153 lines
6.1 KiB
C++
153 lines
6.1 KiB
C++
// Copyright 2010-2025 Google LLC
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// Licensed under the Apache License, Version 2.0 (the "License");
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// you may not use this file except in compliance with the License.
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// You may obtain a copy of the License at
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//
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// http://www.apache.org/licenses/LICENSE-2.0
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//
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// Unless required by applicable law or agreed to in writing, software
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// distributed under the License is distributed on an "AS IS" BASIS,
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// WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
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// See the License for the specific language governing permissions and
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// limitations under the License.
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#ifndef ORTOOLS_GLOP_DUAL_EDGE_NORMS_H_
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#define ORTOOLS_GLOP_DUAL_EDGE_NORMS_H_
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#include <string>
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#include "ortools/glop/basis_representation.h"
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#include "ortools/glop/parameters.pb.h"
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#include "ortools/lp_data/lp_data.h"
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#include "ortools/lp_data/lp_types.h"
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#include "ortools/lp_data/permutation.h"
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#include "ortools/lp_data/scattered_vector.h"
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#include "ortools/util/stats.h"
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#include "ortools/util/time_limit.h"
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namespace operations_research {
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namespace glop {
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// This class maintains the dual edge squared norms to be used in the
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// dual steepest edge pricing. The dual edge u_i associated with a basic
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// variable of row index i is such that u_i.B = e_i where e_i is the unit row
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// vector with a 1.0 at position i and B the current basis. We call such vector
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// u_i an unit row left inverse, and it can be computed by
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//
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// basis_factorization.LeftSolveForUnitRow(i, &u_i);
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//
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// Instead of computing each ||u_i|| at every iteration, it is more efficient to
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// update them incrementally for each basis pivot applied to B. See the code or
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// the papers below for details:
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//
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// J.J. Forrest, D. Goldfarb, "Steepest-edge simplex algorithms for linear
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// programming", Mathematical Programming 57 (1992) 341-374, North-Holland.
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// http://www.springerlink.com/content/q645w3t2q229m248/
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//
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// Achim Koberstein, "The dual simplex method, techniques for a fast and stable
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// implementation", PhD, Paderborn, Univ., 2005.
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// http://digital.ub.uni-paderborn.de/hs/download/pdf/3885?originalFilename=true
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class DualEdgeNorms {
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public:
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// Takes references to the linear program data we need.
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explicit DualEdgeNorms(const BasisFactorization& basis_factorization);
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// This type is neither copyable nor movable.
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DualEdgeNorms(const DualEdgeNorms&) = delete;
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DualEdgeNorms& operator=(const DualEdgeNorms&) = delete;
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// Clears, i.e. reset the object to its initial value. This will trigger a
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// full norm recomputation on the next GetEdgeSquaredNorms().
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void Clear();
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// When we just add new constraints to the matrix and use an incremental
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// solve, we do not need to recompute the norm of the old rows, and the norm
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// of the new ones can be just set to 1 as long as we use identity columns for
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// these.
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void ResizeOnNewRows(RowIndex new_size);
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// If this is true, then the caller must re-factorize the basis before the
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// next call to GetEdgeSquaredNorms(). This is because the latter will
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// recompute the norms from scratch and therefore needs a hightened precision
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// and speed. This also indicates if GetEdgeSquaredNorms() will trigger a
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// recomputation.
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bool NeedsBasisRefactorization() const;
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// Returns the dual edge squared norms. This is only valid if the caller
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// properly called UpdateBeforeBasisPivot() before each basis pivot, or just
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// called Clear().
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DenseColumn::ConstView GetEdgeSquaredNorms();
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// Updates the norms if the columns of the basis where permuted.
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void UpdateDataOnBasisPermutation(const ColumnPermutation& col_perm);
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// Computes exactly the norm of the given leaving row, and returns true if it
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// is good enough compared to our current norm. In both case update the
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// current norm with its precise version and decide if we should recompute
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// norms on the next GetEdgeSquaredNorms().
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bool TestPrecision(RowIndex leaving_row,
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const ScatteredRow& unit_row_left_inverse);
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// Updates the norms just before a basis pivot is applied:
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// - The column at leaving_row will leave the basis and the column at
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// entering_col will enter it.
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// - direction is the right inverse of the entering column.
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// - unit_row_left_inverse is the left inverse of the unit row with index
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// given by the leaving_row. This is also the leaving dual edge.
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void UpdateBeforeBasisPivot(ColIndex entering_col, RowIndex leaving_row,
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const ScatteredColumn& direction,
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const ScatteredRow& unit_row_left_inverse);
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// Sets the algorithm parameters.
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void SetParameters(const GlopParameters& parameters) {
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parameters_ = parameters;
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}
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void SetTimeLimit(TimeLimit* time_limit) { time_limit_ = time_limit; }
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// Stats related functions.
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std::string StatString() const { return stats_.StatString(); }
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private:
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// Recomputes the dual edge squared norms from scratch with maximum precision.
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// The matrix must have been refactorized before because we will do a lot of
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// inversions. See NeedsBasisRefactorization(). This is checked in debug mode.
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void ComputeEdgeSquaredNorms();
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// Computes the vector tau needed to update the norms using a right solve:
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// B.tau = (u_i)^T, u_i.B = e_i for i = leaving_row.
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const DenseColumn& ComputeTau(const ScatteredColumn& unit_row_left_inverse);
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// Statistics.
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struct Stats : public StatsGroup {
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Stats()
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: StatsGroup("DualEdgeNorms"),
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tau_density("tau_density", this),
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edge_norms_accuracy("edge_norms_accuracy", this),
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lower_bounded_norms("lower_bounded_norms", this) {}
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RatioDistribution tau_density;
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DoubleDistribution edge_norms_accuracy;
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IntegerDistribution lower_bounded_norms;
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};
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Stats stats_;
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// Parameters.
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GlopParameters parameters_;
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TimeLimit* time_limit_ = nullptr;
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// Problem data that should be updated from outside.
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const BasisFactorization& basis_factorization_;
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// The dual edge norms.
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DenseColumn edge_squared_norms_;
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DenseColumn tmp_edge_squared_norms_;
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// Whether we should recompute the norm from scratch.
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bool recompute_edge_squared_norms_;
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};
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} // namespace glop
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} // namespace operations_research
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#endif // ORTOOLS_GLOP_DUAL_EDGE_NORMS_H_
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