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Algorithm Design and Analysis

L ECTURE 17 Dynamic Programming Shortest paths and Bellman-Ford. Algorithm Design and Analysis. CSE 565. Adam Smith. Shortest Paths: Negative Cost Cycles. Negative cost cycle.

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Algorithm Design and Analysis

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  1. LECTURE 17 • Dynamic Programming • Shortest paths and Bellman-Ford Algorithm Design and Analysis CSE 565 Adam Smith A. Smith; based on slides by E. Demaine, C. Leiserson, S. Raskhodnikova, K. Wayne

  2. Shortest Paths: Negative Cost Cycles • Negative cost cycle. • Observation. If some path from s to t contains a negative cost cycle, there does not exist a shortest s-t path; otherwise, there exists one that is simple. -6 -4 7 s t W c(W) < 0

  3. Shortest Paths: Dynamic Programming • Def. OPT(i, v) = length of shortest v-t path P using at most i edges • ( if no such path exists) • Case 1: P uses at most i-1 edges. • OPT(i, v) = OPT(i-1, v) • Case 2: P uses exactly i edges. • if (v, w) is first edge, then OPT uses (v, w), and then selects best w-t path using at most i-1 edges • Remark. By previous observation, if no negative cycles, thenOPT(n-1, v) = length of shortest v-t path. or 

  4. Shortest Paths: Implementation • Analysis. (mn) time, (n2) space. • Finding the shortest paths. Maintain a "successor" for each table entry. Shortest-Path(G, t) { foreach node v  V M[0, v]  M[0, t]  0 fori = 1 to n-1 foreach node v  V M[i, v]  M[i-1, v] foreach edge (v, w)  E M[i, v]  min { M[i, v], M[i-1, w] + cvw} }

  5. Shortest Paths: Improvements Maintain only one array M[v] = length of shortest v-t path found so far. No need to check edges of the form (v, w) unless M[w] changed in previous iteration. • Theorem. Throughout the algorithm, M[v] is length of some v-t path, and after i rounds of updates, the value M[v] is no larger than the length of shortest v-t path using  i edges. • Overall impact. • Memory: O(m + n). • Running time: O(mn) worst case, but substantially faster in practice.

  6. Bellman-Ford: Efficient Implementation Bellman-Ford-Shortest-Path(G, s, t) { foreach node v  V { M[v]  successor[v]   } M[t] = 0 for i = 1 to n-1 { foreach node w  V { if (M[w] has been updated in previous iteration) { foreach node v such that (v, w)  E { if (M[v] > M[w] + cvw) { M[v]  M[w] + cvw successor[v]  w } } } If no M[w] value changed in iteration i, stop. } }

  7. Example of Bellman-Ford B 2 –1 2 A E 3 1 –3 4 C D 5 The demonstration is for a sligtly different version of the algorithm (see CLRS) that computes distances from the sourse node rather than distances to the destination node. A. Smith; based on slides by E. Demaine, C. Leiserson, S. Raskhodnikova, K. Wayne

  8. Example of Bellman-Ford ¥ B 2 –1 0 ¥ 2 A E 3 1 –3 4 C D 5 ¥ ¥ Initialization. A. Smith; based on slides by E. Demaine, C. Leiserson, S. Raskhodnikova, K. Wayne

  9. Example of Bellman-Ford ¥ B 1 2 –1 0 ¥ 7 3 4 2 A E 3 1 5 8 2 –3 4 6 C D 5 ¥ ¥ Order of edge relaxation. A. Smith; based on slides by E. Demaine, C. Leiserson, S. Raskhodnikova, K. Wayne

  10. Example of Bellman-Ford ¥ B 1 2 –1 0 ¥ 7 3 4 2 A E 3 1 5 8 2 –3 4 6 C D 5 ¥ ¥ A. Smith; based on slides by E. Demaine, C. Leiserson, S. Raskhodnikova, K. Wayne

  11. Example of Bellman-Ford ¥ B 1 2 –1 0 ¥ 7 3 4 2 A E 3 1 5 8 2 –3 4 6 C D 5 ¥ ¥ A. Smith; based on slides by E. Demaine, C. Leiserson, S. Raskhodnikova, K. Wayne

  12. Example of Bellman-Ford ¥ B 1 2 –1 0 ¥ 7 3 4 2 A E 3 1 5 8 2 –3 4 6 C D 5 ¥ ¥ A. Smith; based on slides by E. Demaine, C. Leiserson, S. Raskhodnikova, K. Wayne

  13. Example of Bellman-Ford -1 ¥ B 1 2 –1 0 ¥ 7 3 4 2 A E 3 1 5 8 2 –3 4 6 C D 5 ¥ ¥ A. Smith; based on slides by E. Demaine, C. Leiserson, S. Raskhodnikova, K. Wayne

  14. Example of Bellman-Ford -1 B 1 2 –1 0 ¥ 7 3 4 2 A E 3 1 5 8 2 –3 4 6 C D 5 4 ¥ ¥ A. Smith; based on slides by E. Demaine, C. Leiserson, S. Raskhodnikova, K. Wayne

  15. Example of Bellman-Ford -1 B 1 2 –1 0 ¥ 7 3 4 2 A E 3 1 5 8 2 –3 4 6 C D 5 4 ¥ A. Smith; based on slides by E. Demaine, C. Leiserson, S. Raskhodnikova, K. Wayne

  16. Example of Bellman-Ford -1 B 1 2 –1 0 ¥ 7 3 4 2 A E 3 1 5 8 2 –3 4 6 C D 5 2 4 ¥ A. Smith; based on slides by E. Demaine, C. Leiserson, S. Raskhodnikova, K. Wayne

  17. Example of Bellman-Ford -1 B 1 2 –1 0 ¥ 7 3 4 2 A E 3 1 5 8 2 –3 4 6 C D 5 2 ¥ A. Smith; based on slides by E. Demaine, C. Leiserson, S. Raskhodnikova, K. Wayne

  18. Example of Bellman-Ford -1 B 1 2 –1 0 ¥ 7 3 4 2 A E 3 1 5 8 2 –3 4 6 C D 5 2 ¥ End of pass 1. A. Smith; based on slides by E. Demaine, C. Leiserson, S. Raskhodnikova, K. Wayne

  19. Example of Bellman-Ford -1 B 1 2 –1 1 0 ¥ 7 3 4 2 A E 3 1 5 8 2 –3 4 6 C D 5 2 ¥ A. Smith; based on slides by E. Demaine, C. Leiserson, S. Raskhodnikova, K. Wayne

  20. Example of Bellman-Ford -1 B 1 2 –1 1 0 7 3 4 2 A E 3 1 5 8 2 –3 4 6 C D 5 2 ¥ A. Smith; based on slides by E. Demaine, C. Leiserson, S. Raskhodnikova, K. Wayne

  21. Example of Bellman-Ford -1 B 1 2 –1 1 0 7 3 4 2 A E 3 1 5 8 2 –3 4 6 C D 5 2 1 ¥ A. Smith; based on slides by E. Demaine, C. Leiserson, S. Raskhodnikova, K. Wayne

  22. Example of Bellman-Ford -1 B 1 2 –1 1 0 7 3 4 2 A E 3 1 5 8 2 –3 4 6 C D 5 2 1 A. Smith; based on slides by E. Demaine, C. Leiserson, S. Raskhodnikova, K. Wayne

  23. Example of Bellman-Ford -1 B 1 2 –1 1 0 7 3 4 2 A E 3 1 5 8 2 –3 4 6 C D 5 2 1 A. Smith; based on slides by E. Demaine, C. Leiserson, S. Raskhodnikova, K. Wayne

  24. Example of Bellman-Ford -1 B 1 2 –1 1 0 7 3 4 2 A E 3 1 5 8 2 –3 4 6 C D 5 2 1 A. Smith; based on slides by E. Demaine, C. Leiserson, S. Raskhodnikova, K. Wayne

  25. Example of Bellman-Ford -1 B 1 2 –1 1 0 7 3 4 2 A E 3 1 5 8 2 –3 4 6 C D 5 2 1 A. Smith; based on slides by E. Demaine, C. Leiserson, S. Raskhodnikova, K. Wayne

  26. Example of Bellman-Ford -1 B 1 2 –1 1 0 7 3 4 2 A E 3 1 5 8 2 –3 4 6 C D 5 2 -2 1 A. Smith; based on slides by E. Demaine, C. Leiserson, S. Raskhodnikova, K. Wayne

  27. Example of Bellman-Ford -1 B 1 2 –1 1 0 7 3 4 2 A E 3 1 5 8 2 –3 4 6 C D 5 2 -2 End of pass 2 (and 3 and 4). A. Smith; based on slides by E. Demaine, C. Leiserson, S. Raskhodnikova, K. Wayne

  28. Distance Vector Protocol • Communication network. • Nodes  routers. • Edges  direct communication links. • Cost of edge  delay on link. • Dijkstra's algorithm. Requires global information of network. • Bellman-Ford. Uses only local knowledge of neighboring nodes. • Synchronization. We don't expect routers to run in lockstep. The order in which each foreach loop executes in not important. Moreover, algorithm still converges even if updates are asynchronous. naturally nonnegative, but Bellman-Ford used anyway!

  29. Distance Vector Protocol • Distance vector protocol. • Each router maintains a vector of shortest path lengths to every other node (distances) and the first hop on each path (directions). • Algorithm: each router performs n separate computations, one for each potential destination node. • "Routing by rumor." • Ex. RIP, Xerox XNS RIP, Novell's IPX RIP, Cisco's IGRP, DEC's DNA Phase IV, AppleTalk's RTMP. • Caveat. Edge costs may change during algorithm (or fail completely). 1 "counting to infinity" t v s 1 1 2 1 deleted

  30. Path Vector Protocols • Link state routing. • Each router also stores the entire path. • Based on Dijkstra's algorithm. • Avoids "counting-to-infinity" problem and related difficulties. • Requires significantly more storage. • Ex. Border Gateway Protocol (BGP), Open Shortest Path First (OSPF). not just the distance and first hop

  31. Detecting Negative Cycles • Bellman-Ford is guaranteed to work if there are no negative cost cycles. • How can we tell if neg. cost cycles exist? • We could pick a destination vertex t and check if the cost estimates in Bellman-Ford converge or not. • What is wrong with this? • (What if a cycle isn’t on any path to t?) 18 2 6 -23 5 -11 v -15

  32. Detecting Negative Cycles • Theorem. Can find negative cost cycle in O(mn) time. • Add new node t and connect all nodes to t with 0-cost edge. • Check if OPT(n, v) = OPT(n-1, v) for all nodes v. • if yes, then no negative cycles • if no, then extract cycle from shortest path from v to t t 0 0 0 0 0 18 2 6 -23 5 -11 v -15

  33. Detecting Negative Cycles • Lemma. If OPT(n,v) = OPT(n-1,v) for all v, then no negative cycles are connected to t. • Pf. If OPT(n,v)=OPT(n-1,v) for all v, then distance estimates won’t change again even with many executions of the for loop. In particular, OPT(2n,v)=OPT(n-1,v). So there are no negative cost cycles. • Lemma. If OPT(n,v) < OPT(n-1,v) for some node v, then (any) shortest path from v to t contains a cycle W. Moreover W has negative cost. • Pf. (by contradiction) • Since OPT(n,v) < OPT(n-1,v), we know P has exactly n edges. • By pigeonhole principle, P must contain a directed cycle W. • Deleting W yields a v-t path with < n edges  W has negative cost. v t W c(W) < 0

  34. Detecting Negative Cycles: Application • Currency conversion. Given n currencies and exchange rates between pairs of currencies, is there an arbitrage opportunity? • Remark. Fastest algorithm very valuable! 8 $ F 1/7 800 3/10 4/3 2/3 2 IBM 3/50 1/10000 £ ¥ DM 170 56

  35. Detecting Negative Cycles: Summary • Bellman-Ford. O(mn) time, O(m + n) space. • Run Bellman-Ford for n iterations (instead of n-1). • Upon termination, Bellman-Ford successor variables trace a negative cycle if one exists. • See p. 304 for improved version and early termination rule.

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