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										 |  |  | /* ----------------------------------------------------------------------------
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							|  |  |  | 
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							|  |  |  |  * GTSAM Copyright 2010, Georgia Tech Research Corporation, | 
					
						
							|  |  |  |  * Atlanta, Georgia 30332-0415 | 
					
						
							|  |  |  |  * All Rights Reserved | 
					
						
							|  |  |  |  * Authors: Frank Dellaert, et al. (see THANKS for the full author list) | 
					
						
							|  |  |  | 
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							|  |  |  |  * See LICENSE for the license information | 
					
						
							|  |  |  | 
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							|  |  |  |  * -------------------------------------------------------------------------- */ | 
					
						
							|  |  |  | 
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							|  |  |  | /**
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							|  |  |  |  * @file     ActiveSetSolver-inl.h | 
					
						
							|  |  |  |  * @brief    Implmentation of ActiveSetSolver. | 
					
						
							|  |  |  |  * @author   Ivan Dario Jimenez | 
					
						
							|  |  |  |  * @author   Duy Nguyen Ta | 
					
						
							|  |  |  |  * @date     2/11/16 | 
					
						
							|  |  |  |  */ | 
					
						
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										 |  |  | #pragma once
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							|  |  |  | 
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										 |  |  | #include <gtsam_unstable/linear/InfeasibleInitialValues.h>
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							|  |  |  | 
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							|  |  |  | /******************************************************************************/ | 
					
						
							|  |  |  | // Convenient macros to reduce syntactic noise. undef later.
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							|  |  |  | #define Template template <class PROBLEM, class POLICY, class INITSOLVER>
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							|  |  |  | #define This ActiveSetSolver<PROBLEM, POLICY, INITSOLVER>
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							|  |  |  | 
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							|  |  |  | /******************************************************************************/ | 
					
						
							|  |  |  | 
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							|  |  |  | namespace gtsam { | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  | /* We have to make sure the new solution with alpha satisfies all INACTIVE inequality constraints
 | 
					
						
							|  |  |  |  * If some inactive inequality constraints complain about the full step (alpha = 1), | 
					
						
							|  |  |  |  * we have to adjust alpha to stay within the inequality constraints' feasible regions. | 
					
						
							|  |  |  |  * | 
					
						
							|  |  |  |  * For each inactive inequality j: | 
					
						
							|  |  |  |  *  - We already have: aj'*xk - bj <= 0, since xk satisfies all inequality constraints | 
					
						
							|  |  |  |  *  - We want: aj'*(xk + alpha*p) - bj <= 0 | 
					
						
							|  |  |  |  *  - If aj'*p <= 0, we have: aj'*(xk + alpha*p) <= aj'*xk <= bj, for all alpha>0 | 
					
						
							|  |  |  |  *  it's good! | 
					
						
							|  |  |  |  *  - We only care when aj'*p > 0. In this case, we need to choose alpha so that | 
					
						
							|  |  |  |  *  aj'*xk + alpha*aj'*p - bj <= 0  --> alpha <= (bj - aj'*xk) / (aj'*p) | 
					
						
							|  |  |  |  *  We want to step as far as possible, so we should choose alpha = (bj - aj'*xk) / (aj'*p) | 
					
						
							|  |  |  |  * | 
					
						
							|  |  |  |  * We want the minimum of all those alphas among all inactive inequality. | 
					
						
							|  |  |  |  */ | 
					
						
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										 |  |  | Template std::tuple<double, int> This::computeStepSize( | 
					
						
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										 |  |  |     const InequalityFactorGraph& workingSet, const VectorValues& xk, | 
					
						
							|  |  |  |     const VectorValues& p, const double& maxAlpha) const { | 
					
						
							|  |  |  |   double minAlpha = maxAlpha; | 
					
						
							|  |  |  |   int closestFactorIx = -1; | 
					
						
							|  |  |  |   for (size_t factorIx = 0; factorIx < workingSet.size(); ++factorIx) { | 
					
						
							|  |  |  |     const LinearInequality::shared_ptr& factor = workingSet.at(factorIx); | 
					
						
							|  |  |  |     double b = factor->getb()[0]; | 
					
						
							|  |  |  |     // only check inactive factors
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							|  |  |  |     if (!factor->active()) { | 
					
						
							|  |  |  |       // Compute a'*p
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							|  |  |  |       double aTp = factor->dotProductRow(p); | 
					
						
							|  |  |  | 
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							|  |  |  |       // Check if  a'*p >0. Don't care if it's not.
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							|  |  |  |       if (aTp <= 0) | 
					
						
							|  |  |  |         continue; | 
					
						
							|  |  |  | 
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							|  |  |  |       // Compute a'*xk
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							|  |  |  |       double aTx = factor->dotProductRow(xk); | 
					
						
							|  |  |  | 
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							|  |  |  |       // alpha = (b - a'*xk) / (a'*p)
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							|  |  |  |       double alpha = (b - aTx) / aTp; | 
					
						
							|  |  |  |       // We want the minimum of all those max alphas
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							|  |  |  |       if (alpha < minAlpha) { | 
					
						
							|  |  |  |         closestFactorIx = factorIx; | 
					
						
							|  |  |  |         minAlpha = alpha; | 
					
						
							|  |  |  |       } | 
					
						
							|  |  |  |     } | 
					
						
							|  |  |  |   } | 
					
						
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										 |  |  |   return std::make_tuple(minAlpha, closestFactorIx); | 
					
						
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										 |  |  | } | 
					
						
							|  |  |  | 
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							|  |  |  | /******************************************************************************/ | 
					
						
							|  |  |  | /*
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							|  |  |  |  * The goal of this function is to find currently active inequality constraints | 
					
						
							|  |  |  |  * that violate the condition to be active. The one that violates the condition | 
					
						
							|  |  |  |  * the most will be removed from the active set. See Nocedal06book, pg 469-471 | 
					
						
							|  |  |  |  * | 
					
						
							|  |  |  |  * Find the BAD active inequality that pulls x strongest to the wrong direction | 
					
						
							|  |  |  |  * of its constraint (i.e. it is pulling towards >0, while its feasible region is <=0) | 
					
						
							|  |  |  |  * | 
					
						
							|  |  |  |  * For active inequality constraints (those that are enforced as equality constraints | 
					
						
							|  |  |  |  * in the current working set), we want lambda < 0. | 
					
						
							|  |  |  |  * This is because: | 
					
						
							|  |  |  |  *   - From the Lagrangian L = f - lambda*c, we know that the constraint force | 
					
						
							|  |  |  |  *     is (lambda * \grad c) = \grad f. Intuitively, to keep the solution x stay | 
					
						
							|  |  |  |  *     on the constraint surface, the constraint force has to balance out with | 
					
						
							|  |  |  |  *     other unconstrained forces that are pulling x towards the unconstrained | 
					
						
							|  |  |  |  *     minimum point. The other unconstrained forces are pulling x toward (-\grad f), | 
					
						
							|  |  |  |  *     hence the constraint force has to be exactly \grad f, so that the total | 
					
						
							|  |  |  |  *     force is 0. | 
					
						
							|  |  |  |  *   - We also know that  at the constraint surface c(x)=0, \grad c points towards + (>= 0), | 
					
						
							|  |  |  |  *     while we are solving for - (<=0) constraint. | 
					
						
							|  |  |  |  *   - We want the constraint force (lambda * \grad c) to pull x towards the - (<=0) direction | 
					
						
							|  |  |  |  *     i.e., the opposite direction of \grad c where the inequality constraint <=0 is satisfied. | 
					
						
							|  |  |  |  *     That means we want lambda < 0. | 
					
						
							|  |  |  |  *   - This is because when the constrained force pulls x towards the infeasible region (+), | 
					
						
							|  |  |  |  *     the unconstrained force is pulling x towards the opposite direction into | 
					
						
							|  |  |  |  *     the feasible region (again because the total force has to be 0 to make x stay still) | 
					
						
							|  |  |  |  *     So we can drop this constraint to have a lower error but feasible solution. | 
					
						
							|  |  |  |  * | 
					
						
							|  |  |  |  * In short, active inequality constraints with lambda > 0 are BAD, because they | 
					
						
							|  |  |  |  * violate the condition to be active. | 
					
						
							|  |  |  |  * | 
					
						
							|  |  |  |  * And we want to remove the worst one with the largest lambda from the active set. | 
					
						
							|  |  |  |  * | 
					
						
							|  |  |  |  */ | 
					
						
							|  |  |  | Template int This::identifyLeavingConstraint( | 
					
						
							|  |  |  |     const InequalityFactorGraph& workingSet, | 
					
						
							|  |  |  |     const VectorValues& lambdas) const { | 
					
						
							|  |  |  |   int worstFactorIx = -1; | 
					
						
							|  |  |  |   // preset the maxLambda to 0.0: if lambda is <= 0.0, the constraint is either
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							|  |  |  |   // inactive or a good inequality constraint, so we don't care!
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							|  |  |  |   double maxLambda = 0.0; | 
					
						
							|  |  |  |   for (size_t factorIx = 0; factorIx < workingSet.size(); ++factorIx) { | 
					
						
							|  |  |  |     const LinearInequality::shared_ptr& factor = workingSet.at(factorIx); | 
					
						
							|  |  |  |     if (factor->active()) { | 
					
						
							|  |  |  |       double lambda = lambdas.at(factor->dualKey())[0]; | 
					
						
							|  |  |  |       if (lambda > maxLambda) { | 
					
						
							|  |  |  |         worstFactorIx = factorIx; | 
					
						
							|  |  |  |         maxLambda = lambda; | 
					
						
							|  |  |  |       } | 
					
						
							|  |  |  |     } | 
					
						
							|  |  |  |   } | 
					
						
							|  |  |  |   return worstFactorIx; | 
					
						
							|  |  |  | } | 
					
						
							|  |  |  | 
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							|  |  |  | //******************************************************************************
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							|  |  |  | Template JacobianFactor::shared_ptr This::createDualFactor( | 
					
						
							|  |  |  |     Key key, const InequalityFactorGraph& workingSet, | 
					
						
							|  |  |  |     const VectorValues& delta) const { | 
					
						
							|  |  |  |   // Transpose the A matrix of constrained factors to have the jacobian of the
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							|  |  |  |   // dual key
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							|  |  |  |   TermsContainer Aterms = collectDualJacobians<LinearEquality>( | 
					
						
							|  |  |  |       key, problem_.equalities, equalityVariableIndex_); | 
					
						
							|  |  |  |   TermsContainer AtermsInequalities = collectDualJacobians<LinearInequality>( | 
					
						
							|  |  |  |       key, workingSet, inequalityVariableIndex_); | 
					
						
							|  |  |  |   Aterms.insert(Aterms.end(), AtermsInequalities.begin(), | 
					
						
							|  |  |  |                 AtermsInequalities.end()); | 
					
						
							|  |  |  | 
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							|  |  |  |   // Collect the gradients of unconstrained cost factors to the b vector
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							|  |  |  |   if (Aterms.size() > 0) { | 
					
						
							|  |  |  |     Vector b = problem_.costGradient(key, delta); | 
					
						
							|  |  |  |     // to compute the least-square approximation of dual variables
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										 |  |  |     return std::make_shared<JacobianFactor>(Aterms, b); | 
					
						
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										 |  |  |   } else { | 
					
						
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										 |  |  |     return nullptr; | 
					
						
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										 |  |  |   } | 
					
						
							|  |  |  | } | 
					
						
							|  |  |  | 
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							|  |  |  | /******************************************************************************/ | 
					
						
							|  |  |  | /*  This function will create a dual graph that solves for the
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							|  |  |  |  *  lagrange multipliers for the current working set. | 
					
						
							|  |  |  |  *  You can use lagrange multipliers as a necessary condition for optimality. | 
					
						
							|  |  |  |  *  The factor graph that is being solved is f' = -lambda * g' | 
					
						
							|  |  |  |  *  where f is the optimized function and g is the function resulting from | 
					
						
							|  |  |  |  *  aggregating the working set. | 
					
						
							|  |  |  |  *  The lambdas give you information about the feasibility of a constraint. | 
					
						
							|  |  |  |  *  if lambda < 0  the constraint is Ok | 
					
						
							|  |  |  |  *  if lambda = 0  you are on the constraint | 
					
						
							|  |  |  |  *  if lambda > 0  you are violating the constraint. | 
					
						
							|  |  |  |  */ | 
					
						
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										 |  |  | Template GaussianFactorGraph This::buildDualGraph( | 
					
						
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										 |  |  |     const InequalityFactorGraph& workingSet, const VectorValues& delta) const { | 
					
						
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										 |  |  |   GaussianFactorGraph dualGraph; | 
					
						
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										 |  |  |   for (Key key : constrainedKeys_) { | 
					
						
							|  |  |  |     // Each constrained key becomes a factor in the dual graph
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										 |  |  |     auto dualFactor = createDualFactor(key, workingSet, delta); | 
					
						
							|  |  |  |     if (dualFactor) dualGraph.push_back(dualFactor); | 
					
						
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										 |  |  |   } | 
					
						
							|  |  |  |   return dualGraph; | 
					
						
							|  |  |  | } | 
					
						
							|  |  |  | 
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							|  |  |  | //******************************************************************************
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							|  |  |  | Template GaussianFactorGraph | 
					
						
							|  |  |  | This::buildWorkingGraph(const InequalityFactorGraph& workingSet, | 
					
						
							|  |  |  |                         const VectorValues& xk) const { | 
					
						
							|  |  |  |   GaussianFactorGraph workingGraph; | 
					
						
							|  |  |  |   workingGraph.push_back(POLICY::buildCostFunction(problem_, xk)); | 
					
						
							|  |  |  |   workingGraph.push_back(problem_.equalities); | 
					
						
							|  |  |  |   for (const LinearInequality::shared_ptr& factor : workingSet) | 
					
						
							|  |  |  |     if (factor->active()) workingGraph.push_back(factor); | 
					
						
							|  |  |  |   return workingGraph; | 
					
						
							|  |  |  | } | 
					
						
							|  |  |  | 
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							|  |  |  | //******************************************************************************
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							|  |  |  | Template typename This::State This::iterate( | 
					
						
							|  |  |  |     const typename This::State& state) const { | 
					
						
							|  |  |  |   // Algorithm 16.3 from Nocedal06book.
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										 |  |  |   // Solve with the current working set eqn 16.39, but solve for x not p
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							|  |  |  |   auto workingGraph = buildWorkingGraph(state.workingSet, state.values); | 
					
						
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										 |  |  |   VectorValues newValues = workingGraph.optimize(); | 
					
						
							|  |  |  |   // If we CAN'T move further
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							|  |  |  |   // if p_k = 0 is the original condition, modified by Duy to say that the state
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							|  |  |  |   // update is zero.
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							|  |  |  |   if (newValues.equals(state.values, 1e-7)) { | 
					
						
							|  |  |  |     // Compute lambda from the dual graph
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										 |  |  |     auto dualGraph = buildDualGraph(state.workingSet, newValues); | 
					
						
							|  |  |  |     VectorValues duals = dualGraph.optimize(); | 
					
						
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										 |  |  |     int leavingFactor = identifyLeavingConstraint(state.workingSet, duals); | 
					
						
							|  |  |  |     // If all inequality constraints are satisfied: We have the solution!!
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							|  |  |  |     if (leavingFactor < 0) { | 
					
						
							|  |  |  |       return State(newValues, duals, state.workingSet, true, | 
					
						
							|  |  |  |           state.iterations + 1); | 
					
						
							|  |  |  |     } else { | 
					
						
							|  |  |  |       // Inactivate the leaving constraint
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							|  |  |  |       InequalityFactorGraph newWorkingSet = state.workingSet; | 
					
						
							|  |  |  |       newWorkingSet.at(leavingFactor)->inactivate(); | 
					
						
							|  |  |  |       return State(newValues, duals, newWorkingSet, false, | 
					
						
							|  |  |  |           state.iterations + 1); | 
					
						
							|  |  |  |     } | 
					
						
							|  |  |  |   } else { | 
					
						
							|  |  |  |     // If we CAN make some progress, i.e. p_k != 0
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							|  |  |  |     // Adapt stepsize if some inactive constraints complain about this move
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							|  |  |  |     VectorValues p = newValues - state.values; | 
					
						
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										 |  |  |     const auto [alpha, factorIx] = // using 16.41
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										 |  |  |         computeStepSize(state.workingSet, state.values, p, POLICY::maxAlpha); | 
					
						
							|  |  |  |     // also add to the working set the one that complains the most
 | 
					
						
							|  |  |  |     InequalityFactorGraph newWorkingSet = state.workingSet; | 
					
						
							|  |  |  |     if (factorIx >= 0) | 
					
						
							|  |  |  |       newWorkingSet.at(factorIx)->activate(); | 
					
						
							|  |  |  |     // step!
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							|  |  |  |     newValues = state.values + alpha * p; | 
					
						
							|  |  |  |     return State(newValues, state.duals, newWorkingSet, false, | 
					
						
							|  |  |  |         state.iterations + 1); | 
					
						
							|  |  |  |   } | 
					
						
							|  |  |  | } | 
					
						
							|  |  |  | 
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							|  |  |  | //******************************************************************************
 | 
					
						
							|  |  |  | Template InequalityFactorGraph This::identifyActiveConstraints( | 
					
						
							|  |  |  |     const InequalityFactorGraph& inequalities, | 
					
						
							|  |  |  |     const VectorValues& initialValues, const VectorValues& duals, | 
					
						
							|  |  |  |     bool useWarmStart) const { | 
					
						
							|  |  |  |   InequalityFactorGraph workingSet; | 
					
						
							|  |  |  |   for (const LinearInequality::shared_ptr& factor : inequalities) { | 
					
						
							|  |  |  |     LinearInequality::shared_ptr workingFactor(new LinearInequality(*factor)); | 
					
						
							|  |  |  |     if (useWarmStart && duals.size() > 0) { | 
					
						
							|  |  |  |       if (duals.exists(workingFactor->dualKey())) workingFactor->activate(); | 
					
						
							|  |  |  |       else workingFactor->inactivate(); | 
					
						
							|  |  |  |     } else { | 
					
						
							|  |  |  |       double error = workingFactor->error(initialValues); | 
					
						
							|  |  |  |       // Safety guard. This should not happen unless users provide a bad init
 | 
					
						
							|  |  |  |       if (error > 0) throw InfeasibleInitialValues(); | 
					
						
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										 |  |  |       if (std::abs(error) < 1e-7) | 
					
						
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										 |  |  |         workingFactor->activate(); | 
					
						
							|  |  |  |       else | 
					
						
							|  |  |  |         workingFactor->inactivate(); | 
					
						
							|  |  |  |     } | 
					
						
							|  |  |  |     workingSet.push_back(workingFactor); | 
					
						
							|  |  |  |   } | 
					
						
							|  |  |  |   return workingSet; | 
					
						
							|  |  |  | } | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  | //******************************************************************************
 | 
					
						
							|  |  |  | Template std::pair<VectorValues, VectorValues> This::optimize( | 
					
						
							|  |  |  |     const VectorValues& initialValues, const VectorValues& duals, | 
					
						
							|  |  |  |     bool useWarmStart) const { | 
					
						
							|  |  |  |   // Initialize workingSet from the feasible initialValues
 | 
					
						
							|  |  |  |   InequalityFactorGraph workingSet = identifyActiveConstraints( | 
					
						
							|  |  |  |       problem_.inequalities, initialValues, duals, useWarmStart); | 
					
						
							|  |  |  |   State state(initialValues, duals, workingSet, false, 0); | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  |   /// main loop of the solver
 | 
					
						
							|  |  |  |   while (!state.converged) state = iterate(state); | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  |   return std::make_pair(state.values, state.duals); | 
					
						
							|  |  |  | } | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  | //******************************************************************************
 | 
					
						
							|  |  |  | Template std::pair<VectorValues, VectorValues> This::optimize() const { | 
					
						
							|  |  |  |   INITSOLVER initSolver(problem_); | 
					
						
							|  |  |  |   VectorValues initValues = initSolver.solve(); | 
					
						
							|  |  |  |   return optimize(initValues); | 
					
						
							|  |  |  | } | 
					
						
							|  |  |  | 
 | 
					
						
							|  |  |  | } | 
					
						
							|  |  |  | 
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							|  |  |  | #undef Template
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											2022-02-22 00:56:32 +08:00
										 |  |  | #undef This
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