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3
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@@ -313,201 +313,199 @@ |
313 | 313 |
/** |
314 | 314 |
@defgroup search Graph Search |
315 | 315 |
@ingroup algs |
316 | 316 |
\brief Common graph search algorithms. |
317 | 317 |
|
318 | 318 |
This group contains the common graph search algorithms, namely |
319 | 319 |
\e breadth-first \e search (BFS) and \e depth-first \e search (DFS) |
320 | 320 |
\ref clrs01algorithms. |
321 | 321 |
*/ |
322 | 322 |
|
323 | 323 |
/** |
324 | 324 |
@defgroup shortest_path Shortest Path Algorithms |
325 | 325 |
@ingroup algs |
326 | 326 |
\brief Algorithms for finding shortest paths. |
327 | 327 |
|
328 | 328 |
This group contains the algorithms for finding shortest paths in digraphs |
329 | 329 |
\ref clrs01algorithms. |
330 | 330 |
|
331 | 331 |
- \ref Dijkstra algorithm for finding shortest paths from a source node |
332 | 332 |
when all arc lengths are non-negative. |
333 | 333 |
- \ref BellmanFord "Bellman-Ford" algorithm for finding shortest paths |
334 | 334 |
from a source node when arc lenghts can be either positive or negative, |
335 | 335 |
but the digraph should not contain directed cycles with negative total |
336 | 336 |
length. |
337 | 337 |
- \ref FloydWarshall "Floyd-Warshall" and \ref Johnson "Johnson" algorithms |
338 | 338 |
for solving the \e all-pairs \e shortest \e paths \e problem when arc |
339 | 339 |
lenghts can be either positive or negative, but the digraph should |
340 | 340 |
not contain directed cycles with negative total length. |
341 | 341 |
- \ref Suurballe A successive shortest path algorithm for finding |
342 | 342 |
arc-disjoint paths between two nodes having minimum total length. |
343 | 343 |
*/ |
344 | 344 |
|
345 | 345 |
/** |
346 | 346 |
@defgroup spantree Minimum Spanning Tree Algorithms |
347 | 347 |
@ingroup algs |
348 | 348 |
\brief Algorithms for finding minimum cost spanning trees and arborescences. |
349 | 349 |
|
350 | 350 |
This group contains the algorithms for finding minimum cost spanning |
351 | 351 |
trees and arborescences \ref clrs01algorithms. |
352 | 352 |
*/ |
353 | 353 |
|
354 | 354 |
/** |
355 | 355 |
@defgroup max_flow Maximum Flow Algorithms |
356 | 356 |
@ingroup algs |
357 | 357 |
\brief Algorithms for finding maximum flows. |
358 | 358 |
|
359 | 359 |
This group contains the algorithms for finding maximum flows and |
360 | 360 |
feasible circulations \ref clrs01algorithms, \ref amo93networkflows. |
361 | 361 |
|
362 | 362 |
The \e maximum \e flow \e problem is to find a flow of maximum value between |
363 | 363 |
a single source and a single target. Formally, there is a \f$G=(V,A)\f$ |
364 | 364 |
digraph, a \f$cap: A\rightarrow\mathbf{R}^+_0\f$ capacity function and |
365 | 365 |
\f$s, t \in V\f$ source and target nodes. |
366 | 366 |
A maximum flow is an \f$f: A\rightarrow\mathbf{R}^+_0\f$ solution of the |
367 | 367 |
following optimization problem. |
368 | 368 |
|
369 | 369 |
\f[ \max\sum_{sv\in A} f(sv) - \sum_{vs\in A} f(vs) \f] |
370 | 370 |
\f[ \sum_{uv\in A} f(uv) = \sum_{vu\in A} f(vu) |
371 | 371 |
\quad \forall u\in V\setminus\{s,t\} \f] |
372 | 372 |
\f[ 0 \leq f(uv) \leq cap(uv) \quad \forall uv\in A \f] |
373 | 373 |
|
374 | 374 |
LEMON contains several algorithms for solving maximum flow problems: |
375 | 375 |
- \ref EdmondsKarp Edmonds-Karp algorithm |
376 | 376 |
\ref edmondskarp72theoretical. |
377 | 377 |
- \ref Preflow Goldberg-Tarjan's preflow push-relabel algorithm |
378 | 378 |
\ref goldberg88newapproach. |
379 | 379 |
- \ref DinitzSleatorTarjan Dinitz's blocking flow algorithm with dynamic trees |
380 | 380 |
\ref dinic70algorithm, \ref sleator83dynamic. |
381 | 381 |
- \ref GoldbergTarjan !Preflow push-relabel algorithm with dynamic trees |
382 | 382 |
\ref goldberg88newapproach, \ref sleator83dynamic. |
383 | 383 |
|
384 | 384 |
In most cases the \ref Preflow algorithm provides the |
385 | 385 |
fastest method for computing a maximum flow. All implementations |
386 | 386 |
also provide functions to query the minimum cut, which is the dual |
387 | 387 |
problem of maximum flow. |
388 | 388 |
|
389 | 389 |
\ref Circulation is a preflow push-relabel algorithm implemented directly |
390 | 390 |
for finding feasible circulations, which is a somewhat different problem, |
391 | 391 |
but it is strongly related to maximum flow. |
392 | 392 |
For more information, see \ref Circulation. |
393 | 393 |
*/ |
394 | 394 |
|
395 | 395 |
/** |
396 | 396 |
@defgroup min_cost_flow_algs Minimum Cost Flow Algorithms |
397 | 397 |
@ingroup algs |
398 | 398 |
|
399 | 399 |
\brief Algorithms for finding minimum cost flows and circulations. |
400 | 400 |
|
401 | 401 |
This group contains the algorithms for finding minimum cost flows and |
402 | 402 |
circulations \ref amo93networkflows. For more information about this |
403 | 403 |
problem and its dual solution, see \ref min_cost_flow |
404 | 404 |
"Minimum Cost Flow Problem". |
405 | 405 |
|
406 | 406 |
LEMON contains several algorithms for this problem. |
407 | 407 |
- \ref NetworkSimplex Primal Network Simplex algorithm with various |
408 | 408 |
pivot strategies \ref dantzig63linearprog, \ref kellyoneill91netsimplex. |
409 |
- \ref CostScaling Push-Relabel and Augment-Relabel algorithms based on |
|
410 |
cost scaling \ref goldberg90approximation, \ref goldberg97efficient, |
|
409 |
- \ref CostScaling Cost Scaling algorithm based on push/augment and |
|
410 |
relabel operations \ref goldberg90approximation, \ref goldberg97efficient, |
|
411 | 411 |
\ref bunnagel98efficient. |
412 |
- \ref CapacityScaling Successive Shortest %Path algorithm with optional |
|
413 |
capacity scaling \ref edmondskarp72theoretical. |
|
414 |
- \ref CancelAndTighten The Cancel and Tighten algorithm |
|
415 |
\ref goldberg89cyclecanceling. |
|
416 |
- \ref CycleCanceling Cycle-Canceling algorithms |
|
417 |
\ref klein67primal, \ref goldberg89cyclecanceling. |
|
412 |
- \ref CapacityScaling Capacity Scaling algorithm based on the successive |
|
413 |
shortest path method \ref edmondskarp72theoretical. |
|
414 |
- \ref CycleCanceling Cycle-Canceling algorithms, two of which are |
|
415 |
strongly polynomial \ref klein67primal, \ref goldberg89cyclecanceling. |
|
418 | 416 |
|
419 | 417 |
In general NetworkSimplex is the most efficient implementation, |
420 | 418 |
but in special cases other algorithms could be faster. |
421 | 419 |
For example, if the total supply and/or capacities are rather small, |
422 | 420 |
CapacityScaling is usually the fastest algorithm (without effective scaling). |
423 | 421 |
*/ |
424 | 422 |
|
425 | 423 |
/** |
426 | 424 |
@defgroup min_cut Minimum Cut Algorithms |
427 | 425 |
@ingroup algs |
428 | 426 |
|
429 | 427 |
\brief Algorithms for finding minimum cut in graphs. |
430 | 428 |
|
431 | 429 |
This group contains the algorithms for finding minimum cut in graphs. |
432 | 430 |
|
433 | 431 |
The \e minimum \e cut \e problem is to find a non-empty and non-complete |
434 | 432 |
\f$X\f$ subset of the nodes with minimum overall capacity on |
435 | 433 |
outgoing arcs. Formally, there is a \f$G=(V,A)\f$ digraph, a |
436 | 434 |
\f$cap: A\rightarrow\mathbf{R}^+_0\f$ capacity function. The minimum |
437 | 435 |
cut is the \f$X\f$ solution of the next optimization problem: |
438 | 436 |
|
439 | 437 |
\f[ \min_{X \subset V, X\not\in \{\emptyset, V\}} |
440 | 438 |
\sum_{uv\in A: u\in X, v\not\in X}cap(uv) \f] |
441 | 439 |
|
442 | 440 |
LEMON contains several algorithms related to minimum cut problems: |
443 | 441 |
|
444 | 442 |
- \ref HaoOrlin "Hao-Orlin algorithm" for calculating minimum cut |
445 | 443 |
in directed graphs. |
446 | 444 |
- \ref NagamochiIbaraki "Nagamochi-Ibaraki algorithm" for |
447 | 445 |
calculating minimum cut in undirected graphs. |
448 | 446 |
- \ref GomoryHu "Gomory-Hu tree computation" for calculating |
449 | 447 |
all-pairs minimum cut in undirected graphs. |
450 | 448 |
|
451 | 449 |
If you want to find minimum cut just between two distinict nodes, |
452 | 450 |
see the \ref max_flow "maximum flow problem". |
453 | 451 |
*/ |
454 | 452 |
|
455 | 453 |
/** |
456 | 454 |
@defgroup min_mean_cycle Minimum Mean Cycle Algorithms |
457 | 455 |
@ingroup algs |
458 | 456 |
\brief Algorithms for finding minimum mean cycles. |
459 | 457 |
|
460 | 458 |
This group contains the algorithms for finding minimum mean cycles |
461 | 459 |
\ref clrs01algorithms, \ref amo93networkflows. |
462 | 460 |
|
463 | 461 |
The \e minimum \e mean \e cycle \e problem is to find a directed cycle |
464 | 462 |
of minimum mean length (cost) in a digraph. |
465 | 463 |
The mean length of a cycle is the average length of its arcs, i.e. the |
466 | 464 |
ratio between the total length of the cycle and the number of arcs on it. |
467 | 465 |
|
468 | 466 |
This problem has an important connection to \e conservative \e length |
469 | 467 |
\e functions, too. A length function on the arcs of a digraph is called |
470 | 468 |
conservative if and only if there is no directed cycle of negative total |
471 | 469 |
length. For an arbitrary length function, the negative of the minimum |
472 | 470 |
cycle mean is the smallest \f$\epsilon\f$ value so that increasing the |
473 | 471 |
arc lengths uniformly by \f$\epsilon\f$ results in a conservative length |
474 | 472 |
function. |
475 | 473 |
|
476 | 474 |
LEMON contains three algorithms for solving the minimum mean cycle problem: |
477 | 475 |
- \ref Karp "Karp"'s original algorithm \ref amo93networkflows, |
478 | 476 |
\ref dasdan98minmeancycle. |
479 | 477 |
- \ref HartmannOrlin "Hartmann-Orlin"'s algorithm, which is an improved |
480 | 478 |
version of Karp's algorithm \ref dasdan98minmeancycle. |
481 | 479 |
- \ref Howard "Howard"'s policy iteration algorithm |
482 | 480 |
\ref dasdan98minmeancycle. |
483 | 481 |
|
484 | 482 |
In practice, the Howard algorithm proved to be by far the most efficient |
485 | 483 |
one, though the best known theoretical bound on its running time is |
486 | 484 |
exponential. |
487 | 485 |
Both Karp and HartmannOrlin algorithms run in time O(ne) and use space |
488 | 486 |
O(n<sup>2</sup>+e), but the latter one is typically faster due to the |
489 | 487 |
applied early termination scheme. |
490 | 488 |
*/ |
491 | 489 |
|
492 | 490 |
/** |
493 | 491 |
@defgroup matching Matching Algorithms |
494 | 492 |
@ingroup algs |
495 | 493 |
\brief Algorithms for finding matchings in graphs and bipartite graphs. |
496 | 494 |
|
497 | 495 |
This group contains the algorithms for calculating |
498 | 496 |
matchings in graphs and bipartite graphs. The general matching problem is |
499 | 497 |
finding a subset of the edges for which each node has at most one incident |
500 | 498 |
edge. |
501 | 499 |
|
502 | 500 |
There are several different algorithms for calculate matchings in |
503 | 501 |
graphs. The matching problems in bipartite graphs are generally |
504 | 502 |
easier than in general graphs. The goal of the matching optimization |
505 | 503 |
can be finding maximum cardinality, maximum weight or minimum cost |
506 | 504 |
matching. The search can be constrained to find perfect or |
507 | 505 |
maximum cardinality matching. |
508 | 506 |
|
509 | 507 |
The matching algorithms implemented in LEMON: |
510 | 508 |
- \ref MaxBipartiteMatching Hopcroft-Karp augmenting path algorithm |
511 | 509 |
for calculating maximum cardinality matching in bipartite graphs. |
512 | 510 |
- \ref PrBipartiteMatching Push-relabel algorithm |
513 | 511 |
for calculating maximum cardinality matching in bipartite graphs. |
1 | 1 |
/* -*- C++ -*- |
2 | 2 |
* |
3 | 3 |
* This file is a part of LEMON, a generic C++ optimization library |
4 | 4 |
* |
5 | 5 |
* Copyright (C) 2003-2008 |
6 | 6 |
* Egervary Jeno Kombinatorikus Optimalizalasi Kutatocsoport |
7 | 7 |
* (Egervary Research Group on Combinatorial Optimization, EGRES). |
8 | 8 |
* |
9 | 9 |
* Permission to use, modify and distribute this software is granted |
10 | 10 |
* provided that this copyright notice appears in all copies. For |
11 | 11 |
* precise terms see the accompanying LICENSE file. |
12 | 12 |
* |
13 | 13 |
* This software is provided "AS IS" with no warranty of any kind, |
14 | 14 |
* express or implied, and with no claim as to its suitability for any |
15 | 15 |
* purpose. |
16 | 16 |
* |
17 | 17 |
*/ |
18 | 18 |
|
19 | 19 |
#ifndef LEMON_CAPACITY_SCALING_H |
20 | 20 |
#define LEMON_CAPACITY_SCALING_H |
21 | 21 |
|
22 | 22 |
/// \ingroup min_cost_flow_algs |
23 | 23 |
/// |
24 | 24 |
/// \file |
25 | 25 |
/// \brief Capacity Scaling algorithm for finding a minimum cost flow. |
26 | 26 |
|
27 | 27 |
#include <vector> |
28 | 28 |
#include <limits> |
29 | 29 |
#include <lemon/core.h> |
30 | 30 |
#include <lemon/bin_heap.h> |
31 | 31 |
|
32 | 32 |
namespace lemon { |
33 | 33 |
|
34 | 34 |
/// \brief Default traits class of CapacityScaling algorithm. |
35 | 35 |
/// |
36 | 36 |
/// Default traits class of CapacityScaling algorithm. |
37 | 37 |
/// \tparam GR Digraph type. |
38 | 38 |
/// \tparam V The number type used for flow amounts, capacity bounds |
39 | 39 |
/// and supply values. By default it is \c int. |
40 | 40 |
/// \tparam C The number type used for costs and potentials. |
41 | 41 |
/// By default it is the same as \c V. |
42 | 42 |
template <typename GR, typename V = int, typename C = V> |
43 | 43 |
struct CapacityScalingDefaultTraits |
44 | 44 |
{ |
45 | 45 |
/// The type of the digraph |
46 | 46 |
typedef GR Digraph; |
47 | 47 |
/// The type of the flow amounts, capacity bounds and supply values |
48 | 48 |
typedef V Value; |
49 | 49 |
/// The type of the arc costs |
50 | 50 |
typedef C Cost; |
51 | 51 |
|
52 | 52 |
/// \brief The type of the heap used for internal Dijkstra computations. |
53 | 53 |
/// |
54 | 54 |
/// The type of the heap used for internal Dijkstra computations. |
55 | 55 |
/// It must conform to the \ref lemon::concepts::Heap "Heap" concept, |
56 | 56 |
/// its priority type must be \c Cost and its cross reference type |
57 | 57 |
/// must be \ref RangeMap "RangeMap<int>". |
58 | 58 |
typedef BinHeap<Cost, RangeMap<int> > Heap; |
59 | 59 |
}; |
60 | 60 |
|
61 | 61 |
/// \addtogroup min_cost_flow_algs |
62 | 62 |
/// @{ |
63 | 63 |
|
64 | 64 |
/// \brief Implementation of the Capacity Scaling algorithm for |
65 | 65 |
/// finding a \ref min_cost_flow "minimum cost flow". |
66 | 66 |
/// |
67 | 67 |
/// \ref CapacityScaling implements the capacity scaling version |
68 | 68 |
/// of the successive shortest path algorithm for finding a |
69 |
/// \ref min_cost_flow "minimum cost flow" |
|
69 |
/// \ref min_cost_flow "minimum cost flow" \ref amo93networkflows, |
|
70 |
/// \ref edmondskarp72theoretical. It is an efficient dual |
|
70 | 71 |
/// solution method. |
71 | 72 |
/// |
72 | 73 |
/// Most of the parameters of the problem (except for the digraph) |
73 | 74 |
/// can be given using separate functions, and the algorithm can be |
74 | 75 |
/// executed using the \ref run() function. If some parameters are not |
75 | 76 |
/// specified, then default values will be used. |
76 | 77 |
/// |
77 | 78 |
/// \tparam GR The digraph type the algorithm runs on. |
78 | 79 |
/// \tparam V The number type used for flow amounts, capacity bounds |
79 | 80 |
/// and supply values in the algorithm. By default it is \c int. |
80 | 81 |
/// \tparam C The number type used for costs and potentials in the |
81 | 82 |
/// algorithm. By default it is the same as \c V. |
82 | 83 |
/// |
83 | 84 |
/// \warning Both number types must be signed and all input data must |
84 | 85 |
/// be integer. |
85 | 86 |
/// \warning This algorithm does not support negative costs for such |
86 | 87 |
/// arcs that have infinite upper bound. |
87 | 88 |
#ifdef DOXYGEN |
88 | 89 |
template <typename GR, typename V, typename C, typename TR> |
89 | 90 |
#else |
90 | 91 |
template < typename GR, typename V = int, typename C = V, |
91 | 92 |
typename TR = CapacityScalingDefaultTraits<GR, V, C> > |
92 | 93 |
#endif |
93 | 94 |
class CapacityScaling |
94 | 95 |
{ |
95 | 96 |
public: |
96 | 97 |
|
97 | 98 |
/// The type of the digraph |
98 | 99 |
typedef typename TR::Digraph Digraph; |
99 | 100 |
/// The type of the flow amounts, capacity bounds and supply values |
100 | 101 |
typedef typename TR::Value Value; |
101 | 102 |
/// The type of the arc costs |
102 | 103 |
typedef typename TR::Cost Cost; |
103 | 104 |
|
104 | 105 |
/// The type of the heap used for internal Dijkstra computations |
105 | 106 |
typedef typename TR::Heap Heap; |
106 | 107 |
|
107 | 108 |
/// The \ref CapacityScalingDefaultTraits "traits class" of the algorithm |
108 | 109 |
typedef TR Traits; |
109 | 110 |
|
110 | 111 |
public: |
111 | 112 |
|
112 | 113 |
/// \brief Problem type constants for the \c run() function. |
113 | 114 |
/// |
114 | 115 |
/// Enum type containing the problem type constants that can be |
115 | 116 |
/// returned by the \ref run() function of the algorithm. |
116 | 117 |
enum ProblemType { |
117 | 118 |
/// The problem has no feasible solution (flow). |
118 | 119 |
INFEASIBLE, |
119 | 120 |
/// The problem has optimal solution (i.e. it is feasible and |
120 | 121 |
/// bounded), and the algorithm has found optimal flow and node |
121 | 122 |
/// potentials (primal and dual solutions). |
122 | 123 |
OPTIMAL, |
123 | 124 |
/// The digraph contains an arc of negative cost and infinite |
124 | 125 |
/// upper bound. It means that the objective function is unbounded |
125 | 126 |
/// on that arc, however, note that it could actually be bounded |
126 | 127 |
/// over the feasible flows, but this algroithm cannot handle |
127 | 128 |
/// these cases. |
128 | 129 |
UNBOUNDED |
129 | 130 |
}; |
130 | 131 |
|
131 | 132 |
private: |
132 | 133 |
|
133 | 134 |
TEMPLATE_DIGRAPH_TYPEDEFS(GR); |
134 | 135 |
|
135 | 136 |
typedef std::vector<int> IntVector; |
136 | 137 |
typedef std::vector<char> BoolVector; |
137 | 138 |
typedef std::vector<Value> ValueVector; |
138 | 139 |
typedef std::vector<Cost> CostVector; |
139 | 140 |
|
140 | 141 |
private: |
141 | 142 |
|
142 | 143 |
// Data related to the underlying digraph |
143 | 144 |
const GR &_graph; |
144 | 145 |
int _node_num; |
145 | 146 |
int _arc_num; |
146 | 147 |
int _res_arc_num; |
147 | 148 |
int _root; |
148 | 149 |
|
149 | 150 |
// Parameters of the problem |
150 | 151 |
bool _have_lower; |
151 | 152 |
Value _sum_supply; |
152 | 153 |
|
153 | 154 |
// Data structures for storing the digraph |
154 | 155 |
IntNodeMap _node_id; |
155 | 156 |
IntArcMap _arc_idf; |
156 | 157 |
IntArcMap _arc_idb; |
157 | 158 |
IntVector _first_out; |
158 | 159 |
BoolVector _forward; |
159 | 160 |
IntVector _source; |
160 | 161 |
IntVector _target; |
161 | 162 |
IntVector _reverse; |
162 | 163 |
|
163 | 164 |
// Node and arc data |
164 | 165 |
ValueVector _lower; |
165 | 166 |
ValueVector _upper; |
1 | 1 |
/* -*- C++ -*- |
2 | 2 |
* |
3 | 3 |
* This file is a part of LEMON, a generic C++ optimization library |
4 | 4 |
* |
5 | 5 |
* Copyright (C) 2003-2008 |
6 | 6 |
* Egervary Jeno Kombinatorikus Optimalizalasi Kutatocsoport |
7 | 7 |
* (Egervary Research Group on Combinatorial Optimization, EGRES). |
8 | 8 |
* |
9 | 9 |
* Permission to use, modify and distribute this software is granted |
10 | 10 |
* provided that this copyright notice appears in all copies. For |
11 | 11 |
* precise terms see the accompanying LICENSE file. |
12 | 12 |
* |
13 | 13 |
* This software is provided "AS IS" with no warranty of any kind, |
14 | 14 |
* express or implied, and with no claim as to its suitability for any |
15 | 15 |
* purpose. |
16 | 16 |
* |
17 | 17 |
*/ |
18 | 18 |
|
19 | 19 |
#ifndef LEMON_COST_SCALING_H |
20 | 20 |
#define LEMON_COST_SCALING_H |
21 | 21 |
|
22 | 22 |
/// \ingroup min_cost_flow_algs |
23 | 23 |
/// \file |
24 | 24 |
/// \brief Cost scaling algorithm for finding a minimum cost flow. |
25 | 25 |
|
26 | 26 |
#include <vector> |
27 | 27 |
#include <deque> |
28 | 28 |
#include <limits> |
29 | 29 |
|
30 | 30 |
#include <lemon/core.h> |
31 | 31 |
#include <lemon/maps.h> |
32 | 32 |
#include <lemon/math.h> |
33 | 33 |
#include <lemon/static_graph.h> |
34 | 34 |
#include <lemon/circulation.h> |
35 | 35 |
#include <lemon/bellman_ford.h> |
36 | 36 |
|
37 | 37 |
namespace lemon { |
38 | 38 |
|
39 | 39 |
/// \brief Default traits class of CostScaling algorithm. |
40 | 40 |
/// |
41 | 41 |
/// Default traits class of CostScaling algorithm. |
42 | 42 |
/// \tparam GR Digraph type. |
43 | 43 |
/// \tparam V The number type used for flow amounts, capacity bounds |
44 | 44 |
/// and supply values. By default it is \c int. |
45 | 45 |
/// \tparam C The number type used for costs and potentials. |
46 | 46 |
/// By default it is the same as \c V. |
47 | 47 |
#ifdef DOXYGEN |
48 | 48 |
template <typename GR, typename V = int, typename C = V> |
49 | 49 |
#else |
50 | 50 |
template < typename GR, typename V = int, typename C = V, |
51 | 51 |
bool integer = std::numeric_limits<C>::is_integer > |
52 | 52 |
#endif |
53 | 53 |
struct CostScalingDefaultTraits |
54 | 54 |
{ |
55 | 55 |
/// The type of the digraph |
56 | 56 |
typedef GR Digraph; |
57 | 57 |
/// The type of the flow amounts, capacity bounds and supply values |
58 | 58 |
typedef V Value; |
59 | 59 |
/// The type of the arc costs |
60 | 60 |
typedef C Cost; |
61 | 61 |
|
62 | 62 |
/// \brief The large cost type used for internal computations |
63 | 63 |
/// |
64 | 64 |
/// The large cost type used for internal computations. |
65 | 65 |
/// It is \c long \c long if the \c Cost type is integer, |
66 | 66 |
/// otherwise it is \c double. |
67 | 67 |
/// \c Cost must be convertible to \c LargeCost. |
68 | 68 |
typedef double LargeCost; |
69 | 69 |
}; |
70 | 70 |
|
71 | 71 |
// Default traits class for integer cost types |
72 | 72 |
template <typename GR, typename V, typename C> |
73 | 73 |
struct CostScalingDefaultTraits<GR, V, C, true> |
74 | 74 |
{ |
75 | 75 |
typedef GR Digraph; |
76 | 76 |
typedef V Value; |
77 | 77 |
typedef C Cost; |
78 | 78 |
#ifdef LEMON_HAVE_LONG_LONG |
79 | 79 |
typedef long long LargeCost; |
80 | 80 |
#else |
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typedef long LargeCost; |
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#endif |
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}; |
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|
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|
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/// \addtogroup min_cost_flow_algs |
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/// @{ |
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|
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/// \brief Implementation of the Cost Scaling algorithm for |
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/// finding a \ref min_cost_flow "minimum cost flow". |
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/// |
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/// \ref CostScaling implements a cost scaling algorithm that performs |
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/// push/augment and relabel operations for finding a minimum cost |
|
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/// flow. It is an efficient primal-dual solution method, which |
|
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/// push/augment and relabel operations for finding a \ref min_cost_flow |
|
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/// "minimum cost flow" \ref amo93networkflows, \ref goldberg90approximation, |
|
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/// \ref goldberg97efficient, \ref bunnagel98efficient. |
|
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/// It is a highly efficient primal-dual solution method, which |
|
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/// can be viewed as the generalization of the \ref Preflow |
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/// "preflow push-relabel" algorithm for the maximum flow problem. |
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/// |
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/// Most of the parameters of the problem (except for the digraph) |
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/// can be given using separate functions, and the algorithm can be |
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/// executed using the \ref run() function. If some parameters are not |
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/// specified, then default values will be used. |
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/// |
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/// \tparam GR The digraph type the algorithm runs on. |
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/// \tparam V The number type used for flow amounts, capacity bounds |
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/// and supply values in the algorithm. By default it is \c int. |
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/// \tparam C The number type used for costs and potentials in the |
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/// algorithm. By default it is the same as \c V. |
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/// |
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/// \warning Both number types must be signed and all input data must |
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/// be integer. |
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/// \warning This algorithm does not support negative costs for such |
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/// arcs that have infinite upper bound. |
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/// |
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/// \note %CostScaling provides three different internal methods, |
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/// from which the most efficient one is used by default. |
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/// For more information, see \ref Method. |
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#ifdef DOXYGEN |
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template <typename GR, typename V, typename C, typename TR> |
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#else |
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template < typename GR, typename V = int, typename C = V, |
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typename TR = CostScalingDefaultTraits<GR, V, C> > |
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#endif |
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class CostScaling |
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{ |
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public: |
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|
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/// The type of the digraph |
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typedef typename TR::Digraph Digraph; |
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/// The type of the flow amounts, capacity bounds and supply values |
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typedef typename TR::Value Value; |
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/// The type of the arc costs |
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typedef typename TR::Cost Cost; |
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|
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/// \brief The large cost type |
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/// |
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/// The large cost type used for internal computations. |
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/// Using the \ref CostScalingDefaultTraits "default traits class", |
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/// it is \c long \c long if the \c Cost type is integer, |
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/// otherwise it is \c double. |
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typedef typename TR::LargeCost LargeCost; |
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|
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/// The \ref CostScalingDefaultTraits "traits class" of the algorithm |
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typedef TR Traits; |
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|
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public: |
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|
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/// \brief Problem type constants for the \c run() function. |
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/// |
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/// Enum type containing the problem type constants that can be |
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/// returned by the \ref run() function of the algorithm. |
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enum ProblemType { |
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/// The problem has no feasible solution (flow). |
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INFEASIBLE, |
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/// The problem has optimal solution (i.e. it is feasible and |
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/// bounded), and the algorithm has found optimal flow and node |
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/// potentials (primal and dual solutions). |
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OPTIMAL, |
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/// The digraph contains an arc of negative cost and infinite |
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/// upper bound. It means that the objective function is unbounded |
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/// on that arc, however, note that it could actually be bounded |
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/// over the feasible flows, but this algroithm cannot handle |
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/// these cases. |
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UNBOUNDED |
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}; |
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|
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/// \brief Constants for selecting the internal method. |
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/// |
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/// Enum type containing constants for selecting the internal method |
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/// for the \ref run() function. |
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/// |
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/// \ref CostScaling provides three internal methods that differ mainly |
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/// in their base operations, which are used in conjunction with the |
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/// relabel operation. |
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/// By default, the so called \ref PARTIAL_AUGMENT |
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/// "Partial Augment-Relabel" method is used, which proved to be |
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/// the most efficient and the most robust on various test inputs. |
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/// However, the other methods can be selected using the \ref run() |
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/// function with the proper parameter. |
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enum Method { |
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/// Local push operations are used, i.e. flow is moved only on one |
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/// admissible arc at once. |
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PUSH, |
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/// Augment operations are used, i.e. flow is moved on admissible |
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/// paths from a node with excess to a node with deficit. |
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AUGMENT, |
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/// Partial augment operations are used, i.e. flow is moved on |
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/// admissible paths started from a node with excess, but the |
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/// lengths of these paths are limited. This method can be viewed |
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/// as a combined version of the previous two operations. |
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PARTIAL_AUGMENT |
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