Exemple #1
0
// inner part of dive
int 
CbcHeuristicDive::solution(double & solutionValue, int & numberNodes,
			   int & numberCuts, OsiRowCut ** cuts,
			   CbcSubProblem ** & nodes,
			   double * newSolution)
{
#ifdef DIVE_DEBUG
    int nRoundInfeasible = 0;
    int nRoundFeasible = 0;
#endif
    int reasonToStop = 0;
    double time1 = CoinCpuTime();
    int numberSimplexIterations = 0;
    int maxSimplexIterations = (model_->getNodeCount()) ? maxSimplexIterations_
                               : maxSimplexIterationsAtRoot_;
    // but can't be exactly coin_int_max
    maxSimplexIterations = CoinMin(maxSimplexIterations,COIN_INT_MAX>>3);
    OsiSolverInterface * solver = cloneBut(6); // was model_->solver()->clone();
# ifdef COIN_HAS_CLP
    OsiClpSolverInterface * clpSolver
    = dynamic_cast<OsiClpSolverInterface *> (solver);
    if (clpSolver) {
      ClpSimplex * clpSimplex = clpSolver->getModelPtr();
      int oneSolveIts = clpSimplex->maximumIterations();
      oneSolveIts = CoinMin(1000+2*(clpSimplex->numberRows()+clpSimplex->numberColumns()),oneSolveIts);
      clpSimplex->setMaximumIterations(oneSolveIts);
      if (!nodes) {
        // say give up easily
        clpSimplex->setMoreSpecialOptions(clpSimplex->moreSpecialOptions() | 64);
      } else {
	// get ray
	int specialOptions = clpSimplex->specialOptions();
	specialOptions &= ~0x3100000;
	specialOptions |= 32;
        clpSimplex->setSpecialOptions(specialOptions);
        clpSolver->setSpecialOptions(clpSolver->specialOptions() | 1048576);
	if ((model_->moreSpecialOptions()&16777216)!=0) {
	  // cutoff is constraint
	  clpSolver->setDblParam(OsiDualObjectiveLimit, COIN_DBL_MAX);
	}
      }
    }
# endif
    const double * lower = solver->getColLower();
    const double * upper = solver->getColUpper();
    const double * rowLower = solver->getRowLower();
    const double * rowUpper = solver->getRowUpper();
    const double * solution = solver->getColSolution();
    const double * objective = solver->getObjCoefficients();
    double integerTolerance = model_->getDblParam(CbcModel::CbcIntegerTolerance);
    double primalTolerance;
    solver->getDblParam(OsiPrimalTolerance, primalTolerance);

    int numberRows = matrix_.getNumRows();
    assert (numberRows <= solver->getNumRows());
    int numberIntegers = model_->numberIntegers();
    const int * integerVariable = model_->integerVariable();
    double direction = solver->getObjSense(); // 1 for min, -1 for max
    double newSolutionValue = direction * solver->getObjValue();
    int returnCode = 0;
    // Column copy
    const double * element = matrix_.getElements();
    const int * row = matrix_.getIndices();
    const CoinBigIndex * columnStart = matrix_.getVectorStarts();
    const int * columnLength = matrix_.getVectorLengths();
#ifdef DIVE_FIX_BINARY_VARIABLES
    // Row copy
    const double * elementByRow = matrixByRow_.getElements();
    const int * column = matrixByRow_.getIndices();
    const CoinBigIndex * rowStart = matrixByRow_.getVectorStarts();
    const int * rowLength = matrixByRow_.getVectorLengths();
#endif

    // Get solution array for heuristic solution
    int numberColumns = solver->getNumCols();
    memcpy(newSolution, solution, numberColumns*sizeof(double));

    // vectors to store the latest variables fixed at their bounds
    int* columnFixed = new int [numberIntegers];
    double* originalBound = new double [numberIntegers+2*numberColumns];
    double * lowerBefore = originalBound+numberIntegers;
    double * upperBefore = lowerBefore+numberColumns;
    memcpy(lowerBefore,lower,numberColumns*sizeof(double));
    memcpy(upperBefore,upper,numberColumns*sizeof(double));
    double * lastDjs=newSolution+numberColumns;
    bool * fixedAtLowerBound = new bool [numberIntegers];
    PseudoReducedCost * candidate = new PseudoReducedCost [numberIntegers];
    double * random = new double [numberIntegers];

    int maxNumberAtBoundToFix = static_cast<int> (floor(percentageToFix_ * numberIntegers));
    assert (!maxNumberAtBoundToFix||!nodes);

    // count how many fractional variables
    int numberFractionalVariables = 0;
    for (int i = 0; i < numberIntegers; i++) {
        random[i] = randomNumberGenerator_.randomDouble() + 0.3;
        int iColumn = integerVariable[i];
        double value = newSolution[iColumn];
        if (fabs(floor(value + 0.5) - value) > integerTolerance) {
            numberFractionalVariables++;
        }
    }

    const double* reducedCost = NULL;
    // See if not NLP
    if (model_->solverCharacteristics()->reducedCostsAccurate())
        reducedCost = solver->getReducedCost();

    int iteration = 0;
    while (numberFractionalVariables) {
        iteration++;

        // initialize any data
        initializeData();

        // select a fractional variable to bound
        int bestColumn = -1;
        int bestRound; // -1 rounds down, +1 rounds up
        bool canRound = selectVariableToBranch(solver, newSolution,
                                               bestColumn, bestRound);
        // if the solution is not trivially roundable, we don't try to round;
        // if the solution is trivially roundable, we try to round. However,
        // if the rounded solution is worse than the current incumbent,
        // then we don't round and proceed normally. In this case, the
        // bestColumn will be a trivially roundable variable
        if (canRound) {
            // check if by rounding all fractional variables
            // we get a solution with an objective value
            // better than the current best integer solution
            double delta = 0.0;
            for (int i = 0; i < numberIntegers; i++) {
                int iColumn = integerVariable[i];
                double value = newSolution[iColumn];
                if (fabs(floor(value + 0.5) - value) > integerTolerance) {
                    assert(downLocks_[i] == 0 || upLocks_[i] == 0);
                    double obj = objective[iColumn];
                    if (downLocks_[i] == 0 && upLocks_[i] == 0) {
                        if (direction * obj >= 0.0)
                            delta += (floor(value) - value) * obj;
                        else
                            delta += (ceil(value) - value) * obj;
                    } else if (downLocks_[i] == 0)
                        delta += (floor(value) - value) * obj;
                    else
                        delta += (ceil(value) - value) * obj;
                }
            }
            if (direction*(solver->getObjValue() + delta) < solutionValue) {
#ifdef DIVE_DEBUG
                nRoundFeasible++;
#endif
		if (!nodes||bestColumn<0) {
		  // Round all the fractional variables
		  for (int i = 0; i < numberIntegers; i++) {
                    int iColumn = integerVariable[i];
                    double value = newSolution[iColumn];
                    if (fabs(floor(value + 0.5) - value) > integerTolerance) {
		      assert(downLocks_[i] == 0 || upLocks_[i] == 0);
		      if (downLocks_[i] == 0 && upLocks_[i] == 0) {
			if (direction * objective[iColumn] >= 0.0)
			  newSolution[iColumn] = floor(value);
			else
			  newSolution[iColumn] = ceil(value);
		      } else if (downLocks_[i] == 0)
			newSolution[iColumn] = floor(value);
		      else
			newSolution[iColumn] = ceil(value);
                    }
		  }
		  break;
		} else {
		  // can't round if going to use in branching
		  int i;
		  for (i = 0; i < numberIntegers; i++) {
		    int iColumn = integerVariable[i];
		    double value = newSolution[bestColumn];
		    if (fabs(floor(value + 0.5) - value) > integerTolerance) {
		      if (iColumn==bestColumn) {
			assert(downLocks_[i] == 0 || upLocks_[i] == 0);
			double obj = objective[bestColumn];
			if (downLocks_[i] == 0 && upLocks_[i] == 0) {
			  if (direction * obj >= 0.0)
                            bestRound=-1;
			  else
                            bestRound=1;
			} else if (downLocks_[i] == 0)
			  bestRound=-1;
			else
			  bestRound=1;
			break;
		      }
		    }
		  }
		}
	    }
#ifdef DIVE_DEBUG
            else
                nRoundInfeasible++;
#endif
        }

        // do reduced cost fixing
#ifdef DIVE_DEBUG
        int numberFixed = reducedCostFix(solver);
        std::cout << "numberReducedCostFixed = " << numberFixed << std::endl;
#else
        reducedCostFix(solver);
#endif

        int numberAtBoundFixed = 0;
#ifdef DIVE_FIX_BINARY_VARIABLES
        // fix binary variables based on pseudo reduced cost
        if (binVarIndex_.size()) {
            int cnt = 0;
            int n = static_cast<int>(binVarIndex_.size());
            for (int j = 0; j < n; j++) {
                int iColumn1 = binVarIndex_[j];
                double value = newSolution[iColumn1];
                if (fabs(value) <= integerTolerance &&
                        lower[iColumn1] != upper[iColumn1]) {
                    double maxPseudoReducedCost = 0.0;
#ifdef DIVE_DEBUG
                    std::cout << "iColumn1 = " << iColumn1 << ", value = " << value << std::endl;
#endif
                    int iRow = vbRowIndex_[j];
                    double chosenValue = 0.0;
                    for (int k = rowStart[iRow]; k < rowStart[iRow] + rowLength[iRow]; k++) {
                        int iColumn2 = column[k];
#ifdef DIVE_DEBUG
                        std::cout << "iColumn2 = " << iColumn2 << std::endl;
#endif
                        if (iColumn1 != iColumn2) {
                            double pseudoReducedCost = fabs(reducedCost[iColumn2] *
                                                            elementByRow[k]);
#ifdef DIVE_DEBUG
                            int k2;
                            for (k2 = rowStart[iRow]; k2 < rowStart[iRow] + rowLength[iRow]; k2++) {
                                if (column[k2] == iColumn1)
                                    break;
                            }
                            std::cout << "reducedCost[" << iColumn2 << "] = "
                                      << reducedCost[iColumn2]
                                      << ", elementByRow[" << iColumn2 << "] = " << elementByRow[k]
                                      << ", elementByRow[" << iColumn1 << "] = " << elementByRow[k2]
                                      << ", pseudoRedCost = " << pseudoReducedCost
                                      << std::endl;
#endif
                            if (pseudoReducedCost > maxPseudoReducedCost)
                                maxPseudoReducedCost = pseudoReducedCost;
                        } else {
                            // save value
                            chosenValue = fabs(elementByRow[k]);
                        }
                    }
                    assert (chosenValue);
                    maxPseudoReducedCost /= chosenValue;
#ifdef DIVE_DEBUG
                    std::cout << ", maxPseudoRedCost = " << maxPseudoReducedCost << std::endl;
#endif
                    candidate[cnt].var = iColumn1;
                    candidate[cnt++].pseudoRedCost = maxPseudoReducedCost;
                }
            }
#ifdef DIVE_DEBUG
            std::cout << "candidates for rounding = " << cnt << std::endl;
#endif
            std::sort(candidate, candidate + cnt, compareBinaryVars);
            for (int i = 0; i < cnt; i++) {
                int iColumn = candidate[i].var;
                if (numberAtBoundFixed < maxNumberAtBoundToFix) {
                    columnFixed[numberAtBoundFixed] = iColumn;
                    originalBound[numberAtBoundFixed] = upper[iColumn];
                    fixedAtLowerBound[numberAtBoundFixed] = true;
                    solver->setColUpper(iColumn, lower[iColumn]);
                    numberAtBoundFixed++;
                    if (numberAtBoundFixed == maxNumberAtBoundToFix)
                        break;
                }
            }
        }
#endif

        // fix other integer variables that are at their bounds
        int cnt = 0;
#ifdef GAP
        double gap = 1.0e30;
#endif
        if (reducedCost && true) {
#ifndef JJF_ONE
            cnt = fixOtherVariables(solver, solution, candidate, random);
#else
#ifdef GAP
            double cutoff = model_->getCutoff() ;
            if (cutoff < 1.0e20 && false) {
                double direction = solver->getObjSense() ;
                gap = cutoff - solver->getObjValue() * direction ;
                gap *= 0.1; // Fix more if plausible
                double tolerance;
                solver->getDblParam(OsiDualTolerance, tolerance) ;
                if (gap <= 0.0)
                    gap = tolerance;
                gap += 100.0 * tolerance;
            }
            int nOverGap = 0;
#endif
            int numberFree = 0;
            int numberFixed = 0;
            for (int i = 0; i < numberIntegers; i++) {
                int iColumn = integerVariable[i];
                if (upper[iColumn] > lower[iColumn]) {
                    numberFree++;
                    double value = newSolution[iColumn];
                    if (fabs(floor(value + 0.5) - value) <= integerTolerance) {
                        candidate[cnt].var = iColumn;
                        candidate[cnt++].pseudoRedCost =
                            fabs(reducedCost[iColumn] * random[i]);
#ifdef GAP
                        if (fabs(reducedCost[iColumn]) > gap)
                            nOverGap++;
#endif
                    }
                } else {
                    numberFixed++;
                }
            }
#ifdef GAP
            int nLeft = maxNumberAtBoundToFix - numberAtBoundFixed;
#ifdef CLP_INVESTIGATE4
            printf("cutoff %g obj %g nover %d - %d free, %d fixed\n",
                   cutoff, solver->getObjValue(), nOverGap, numberFree, numberFixed);
#endif
            if (nOverGap > nLeft && true) {
                nOverGap = CoinMin(nOverGap, nLeft + maxNumberAtBoundToFix / 2);
                maxNumberAtBoundToFix += nOverGap - nLeft;
            }
#else
#ifdef CLP_INVESTIGATE4
            printf("cutoff %g obj %g - %d free, %d fixed\n",
                   model_->getCutoff(), solver->getObjValue(), numberFree, numberFixed);
#endif
#endif
#endif
        } else {
            for (int i = 0; i < numberIntegers; i++) {
                int iColumn = integerVariable[i];
                if (upper[iColumn] > lower[iColumn]) {
                    double value = newSolution[iColumn];
                    if (fabs(floor(value + 0.5) - value) <= integerTolerance) {
                        candidate[cnt].var = iColumn;
                        candidate[cnt++].pseudoRedCost = numberIntegers - i;
                    }
                }
            }
        }
        std::sort(candidate, candidate + cnt, compareBinaryVars);
        for (int i = 0; i < cnt; i++) {
            int iColumn = candidate[i].var;
            if (upper[iColumn] > lower[iColumn]) {
                double value = newSolution[iColumn];
                if (fabs(floor(value + 0.5) - value) <= integerTolerance &&
                        numberAtBoundFixed < maxNumberAtBoundToFix) {
                    // fix the variable at one of its bounds
                    if (fabs(lower[iColumn] - value) <= integerTolerance) {
                        columnFixed[numberAtBoundFixed] = iColumn;
                        originalBound[numberAtBoundFixed] = upper[iColumn];
                        fixedAtLowerBound[numberAtBoundFixed] = true;
                        solver->setColUpper(iColumn, lower[iColumn]);
                        numberAtBoundFixed++;
                    } else if (fabs(upper[iColumn] - value) <= integerTolerance) {
                        columnFixed[numberAtBoundFixed] = iColumn;
                        originalBound[numberAtBoundFixed] = lower[iColumn];
                        fixedAtLowerBound[numberAtBoundFixed] = false;
                        solver->setColLower(iColumn, upper[iColumn]);
                        numberAtBoundFixed++;
                    }
                    if (numberAtBoundFixed == maxNumberAtBoundToFix)
                        break;
                }
            }
        }
#ifdef DIVE_DEBUG
        std::cout << "numberAtBoundFixed = " << numberAtBoundFixed << std::endl;
#endif

        double originalBoundBestColumn;
        double bestColumnValue;
	int whichWay;
        if (bestColumn >= 0) {
	    bestColumnValue = newSolution[bestColumn];
            if (bestRound < 0) {
                originalBoundBestColumn = upper[bestColumn];
                solver->setColUpper(bestColumn, floor(bestColumnValue));
		whichWay=0;
            } else {
                originalBoundBestColumn = lower[bestColumn];
                solver->setColLower(bestColumn, ceil(bestColumnValue));
		whichWay=1;
            }
        } else {
            break;
        }
        int originalBestRound = bestRound;
        int saveModelOptions = model_->specialOptions();
	
        while (1) {

            model_->setSpecialOptions(saveModelOptions | 2048);
            solver->resolve();
            model_->setSpecialOptions(saveModelOptions);
            if (!solver->isAbandoned()&&!solver->isIterationLimitReached()) {
                numberSimplexIterations += solver->getIterationCount();
            } else {
                numberSimplexIterations = maxSimplexIterations + 1;
		reasonToStop += 100;
                break;
            }

            if (!solver->isProvenOptimal()) {
	        if (nodes) {
		  if (solver->isProvenPrimalInfeasible()) {
		    if (maxSimplexIterationsAtRoot_!=COIN_INT_MAX) {
		      // stop now
		      printf("stopping on first infeasibility\n");
		      break;
		    } else if (cuts) {
		      // can do conflict cut
		      printf("could do intermediate conflict cut\n");
		      bool localCut;
		      OsiRowCut * cut = model_->conflictCut(solver,localCut);
		      if (cut) {
			if (!localCut) {
			  model_->makePartialCut(cut,solver);
			  cuts[numberCuts++]=cut;
			} else {
			  delete cut;
			}
		      }
		    }
		  } else {
		    reasonToStop += 10;
		    break;
		  }
		}
                if (numberAtBoundFixed > 0) {
                    // Remove the bound fix for variables that were at bounds
                    for (int i = 0; i < numberAtBoundFixed; i++) {
                        int iColFixed = columnFixed[i];
                        if (fixedAtLowerBound[i])
                            solver->setColUpper(iColFixed, originalBound[i]);
                        else
                            solver->setColLower(iColFixed, originalBound[i]);
                    }
                    numberAtBoundFixed = 0;
                } else if (bestRound == originalBestRound) {
                    bestRound *= (-1);
		    whichWay |=2;
                    if (bestRound < 0) {
                        solver->setColLower(bestColumn, originalBoundBestColumn);
                        solver->setColUpper(bestColumn, floor(bestColumnValue));
                    } else {
                        solver->setColLower(bestColumn, ceil(bestColumnValue));
                        solver->setColUpper(bestColumn, originalBoundBestColumn);
                    }
                } else
                    break;
            } else
                break;
        }

        if (!solver->isProvenOptimal() ||
                direction*solver->getObjValue() >= solutionValue) {
            reasonToStop += 1;
        } else if (iteration > maxIterations_) {
            reasonToStop += 2;
        } else if (CoinCpuTime() - time1 > maxTime_) {
            reasonToStop += 3;
        } else if (numberSimplexIterations > maxSimplexIterations) {
            reasonToStop += 4;
            // also switch off
#ifdef CLP_INVESTIGATE
            printf("switching off diving as too many iterations %d, %d allowed\n",
                   numberSimplexIterations, maxSimplexIterations);
#endif
            when_ = 0;
        } else if (solver->getIterationCount() > 1000 && iteration > 3 && !nodes) {
            reasonToStop += 5;
            // also switch off
#ifdef CLP_INVESTIGATE
            printf("switching off diving one iteration took %d iterations (total %d)\n",
                   solver->getIterationCount(), numberSimplexIterations);
#endif
            when_ = 0;
        }

        memcpy(newSolution, solution, numberColumns*sizeof(double));
        numberFractionalVariables = 0;
	double sumFractionalVariables=0.0;
        for (int i = 0; i < numberIntegers; i++) {
            int iColumn = integerVariable[i];
            double value = newSolution[iColumn];
	    double away = fabs(floor(value + 0.5) - value);
            if (away > integerTolerance) {
                numberFractionalVariables++;
		sumFractionalVariables += away;
            }
        }
	if (nodes) {
	  // save information
	  //branchValues[numberNodes]=bestColumnValue;
	  //statuses[numberNodes]=whichWay+(bestColumn<<2);
	  //bases[numberNodes]=solver->getWarmStart();
	  ClpSimplex * simplex = clpSolver->getModelPtr();
	  CbcSubProblem * sub =
	    new CbcSubProblem(clpSolver,lowerBefore,upperBefore,
			  simplex->statusArray(),numberNodes);
	  nodes[numberNodes]=sub;
	  // other stuff
	  sub->branchValue_=bestColumnValue;
	  sub->problemStatus_=whichWay;
	  sub->branchVariable_=bestColumn;
	  sub->objectiveValue_ = simplex->objectiveValue();
	  sub->sumInfeasibilities_ = sumFractionalVariables;
	  sub->numberInfeasibilities_ = numberFractionalVariables;
	  printf("DiveNode %d column %d way %d bvalue %g obj %g\n",
		 numberNodes,sub->branchVariable_,sub->problemStatus_,
		 sub->branchValue_,sub->objectiveValue_);
	  numberNodes++;
	  if (solver->isProvenOptimal()) {
	    memcpy(lastDjs,solver->getReducedCost(),numberColumns*sizeof(double));
	    memcpy(lowerBefore,lower,numberColumns*sizeof(double));
	    memcpy(upperBefore,upper,numberColumns*sizeof(double));
	  }
	}
	if (!numberFractionalVariables||reasonToStop)
	  break;
    }
    if (nodes) {
      printf("Exiting dive for reason %d\n",reasonToStop);
      if (reasonToStop>1) {
	printf("problems in diving\n");
	int whichWay=nodes[numberNodes-1]->problemStatus_;
	CbcSubProblem * sub;
	if ((whichWay&2)==0) {
	  // leave both ways
	  sub = new CbcSubProblem(*nodes[numberNodes-1]);
	  nodes[numberNodes++]=sub;
	} else {
	  sub = nodes[numberNodes-1];
	}
	if ((whichWay&1)==0)
	  sub->problemStatus_=whichWay|1;
	else
	  sub->problemStatus_=whichWay&~1;
      }
      if (!numberNodes) {
	// was good at start! - create fake
	clpSolver->resolve();
	ClpSimplex * simplex = clpSolver->getModelPtr();
	CbcSubProblem * sub =
	  new CbcSubProblem(clpSolver,lowerBefore,upperBefore,
			    simplex->statusArray(),numberNodes);
	nodes[numberNodes]=sub;
	// other stuff
	sub->branchValue_=0.0;
	sub->problemStatus_=0;
	sub->branchVariable_=-1;
	sub->objectiveValue_ = simplex->objectiveValue();
	sub->sumInfeasibilities_ = 0.0;
	sub->numberInfeasibilities_ = 0;
	printf("DiveNode %d column %d way %d bvalue %g obj %g\n",
	       numberNodes,sub->branchVariable_,sub->problemStatus_,
	       sub->branchValue_,sub->objectiveValue_);
	numberNodes++;
	assert (solver->isProvenOptimal());
      }
      nodes[numberNodes-1]->problemStatus_ |= 256*reasonToStop;
      // use djs as well
      if (solver->isProvenPrimalInfeasible()&&cuts) {
	// can do conflict cut and re-order
	printf("could do final conflict cut\n");
	bool localCut;
	OsiRowCut * cut = model_->conflictCut(solver,localCut);
	if (cut) {
	  printf("cut - need to use conflict and previous djs\n");
	  if (!localCut) {
	    model_->makePartialCut(cut,solver);
	    cuts[numberCuts++]=cut;
	  } else {
	    delete cut;
	  }
	} else {
	  printf("bad conflict - just use previous djs\n");
	}
      }
    }
    
    // re-compute new solution value
    double objOffset = 0.0;
    solver->getDblParam(OsiObjOffset, objOffset);
    newSolutionValue = -objOffset;
    for (int i = 0 ; i < numberColumns ; i++ )
      newSolutionValue += objective[i] * newSolution[i];
    newSolutionValue *= direction;
    //printf("new solution value %g %g\n",newSolutionValue,solutionValue);
    if (newSolutionValue < solutionValue && !reasonToStop) {
      double * rowActivity = new double[numberRows];
      memset(rowActivity, 0, numberRows*sizeof(double));
      // paranoid check
      memset(rowActivity, 0, numberRows*sizeof(double));
      for (int i = 0; i < numberColumns; i++) {
	int j;
	double value = newSolution[i];
	if (value) {
	  for (j = columnStart[i];
	       j < columnStart[i] + columnLength[i]; j++) {
	    int iRow = row[j];
	    rowActivity[iRow] += value * element[j];
	  }
	}
      }
      // check was approximately feasible
      bool feasible = true;
      for (int i = 0; i < numberRows; i++) {
	if (rowActivity[i] < rowLower[i]) {
	  if (rowActivity[i] < rowLower[i] - 1000.0*primalTolerance)
	    feasible = false;
	} else if (rowActivity[i] > rowUpper[i]) {
	  if (rowActivity[i] > rowUpper[i] + 1000.0*primalTolerance)
	    feasible = false;
	}
      }
      for (int i = 0; i < numberIntegers; i++) {
	int iColumn = integerVariable[i];
	double value = newSolution[iColumn];
	if (fabs(floor(value + 0.5) - value) > integerTolerance) {
	  feasible = false;
	  break;
	}
      }
      if (feasible) {
	// new solution
	solutionValue = newSolutionValue;
	//printf("** Solution of %g found by CbcHeuristicDive\n",newSolutionValue);
	//if (cuts)
	//clpSolver->getModelPtr()->writeMps("good8.mps", 2);
	returnCode = 1;
      } else {
	// Can easily happen
	//printf("Debug CbcHeuristicDive giving bad solution\n");
      }
      delete [] rowActivity;
    }

#ifdef DIVE_DEBUG
    std::cout << "nRoundInfeasible = " << nRoundInfeasible
              << ", nRoundFeasible = " << nRoundFeasible
              << ", returnCode = " << returnCode
              << ", reasonToStop = " << reasonToStop
              << ", simplexIts = " << numberSimplexIterations
              << ", iterations = " << iteration << std::endl;
#endif

    delete [] columnFixed;
    delete [] originalBound;
    delete [] fixedAtLowerBound;
    delete [] candidate;
    delete [] random;
    delete [] downArray_;
    downArray_ = NULL;
    delete [] upArray_;
    upArray_ = NULL;
    delete solver;
    return returnCode;
}
Exemple #2
0
int main (int argc, const char *argv[])
{

  // Define your favorite OsiSolver
  
  OsiClpSolverInterface solver1;

  // Read in model using argv[1]
  // and assert that it is a clean model
  std::string mpsFileName;
#if defined(SAMPLEDIR)
  mpsFileName = SAMPLEDIR "/p0033.mps";
#else
  if (argc < 2) {
    fprintf(stderr, "Do not know where to find sample MPS files.\n");
    exit(1);
  }
#endif
  if (argc>=2) mpsFileName = argv[1];
  int numMpsReadErrors = solver1.readMps(mpsFileName.c_str(),"");
  assert(numMpsReadErrors==0);
  double time1 = CoinCpuTime();
  OsiClpSolverInterface solverSave = solver1;

  /* Options are:
     preprocess to do preprocessing
     time in minutes
     if 2 parameters and numeric taken as time
  */
  bool preProcess=false;
  double minutes=-1.0;
  int nGoodParam=0;
  for (int iParam=2; iParam<argc;iParam++) {
    if (!strcmp(argv[iParam],"preprocess")) {
      preProcess=true;
      nGoodParam++;
    } else if (!strcmp(argv[iParam],"time")) {
      if (iParam+1<argc&&isdigit(argv[iParam+1][0])) {
        minutes=atof(argv[iParam+1]);
        if (minutes>=0.0) {
          nGoodParam+=2;
          iParam++; // skip time
        }
      }
    }
  }
  if (nGoodParam==0&&argc==3&&isdigit(argv[2][0])) {
    // If time is given then stop after that number of minutes
    minutes = atof(argv[2]);
    if (minutes>=0.0) 
      nGoodParam=1;
  }
  if (nGoodParam!=argc-2&&argc>=2) {
    printf("Usage <file> [preprocess] [time <minutes>] or <file> <minutes>\n");
    exit(1);
  }
  // Reduce printout
  solver1.setHintParam(OsiDoReducePrint,true,OsiHintTry);
  // See if we want preprocessing
  OsiSolverInterface * solver2=&solver1;
  CglPreProcess process;
  // Never do preprocessing until dual tests out as can fix incorrectly
  preProcess=false;
  if (preProcess) {
    /* Do not try and produce equality cliques and
       do up to 5 passes */
    solver2 = process.preProcess(solver1,false,5);
    if (!solver2) {
      printf("Pre-processing says infeasible\n");
      exit(2);
    }
    solver2->resolve();
  }
  // Turn L rows into cuts
  CglStoredUser stored;
 {
  int numberRows = solver2->getNumRows();

  int * whichRow = new int[numberRows];
  // get row copy
  const CoinPackedMatrix * rowCopy = solver2->getMatrixByRow();
  const int * column = rowCopy->getIndices();
  const int * rowLength = rowCopy->getVectorLengths();
  const CoinBigIndex * rowStart = rowCopy->getVectorStarts();
  const double * rowLower = solver2->getRowLower();
  const double * rowUpper = solver2->getRowUpper();
  const double * element = rowCopy->getElements();
  int iRow,nDelete=0;
  for (iRow=0;iRow<numberRows;iRow++) {
    if (rowLower[iRow]<-1.0e20||rowUpper[iRow]>1.0e20) {
      // take out
      whichRow[nDelete++]=iRow;
    }
  }
  // leave some rows to avoid empty problem (Gomory does not like)
  nDelete = CoinMax(CoinMin(nDelete,numberRows-5),0);
  for (int jRow=0;jRow<nDelete;jRow++) {
    iRow=whichRow[jRow];
    int start = rowStart[iRow];
    stored.addCut(rowLower[iRow],rowUpper[iRow],rowLength[iRow],
		  column+start,element+start);
  }
  /* The following is problem specific.
     Normally cuts are deleted if slack on cut basic.
     On some problems you may wish to leave cuts in as long
     as slack value zero
  */
  int numberCuts=stored.sizeRowCuts();
  for (int iCut=0;iCut<numberCuts;iCut++) {
    //stored.mutableRowCutPointer(iCut)->setEffectiveness(1.0e50);
  }
  solver2->deleteRows(nDelete,whichRow);
  delete [] whichRow;
 }
  CbcModel model(*solver2);
  model.solver()->setHintParam(OsiDoReducePrint,true,OsiHintTry);
  // Set up some cut generators and defaults
  // Probing first as gets tight bounds on continuous

  CglProbing generator1;
  generator1.setUsingObjective(true);
  generator1.setMaxPass(1);
  generator1.setMaxPassRoot(5);
  // Number of unsatisfied variables to look at
  generator1.setMaxProbe(10);
  generator1.setMaxProbeRoot(1000);
  // How far to follow the consequences
  generator1.setMaxLook(50);
  generator1.setMaxLookRoot(500);
  // Only look at rows with fewer than this number of elements
  generator1.setMaxElements(200);
  generator1.setRowCuts(3);

  CglGomory generator2;
  // try larger limit
  generator2.setLimit(300);

  CglKnapsackCover generator3;

  CglRedSplit generator4;
  // try larger limit
  generator4.setLimit(200);

  CglClique generator5;
  generator5.setStarCliqueReport(false);
  generator5.setRowCliqueReport(false);

  CglMixedIntegerRounding2 mixedGen;
  CglFlowCover flowGen;
  
  // Add in generators
  // Experiment with -1 and -99 etc
  // This is just for one particular model
  model.addCutGenerator(&generator1,-1,"Probing");
  //model.addCutGenerator(&generator2,-1,"Gomory");
  model.addCutGenerator(&generator2,1,"Gomory");
  model.addCutGenerator(&generator3,-1,"Knapsack");
  // model.addCutGenerator(&generator4,-1,"RedSplit");
  //model.addCutGenerator(&generator5,-1,"Clique");
  model.addCutGenerator(&generator5,1,"Clique");
  model.addCutGenerator(&flowGen,-1,"FlowCover");
  model.addCutGenerator(&mixedGen,-1,"MixedIntegerRounding");
  // Add stored cuts (making sure at all depths)
  model.addCutGenerator(&stored,1,"Stored",true,false,false,-100,1,-1);
  
  int numberGenerators = model.numberCutGenerators();
  int iGenerator;
  // Say we want timings
  for (iGenerator=0;iGenerator<numberGenerators;iGenerator++) {
    CbcCutGenerator * generator = model.cutGenerator(iGenerator);
    generator->setTiming(true);
  }
  OsiClpSolverInterface * osiclp = dynamic_cast< OsiClpSolverInterface*> (model.solver());
  // go faster stripes
  if (osiclp) { 
    if(osiclp->getNumRows()<300&&osiclp->getNumCols()<500) {
      //osiclp->setupForRepeatedUse(2,0);
      osiclp->setupForRepeatedUse(0,0);
    }
    // Don't allow dual stuff
    osiclp->setSpecialOptions(osiclp->specialOptions()|262144);
  } 
  // Uncommenting this should switch off all CBC messages
  // model.messagesPointer()->setDetailMessages(10,10000,NULL);
  // No heuristics
  // Do initial solve to continuous
  model.initialSolve();
  /*  You need the next few lines -
      a) so that cut generator will always be called again if it generated cuts
      b) it is known that matrix is not enough to define problem so do cuts even
         if it looks integer feasible at continuous optimum.
      c) a solution found by strong branching will be ignored.
      d) don't recompute a solution once found
  */
  // Make sure cut generator called correctly (a)
  iGenerator=numberGenerators-1;
  model.cutGenerator(iGenerator)->setMustCallAgain(true);
  // Say cuts needed at continuous (b)
  OsiBabSolver oddCuts;
  oddCuts.setSolverType(4);
  // owing to bug must set after initialSolve
  model.passInSolverCharacteristics(&oddCuts);
  // Say no to all solutions by strong branching (c)
  CbcFeasibilityNoStrong noStrong;
  model.setProblemFeasibility(noStrong);
  // Say don't recompute solution d)
  model.setSpecialOptions(4);

  // Could tune more
  double objValue = model.solver()->getObjSense()*model.solver()->getObjValue();
  double minimumDropA=CoinMin(1.0,fabs(objValue)*1.0e-3+1.0e-4);
  double minimumDrop= fabs(objValue)*1.0e-4+1.0e-4;
  printf("min drop %g (A %g)\n",minimumDrop,minimumDropA);
  model.setMinimumDrop(minimumDrop);

  if (model.getNumCols()<500)
    model.setMaximumCutPassesAtRoot(-100); // always do 100 if possible
  else if (model.getNumCols()<5000)
    model.setMaximumCutPassesAtRoot(100); // use minimum drop
  else
    model.setMaximumCutPassesAtRoot(20);
  model.setMaximumCutPasses(10);
  //model.setMaximumCutPasses(2);

  // Switch off strong branching if wanted
  // model.setNumberStrong(0);
  // Do more strong branching if small
  if (model.getNumCols()<5000)
    model.setNumberStrong(10);
  model.setNumberStrong(20);
  //model.setNumberStrong(5);
  model.setNumberBeforeTrust(5);

  model.solver()->setIntParam(OsiMaxNumIterationHotStart,100);

  // If time is given then stop after that number of minutes
  if (minutes>=0.0) {
    std::cout<<"Stopping after "<<minutes<<" minutes"<<std::endl;
    model.setDblParam(CbcModel::CbcMaximumSeconds,60.0*minutes);
  }
  // Switch off most output
  if (model.getNumCols()<30000) {
    model.messageHandler()->setLogLevel(1);
    //model.solver()->messageHandler()->setLogLevel(0);
  } else {
    model.messageHandler()->setLogLevel(2);
    model.solver()->messageHandler()->setLogLevel(1);
  }
  //model.messageHandler()->setLogLevel(2);
  //model.solver()->messageHandler()->setLogLevel(2);
  //model.setPrintFrequency(50);
  //#define DEBUG_CUTS
#ifdef DEBUG_CUTS
  // Set up debugger by name (only if no preprocesing)
  if (!preProcess) {
    std::string problemName ;
    model.solver()->getStrParam(OsiProbName,problemName) ;
    model.solver()->activateRowCutDebugger(problemName.c_str()) ;
  }
#endif
  // Do complete search
  
  model.branchAndBound();

  std::cout<<mpsFileName<<" took "<<CoinCpuTime()-time1<<" seconds, "
	   <<model.getNodeCount()<<" nodes with objective "
	   <<model.getObjValue()
	   <<(!model.status() ? " Finished" : " Not finished")
	   <<std::endl;

  // Print more statistics
  std::cout<<"Cuts at root node changed objective from "<<model.getContinuousObjective()
	   <<" to "<<model.rootObjectiveAfterCuts()<<std::endl;

  for (iGenerator=0;iGenerator<numberGenerators;iGenerator++) {
    CbcCutGenerator * generator = model.cutGenerator(iGenerator);
    std::cout<<generator->cutGeneratorName()<<" was tried "
	     <<generator->numberTimesEntered()<<" times and created "
	     <<generator->numberCutsInTotal()<<" cuts of which "
	     <<generator->numberCutsActive()<<" were active after adding rounds of cuts";
    if (generator->timing())
      std::cout<<" ( "<<generator->timeInCutGenerator()<<" seconds)"<<std::endl;
    else
      std::cout<<std::endl;
  }
  // Print solution if finished - we can't get names from Osi! - so get from OsiClp

  if (model.getMinimizationObjValue()<1.0e50) {
    // post process
    OsiSolverInterface * solver;
    if (preProcess) {
      process.postProcess(*model.solver());
      // Solution now back in solver1
      solver = & solver1;
    } else {
      solver = model.solver();
    }
    int numberColumns = solver->getNumCols();
    
    const double * solution = solver->getColSolution();

    // Get names from solver1 (as OsiSolverInterface may lose)
    std::vector<std::string> columnNames = *solver1.getModelPtr()->columnNames();
    
    int iColumn;
    std::cout<<std::setiosflags(std::ios::fixed|std::ios::showpoint)<<std::setw(14);
    
    std::cout<<"--------------------------------------"<<std::endl;
    for (iColumn=0;iColumn<numberColumns;iColumn++) {
      double value=solution[iColumn];
      if (fabs(value)>1.0e-7&&solver->isInteger(iColumn)) {
	std::cout<<std::setw(6)<<iColumn<<" "
                 <<columnNames[iColumn]<<" "
                 <<value<<std::endl;
	solverSave.setColLower(iColumn,value);
	solverSave.setColUpper(iColumn,value);
      }
    }
    std::cout<<"--------------------------------------"<<std::endl;
  
    std::cout<<std::resetiosflags(std::ios::fixed|std::ios::showpoint|std::ios::scientific);
    solverSave.initialSolve();
  }
  return 0;
}