fixed demand, like rainway lines shipping from factories to retail outlets.
  • Now the circulation fulfills
    • for each edge e, 0⇐f(e)⇐c_e
    • for each vertex v, the in minus out flows equal the demand of v.
  • We can also do this with circulations that have lower bounds for demand.
  • Boring and wordy, 2/10
courses/cs211/winter2014/journals/haley/chapter7.txt · Last modified: 2014/04/02 05:20 by archermcclellanh
CC Attribution-Noncommercial-Share Alike 4.0 International
Driven by DokuWiki Recent changes RSS feed Valid CSS Valid XHTML 1.0