| 1 | /*
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| 2 |  * Project: MoleCuilder
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| 3 |  * Description: creates and alters molecular systems
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| 4 |  * Copyright (C)  2012 University of Bonn. All rights reserved.
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| 5 |  * Please see the COPYING file or "Copyright notice" in builder.cpp for details.
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| 6 |  *
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| 7 |  *
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| 8 |  *   This file is part of MoleCuilder.
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| 9 |  *
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| 10 |  *    MoleCuilder is free software: you can redistribute it and/or modify
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| 11 |  *    it under the terms of the GNU General Public License as published by
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| 12 |  *    the Free Software Foundation, either version 2 of the License, or
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| 13 |  *    (at your option) any later version.
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| 14 |  *
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| 15 |  *    MoleCuilder is distributed in the hope that it will be useful,
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| 16 |  *    but WITHOUT ANY WARRANTY; without even the implied warranty of
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| 17 |  *    MERCHANTABILITY or FITNESS FOR A PARTICULAR PURPOSE.  See the
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| 18 |  *    GNU General Public License for more details.
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| 19 |  *
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| 20 |  *    You should have received a copy of the GNU General Public License
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| 21 |  *    along with MoleCuilder.  If not, see <http://www.gnu.org/licenses/>.
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| 22 |  */
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| 23 | 
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| 24 | /*
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| 25 |  * FunctionApproximation.cpp
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| 26 |  *
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| 27 |  *  Created on: 02.10.2012
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| 28 |  *      Author: heber
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| 29 |  */
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| 30 | 
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| 31 | // include config.h
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| 32 | #ifdef HAVE_CONFIG_H
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| 33 | #include <config.h>
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| 34 | #endif
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| 35 | 
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| 36 | #include "CodePatterns/MemDebug.hpp"
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| 37 | 
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| 38 | #include "FunctionApproximation.hpp"
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| 39 | 
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| 40 | #include <algorithm>
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| 41 | #include <boost/bind.hpp>
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| 42 | #include <boost/function.hpp>
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| 43 | #include <iostream>
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| 44 | #include <iterator>
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| 45 | #include <numeric>
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| 46 | #include <sstream>
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| 47 | 
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| 48 | #include <levmar.h>
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| 49 | 
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| 50 | #include "CodePatterns/Assert.hpp"
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| 51 | #include "CodePatterns/Log.hpp"
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| 52 | 
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| 53 | #include "FunctionApproximation/FunctionModel.hpp"
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| 54 | #include "FunctionApproximation/TrainingData.hpp"
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| 55 | 
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| 56 | FunctionApproximation::FunctionApproximation(
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| 57 |     const TrainingData &_data,
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| 58 |     FunctionModel &_model) :
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| 59 |     input_dimension(_data.getTrainingInputs().size()),
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| 60 |     output_dimension(_data.getTrainingOutputs().size()),
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| 61 |     input_data(_data.getTrainingInputs()),
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| 62 |     output_data(_data.getTrainingOutputs()),
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| 63 |     model(_model)
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| 64 | {}
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| 65 | 
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| 66 | void FunctionApproximation::setTrainingData(const filtered_inputs_t &input, const outputs_t &output)
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| 67 | {
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| 68 |   ASSERT( input.size() == output.size(),
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| 69 |       "FunctionApproximation::setTrainingData() - the number of input and output tuples differ: "+toString(input.size())+"!="
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| 70 |       +toString(output.size())+".");
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| 71 |   if (input.size() != 0) {
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| 72 |     ASSERT( input[0].size() == input_dimension,
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| 73 |         "FunctionApproximation::setTrainingData() - the dimension of the input tuples and input dimension differ: "+toString(input[0].size())+"!="
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| 74 |         +toString(input_dimension)+".");
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| 75 |     input_data = input;
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| 76 |     ASSERT( output[0].size() == output_dimension,
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| 77 |         "FunctionApproximation::setTrainingData() - the dimension of the output tuples and output dimension differ: "+toString(output[0].size())+"!="
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| 78 |         +toString(output_dimension)+".");
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| 79 |     output_data = output;
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| 80 |   } else {
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| 81 |     ELOG(2, "Given vectors of training data are empty, clearing internal vectors accordingly.");
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| 82 |     input_data.clear();
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| 83 |     output_data.clear();
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| 84 |   }
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| 85 | }
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| 86 | 
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| 87 | void FunctionApproximation::setModelFunction(FunctionModel &_model)
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| 88 | {
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| 89 |   model= _model;
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| 90 | }
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| 91 | 
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| 92 | /** Callback to circumvent boost::bind, boost::function and function pointer problem.
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| 93 |  *
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| 94 |  * See here (second answer!) to the nature of the problem:
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| 95 |  * http://stackoverflow.com/questions/282372/demote-boostfunction-to-a-plain-function-pointer
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| 96 |  *
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| 97 |  * We cannot use a boost::bind bounded boost::function as a function pointer.
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| 98 |  * boost::function::target() will just return NULL because the signature does not
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| 99 |  * match. We have to use a C-style callback function and our luck is that
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| 100 |  * the levmar signature provides for a void* additional data pointer which we
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| 101 |  * can cast back to our FunctionApproximation class, as we need access to the
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| 102 |  * data contained, e.g. the FunctionModel reference FunctionApproximation::model.
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| 103 |  *
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| 104 |  */
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| 105 | void FunctionApproximation::LevMarCallback(double *p, double *x, int m, int n, void *data)
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| 106 | {
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| 107 |   FunctionApproximation *approximator = static_cast<FunctionApproximation *>(data);
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| 108 |   ASSERT( approximator != NULL,
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| 109 |       "LevMarCallback() - received data does not represent a FunctionApproximation object.");
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| 110 |   boost::function<void(double*,double*,int,int,void*)> function =
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| 111 |       boost::bind(&FunctionApproximation::evaluate, approximator, _1, _2, _3, _4, _5);
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| 112 |   function(p,x,m,n,data);
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| 113 | }
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| 114 | 
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| 115 | void FunctionApproximation::LevMarDerivativeCallback(double *p, double *x, int m, int n, void *data)
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| 116 | {
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| 117 |   FunctionApproximation *approximator = static_cast<FunctionApproximation *>(data);
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| 118 |   ASSERT( approximator != NULL,
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| 119 |       "LevMarDerivativeCallback() - received data does not represent a FunctionApproximation object.");
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| 120 |   boost::function<void(double*,double*,int,int,void*)> function =
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| 121 |       boost::bind(&FunctionApproximation::evaluateDerivative, approximator, _1, _2, _3, _4, _5);
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| 122 |   function(p,x,m,n,data);
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| 123 | }
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| 124 | 
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| 125 | void FunctionApproximation::prepareParameters(double *&p, int &m) const
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| 126 | {
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| 127 |   m = model.getParameterDimension();
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| 128 |   const FunctionModel::parameters_t params = model.getParameters();
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| 129 |   {
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| 130 |     p = new double[m];
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| 131 |     size_t index = 0;
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| 132 |     for(FunctionModel::parameters_t::const_iterator paramiter = params.begin();
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| 133 |         paramiter != params.end();
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| 134 |         ++paramiter, ++index) {
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| 135 |       p[index] = *paramiter;
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| 136 |     }
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| 137 |   }
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| 138 | }
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| 139 | 
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| 140 | void FunctionApproximation::prepareOutput(double *&x, int &n) const
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| 141 | {
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| 142 |   n = output_data.size();
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| 143 |   {
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| 144 |     x = new double[n];
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| 145 |     size_t index = 0;
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| 146 |     for(outputs_t::const_iterator outiter = output_data.begin();
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| 147 |         outiter != output_data.end();
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| 148 |         ++outiter, ++index) {
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| 149 |       x[index] = (*outiter)[0];
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| 150 |     }
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| 151 |   }
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| 152 | }
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| 153 | 
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| 154 | void FunctionApproximation::operator()(const enum JacobianMode mode)
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| 155 | {
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| 156 |   // let levmar optimize
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| 157 |   register int i, j;
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| 158 |   int ret;
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| 159 |   double *p;
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| 160 |   double *x;
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| 161 |   int m, n;
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| 162 |   double opts[LM_OPTS_SZ], info[LM_INFO_SZ];
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| 163 | 
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| 164 |   opts[0]=LM_INIT_MU; opts[1]=1E-15; opts[2]=1E-15; opts[3]=1E-20;
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| 165 |   opts[4]= LM_DIFF_DELTA; // relevant only if the Jacobian is approximated using finite differences; specifies forward differencing
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| 166 |   //opts[4]=-LM_DIFF_DELTA; // specifies central differencing to approximate Jacobian; more accurate but more expensive to compute!
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| 167 | 
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| 168 |   prepareParameters(p,m);
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| 169 |   prepareOutput(x,n);
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| 170 | 
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| 171 |   {
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| 172 |     double *work, *covar;
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| 173 |     work=(double *)malloc((LM_DIF_WORKSZ(m, n)+m*m)*sizeof(double));
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| 174 |     if(!work){
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| 175 |       ELOG(0, "FunctionApproximation::operator() - memory allocation request failed.");
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| 176 |       return;
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| 177 |     }
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| 178 |     covar=work+LM_DIF_WORKSZ(m, n);
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| 179 | 
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| 180 |     // give this pointer as additional data to construct function pointer in
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| 181 |     // LevMarCallback and call
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| 182 |     if (model.isBoxConstraint()) {
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| 183 |       FunctionModel::parameters_t lowerbound = model.getLowerBoxConstraints();
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| 184 |       FunctionModel::parameters_t upperbound = model.getUpperBoxConstraints();
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| 185 |       double *lb = new double[m];
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| 186 |       double *ub = new double[m];
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| 187 |       for (size_t i=0;i<(size_t)m;++i) {
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| 188 |         lb[i] = lowerbound[i];
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| 189 |         ub[i] = upperbound[i];
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| 190 |       }
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| 191 |       if (mode == FiniteDifferences) {
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| 192 |         ret=dlevmar_bc_dif(
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| 193 |             &FunctionApproximation::LevMarCallback,
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| 194 |             p, x, m, n, lb, ub, NULL, 1000, opts, info, work, covar, this); // no Jacobian, caller allocates work memory, covariance estimated
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| 195 |       } else if (mode == ParameterDerivative) {
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| 196 |         ret=dlevmar_bc_der(
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| 197 |             &FunctionApproximation::LevMarCallback,
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| 198 |             &FunctionApproximation::LevMarDerivativeCallback,
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| 199 |             p, x, m, n, lb, ub, NULL, 1000, opts, info, work, covar, this); // no Jacobian, caller allocates work memory, covariance estimated
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| 200 |       } else {
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| 201 |         ASSERT(0, "FunctionApproximation::operator() - Unknown jacobian method chosen.");
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| 202 |       }
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| 203 |       delete[] lb;
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| 204 |       delete[] ub;
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| 205 |     } else {
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| 206 |       ASSERT(0, "FunctionApproximation::operator() - Unknown jacobian method chosen.");
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| 207 |       if (mode == FiniteDifferences) {
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| 208 |         ret=dlevmar_dif(
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| 209 |             &FunctionApproximation::LevMarCallback,
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| 210 |             p, x, m, n, 1000, opts, info, work, covar, this); // no Jacobian, caller allocates work memory, covariance estimated
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| 211 |       } else if (mode == ParameterDerivative) {
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| 212 |         ret=dlevmar_der(
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| 213 |             &FunctionApproximation::LevMarCallback,
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| 214 |             &FunctionApproximation::LevMarDerivativeCallback,
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| 215 |             p, x, m, n, 1000, opts, info, work, covar, this); // no Jacobian, caller allocates work memory, covariance estimated
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| 216 |       } else {
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| 217 |         ASSERT(0, "FunctionApproximation::operator() - Unknown jacobian method chosen.");
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| 218 |       }
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| 219 |     }
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| 220 | 
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| 221 |     {
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| 222 |       std::stringstream covar_msg;
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| 223 |       covar_msg << "Covariance of the fit:\n";
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| 224 |       for(i=0; i<m; ++i){
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| 225 |         for(j=0; j<m; ++j)
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| 226 |           covar_msg << covar[i*m+j] << " ";
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| 227 |         covar_msg << std::endl;
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| 228 |       }
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| 229 |       covar_msg << std::endl;
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| 230 |       LOG(1, "INFO: " << covar_msg.str());
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| 231 |     }
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| 232 | 
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| 233 |     free(work);
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| 234 |   }
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| 235 | 
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| 236 |   {
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| 237 |    std::stringstream result_msg;
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| 238 |    result_msg << "Levenberg-Marquardt returned " << ret << " in " << info[5] << " iter, reason " << info[6] << "\nSolution: ";
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| 239 |    for(i=0; i<m; ++i)
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| 240 |      result_msg << p[i] << " ";
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| 241 |    result_msg << "\n\nMinimization info:\n";
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| 242 |    std::vector<std::string> infonames(LM_INFO_SZ);
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| 243 |    infonames[0] = std::string("||e||_2 at initial p");
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| 244 |    infonames[1] = std::string("||e||_2");
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| 245 |    infonames[2] = std::string("||J^T e||_inf");
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| 246 |    infonames[3] = std::string("||Dp||_2");
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| 247 |    infonames[4] = std::string("mu/max[J^T J]_ii");
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| 248 |    infonames[5] = std::string("# iterations");
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| 249 |    infonames[6] = std::string("reason for termination");
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| 250 |    infonames[7] = std::string(" # function evaluations");
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| 251 |    infonames[8] = std::string(" # Jacobian evaluations");
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| 252 |    infonames[9] = std::string(" # linear systems solved");
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| 253 |    for(i=0; i<LM_INFO_SZ; ++i)
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| 254 |       result_msg << infonames[i] << ": " << info[i] << " ";
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| 255 |     result_msg << std::endl;
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| 256 |     LOG(1, "INFO: " << result_msg.str());
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| 257 |   }
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| 258 | 
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| 259 |   delete[] p;
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| 260 |   delete[] x;
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| 261 | }
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| 262 | 
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| 263 | bool FunctionApproximation::checkParameterDerivatives()
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| 264 | {
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| 265 |   double *p;
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| 266 |   int m;
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| 267 |   const FunctionModel::parameters_t backupparams = model.getParameters();
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| 268 |   prepareParameters(p,m);
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| 269 |   int n = output_data.size();
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| 270 |   double *err = new double[n];
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| 271 |   dlevmar_chkjac(
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| 272 |     &FunctionApproximation::LevMarCallback,
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| 273 |     &FunctionApproximation::LevMarDerivativeCallback,
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| 274 |     p, m, n, this, err);
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| 275 |   int i;
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| 276 |   for(i=0; i<n; ++i)
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| 277 |    LOG(1, "INFO: gradient " << i << ", err " << err[i] << ".");
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| 278 |   bool status = true;
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| 279 |   for(i=0; i<n; ++i)
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| 280 |     status &= err[i] > 0.5;
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| 281 | 
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| 282 |   if (!status) {
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| 283 |     int faulty;
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| 284 |     ELOG(0, "At least one of the parameter derivatives are incorrect.");
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| 285 |     for (faulty=1; faulty<=m; ++faulty) {
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| 286 |       LOG(1, "INFO: Trying with only the first " << faulty << " parameters...");
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| 287 |       model.setParameters(backupparams);
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| 288 |       dlevmar_chkjac(
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| 289 |         &FunctionApproximation::LevMarCallback,
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| 290 |         &FunctionApproximation::LevMarDerivativeCallback,
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| 291 |         p, faulty, n, this, err);
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| 292 |       bool status = true;
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| 293 |       for(i=0; i<n; ++i)
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| 294 |         status &= err[i] > 0.5;
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| 295 |       for(i=0; i<n; ++i)
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| 296 |         LOG(1, "INFO: gradient(" << faulty << ") " << i << ", err " << err[i] << ".");
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| 297 |       if (!status)
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| 298 |         break;
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| 299 |     }
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| 300 |     ELOG(0, "The faulty parameter derivative is with respect to the " << faulty << " parameter.");
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| 301 |   } else
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| 302 |     LOG(1, "INFO: parameter derivatives are ok.");
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| 303 | 
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| 304 |   delete[] err;
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| 305 |   delete[] p;
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| 306 |   model.setParameters(backupparams);
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| 307 | 
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| 308 |   return status;
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| 309 | }
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| 310 | 
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| 311 | double SquaredDifference(const double res1, const double res2)
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| 312 | {
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| 313 |   return (res1-res2)*(res1-res2);
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| 314 | }
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| 315 | 
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| 316 | void FunctionApproximation::prepareModel(double *p, int m)
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| 317 | {
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| 318 | //  ASSERT( (size_t)m == model.getParameterDimension(),
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| 319 | //      "FunctionApproximation::prepareModel() - LevMar expects "+toString(m)
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| 320 | //      +" parameters but the model function expects "+toString(model.getParameterDimension())+".");
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| 321 |   FunctionModel::parameters_t params(m, 0.);
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| 322 |   std::copy(p, p+m, params.begin());
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| 323 |   model.setParameters(params);
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| 324 | }
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| 325 | 
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| 326 | void FunctionApproximation::evaluate(double *p, double *x, int m, int n, void *data)
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| 327 | {
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| 328 |   // first set parameters
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| 329 |   prepareModel(p,m);
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| 330 | 
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| 331 |   // then evaluate
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| 332 |   ASSERT( (size_t)n == output_data.size(),
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| 333 |       "FunctionApproximation::evaluate() - LevMar expects "+toString(n)
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| 334 |       +" outputs but we provide "+toString(output_data.size())+".");
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| 335 |   if (!output_data.empty()) {
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| 336 |     filtered_inputs_t::const_iterator initer = input_data.begin();
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| 337 |     outputs_t::const_iterator outiter = output_data.begin();
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| 338 |     size_t index = 0;
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| 339 |     for (; initer != input_data.end(); ++initer, ++outiter) {
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| 340 |       // result may be a vector, calculate L2 norm
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| 341 |       const FunctionModel::results_t functionvalue =
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| 342 |           model(*initer);
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| 343 |       x[index++] = functionvalue[0];
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| 344 | //      std::vector<double> differences(functionvalue.size(), 0.);
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| 345 | //      std::transform(
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| 346 | //          functionvalue.begin(), functionvalue.end(), outiter->begin(),
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| 347 | //          differences.begin(),
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| 348 | //          &SquaredDifference);
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| 349 | //      x[index] = std::accumulate(differences.begin(), differences.end(), 0.);
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| 350 |     }
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| 351 |   }
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| 352 | }
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| 353 | 
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| 354 | void FunctionApproximation::evaluateDerivative(double *p, double *jac, int m, int n, void *data)
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| 355 | {
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| 356 |   // first set parameters
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| 357 |   prepareModel(p,m);
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| 358 | 
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| 359 |   // then evaluate
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| 360 |   ASSERT( (size_t)n == output_data.size(),
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| 361 |       "FunctionApproximation::evaluateDerivative() - LevMar expects "+toString(n)
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| 362 |       +" outputs but we provide "+toString(output_data.size())+".");
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| 363 |   if (!output_data.empty()) {
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| 364 |     filtered_inputs_t::const_iterator initer = input_data.begin();
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| 365 |     outputs_t::const_iterator outiter = output_data.begin();
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| 366 |     size_t index = 0;
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| 367 |     for (; initer != input_data.end(); ++initer, ++outiter) {
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| 368 |       // result may be a vector, calculate L2 norm
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| 369 |       for (int paramindex = 0; paramindex < m; ++paramindex) {
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| 370 |         const FunctionModel::results_t functionvalue =
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| 371 |             model.parameter_derivative(*initer, paramindex);
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| 372 |         jac[index++] = functionvalue[0];
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| 373 |       }
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| 374 | //      std::vector<double> differences(functionvalue.size(), 0.);
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| 375 | //      std::transform(
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| 376 | //          functionvalue.begin(), functionvalue.end(), outiter->begin(),
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| 377 | //          differences.begin(),
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| 378 | //          &SquaredDifference);
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| 379 | //      x[index] = std::accumulate(differences.begin(), differences.end(), 0.);
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| 380 |     }
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| 381 |   }
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| 382 | }
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