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Reference Guide
GeneticFitter.cxx
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1// @(#)root/tmva $Id$
2// Author: Peter Speckmayer
3
4/**********************************************************************************
5 * Project: TMVA - a Root-integrated toolkit for multivariate data analysis *
6 * Package: TMVA *
7 * Class : GeneticFitter *
8 * Web : http://tmva.sourceforge.net *
9 * *
10 * Description: *
11 * Implementation *
12 * *
13 * Authors (alphabetical): *
14 * Peter Speckmayer <speckmay@mail.cern.ch> - CERN, Switzerland *
15 * *
16 * Copyright (c) 2005: *
17 * CERN, Switzerland *
18 * MPI-K Heidelberg, Germany *
19 * *
20 * Redistribution and use in source and binary forms, with or without *
21 * modification, are permitted according to the terms listed in LICENSE *
22 * (http://tmva.sourceforge.net/LICENSE) *
23 **********************************************************************************/
24
25/*! \class TMVA::GeneticFitter
26\ingroup TMVA
27
28Fitter using a Genetic Algorithm.
29
30*/
31
32#include "TMVA/GeneticFitter.h"
33
34#include "TMVA/Configurable.h"
36#include "TMVA/Interval.h"
37#include "TMVA/FitterBase.h"
38#include "TMVA/MsgLogger.h"
39#include "TMVA/Timer.h"
40#include "TMVA/Types.h"
41
42#include "Rtypes.h"
43#include "TString.h"
44
45#include <iostream>
46
48
49////////////////////////////////////////////////////////////////////////////////
50/// constructor
51
53 const TString& name,
54 const std::vector<TMVA::Interval*>& ranges,
55 const TString& theOption )
56: FitterBase( target, name, ranges, theOption )
57{
58 // default parameters settings for Genetic Algorithm
61}
62
63////////////////////////////////////////////////////////////////////////////////
64/// declare GA options
65
67{
68 DeclareOptionRef( fPopSize=300, "PopSize", "Population size for GA" );
69 DeclareOptionRef( fNsteps=40, "Steps", "Number of steps for convergence" );
70 DeclareOptionRef( fCycles=3, "Cycles", "Independent cycles of GA fitting" );
71 DeclareOptionRef( fSC_steps=10, "SC_steps", "Spread control, steps" );
72 DeclareOptionRef( fSC_rate=5, "SC_rate", "Spread control, rate: factor is changed depending on the rate" );
73 DeclareOptionRef( fSC_factor=0.95, "SC_factor", "Spread control, factor" );
74 DeclareOptionRef( fConvCrit=0.001, "ConvCrit", "Convergence criteria" );
75
76 DeclareOptionRef( fSaveBestFromGeneration=1, "SaveBestGen",
77 "Saves the best n results from each generation. They are included in the last cycle" );
78 DeclareOptionRef( fSaveBestFromCycle=10, "SaveBestCycle",
79 "Saves the best n results from each cycle. They are included in the last cycle. The value should be set to at least 1.0" );
80
81 DeclareOptionRef( fTrim=kFALSE, "Trim",
82 "Trim the population to PopSize after assessing the fitness of each individual" );
83 DeclareOptionRef( fSeed=100, "Seed", "Set seed of random generator (0 gives random seeds)" );
84}
85
86////////////////////////////////////////////////////////////////////////////////
87/// set GA configuration parameters
88
90 Int_t nsteps,
91 Int_t popSize,
92 Int_t SC_steps,
93 Int_t SC_rate,
94 Double_t SC_factor,
95 Double_t convCrit)
96{
97 fNsteps = nsteps;
98 fCycles = cycles;
99 fPopSize = popSize;
100 fSC_steps = SC_steps;
101 fSC_rate = SC_rate;
102 fSC_factor = SC_factor;
103 fConvCrit = convCrit;
104}
105
106////////////////////////////////////////////////////////////////////////////////
107/// Execute fitting
108
109Double_t TMVA::GeneticFitter::Run( std::vector<Double_t>& pars )
110{
111 Log() << kHEADER << "<GeneticFitter> Optimisation, please be patient "
112 << "... (inaccurate progress timing for GA)" << Endl;
113
114 GetFitterTarget().ProgressNotifier( "GA", "init" );
115
116 GeneticAlgorithm gstore( GetFitterTarget(), fPopSize, fRanges);
117 // gstore.SetMakeCopies(kTRUE); // commented out, because it reduces speed
118
119 // timing of GA
120 Timer timer( 100*(fCycles), GetName() );
121 if (fIPyMaxIter) *fIPyMaxIter = 100*(fCycles);
122 timer.DrawProgressBar( 0 );
123
124 Double_t progress = 0.;
125
126 for (Int_t cycle = 0; cycle < fCycles; cycle++) {
127 if (fIPyCurrentIter) *fIPyCurrentIter = 100*(cycle);
128 if (fExitFromTraining && *fExitFromTraining) break;
129 GetFitterTarget().ProgressNotifier( "GA", "cycle" );
130 // ---- perform series of fits to achieve best convergence
131
132 // "m_ga_spread" times the number of variables
133 GeneticAlgorithm ga( GetFitterTarget(), fPopSize, fRanges, fSeed );
134 // ga.SetMakeCopies(kTRUE); // commented out, because it reduces speed
135
136 if ( pars.size() == fRanges.size() ){
137 ga.GetGeneticPopulation().GiveHint( pars, 0.0 );
138 }
139 if (cycle==fCycles-1) {
140 GetFitterTarget().ProgressNotifier( "GA", "last" );
142 }
143
144 GetFitterTarget().ProgressNotifier( "GA", "iteration" );
145
146 ga.CalculateFitness();
148
149 Double_t n=0.;
150 do {
151 GetFitterTarget().ProgressNotifier( "GA", "iteration" );
152 ga.Init();
153 ga.CalculateFitness();
154 if ( fTrim ) ga.GetGeneticPopulation().TrimPopulation();
155 ga.SpreadControl( fSC_steps, fSC_rate, fSC_factor );
156
157 // monitor progrss
158 if (ga.fConvCounter > n) n = Double_t(ga.fConvCounter);
159 progress = 100*((Double_t)cycle) + 100*(n/Double_t(fNsteps));
160
161 timer.DrawProgressBar( (Int_t)progress );
162
163 // Copy the best genes of the generation
165 for ( Int_t i = 0; i<fSaveBestFromGeneration && i<fPopSize; i++ ) {
168 }
169 } while (!ga.HasConverged( fNsteps, fConvCrit ));
170
171 timer.DrawProgressBar( 100*(cycle+1) );
172
174 for ( Int_t i = 0; i<fSaveBestFromGeneration && i<fPopSize; i++ ) {
177 }
178 }
179
180 // get elapsed time
181 Log() << kINFO << "Elapsed time: " << timer.GetElapsedTime()
182 << " " << Endl;
183
184 Double_t fitness = gstore.CalculateFitness();
185 gstore.GetGeneticPopulation().Sort();
186 pars.swap( gstore.GetGeneticPopulation().GetGenes(0)->GetFactors() );
187
188 GetFitterTarget().ProgressNotifier( "GA", "stop" );
189 return fitness;
190}
const Bool_t kFALSE
Definition: RtypesCore.h:90
double Double_t
Definition: RtypesCore.h:57
#define ClassImp(name)
Definition: Rtypes.h:361
char name[80]
Definition: TGX11.cxx:109
virtual void ParseOptions()
options parser
Base class for TMVA fitters.
Definition: FitterBase.h:51
Double_t Run()
estimator function interface for fitting
Definition: FitterBase.cxx:74
Base definition for genetic algorithm.
virtual Double_t SpreadControl(Int_t steps, Int_t ofSteps, Double_t factor)
this function provides the ability to change the stepSize of a mutation according to the success of t...
virtual Bool_t HasConverged(Int_t steps=10, Double_t ratio=0.1)
gives back true if the last "steps" steps have lead to an improvement of the "fitness" of the "indivi...
GeneticPopulation & GetGeneticPopulation()
void Init()
calls evolution, but if it is not the first time.
virtual Double_t CalculateFitness()
starts the evaluation of the fitness of all different individuals of the population.
Fitter using a Genetic Algorithm.
Definition: GeneticFitter.h:43
void DeclareOptions()
declare GA options
void SetParameters(Int_t cycles, Int_t nsteps, Int_t popSize, Int_t SC_steps, Int_t SC_rate, Double_t SC_factor, Double_t convCrit)
set GA configuration parameters
GeneticFitter(IFitterTarget &target, const TString &name, const std::vector< TMVA::Interval * > &ranges, const TString &theOption)
constructor
std::vector< Double_t > & GetFactors()
Definition: GeneticGenes.h:49
Double_t GetFitness() const
Definition: GeneticGenes.h:52
void Sort()
sort the genepool according to the fitness of the individuals
void TrimPopulation()
trim the population to the predefined size
GeneticGenes * GetGenes(Int_t index)
gives back the "Genes" of the population with the given index.
void GiveHint(std::vector< Double_t > &hint, Double_t fitness=0)
add an individual (a set of variables) to the population if there is a set of variables which is know...
void AddPopulation(GeneticPopulation *strangers)
add another population (strangers) to the one of this GeneticPopulation
Interface for a fitter 'target'.
Definition: IFitterTarget.h:44
Timing information for training and evaluation of MVA methods.
Definition: Timer.h:58
TString GetElapsedTime(Bool_t Scientific=kTRUE)
returns pretty string with elapsed time
Definition: Timer.cxx:147
void DrawProgressBar(Int_t, const TString &comment="")
draws progress bar in color or B&W caution:
Definition: Timer.cxx:203
Basic string class.
Definition: TString.h:131
const Int_t n
Definition: legend1.C:16
MsgLogger & Endl(MsgLogger &ml)
Definition: MsgLogger.h:158
Double_t Log(Double_t x)
Definition: TMath.h:750