ROOT
6.10/00
Reference Guide
ROOT Home Page
Main Page
Tutorials
User's Classes
Namespaces
All Classes
Files
Release Notes
File List
File Members
All
Classes
Namespaces
Files
Functions
Variables
Typedefs
Enumerations
Enumerator
Properties
Friends
Macros
Groups
Pages
tmva
tmva
src
GiniIndex.cxx
Go to the documentation of this file.
1
// @(#)root/tmva $Id$
2
// Author: Andreas Hoecker, Joerg Stelzer, Helge Voss, Kai Voss
3
4
/**********************************************************************************
5
* Project: TMVA - a Root-integrated toolkit for multivariate data analysis *
6
* Package: TMVA *
7
* Class : TMVA::GiniIndex *
8
* Web : http://tmva.sourceforge.net *
9
* *
10
* Description: Implementation of the GiniIndex as separation criterion *
11
* Large Gini Indices (maximum 0.5) mean , that the sample is well *
12
* mixed (same amount of signal and bkg) *
13
* bkg. Small Indices mean, well separated. *
14
* general definition: *
15
* Gini(Sample M) = 1 - (c(1)/N)^2 - (c(2)/N)^2 .... - (c(k)/N)^2 *
16
* Where: M is a sample of whatever N elements (events) *
17
* that belong to K different classes *
18
* c(k) is the number of elements that belong to class k *
19
* for just Signal and Background classes this boils down to: *
20
* Gini(Sample) = 2s*b/(s+b)^2 *
21
* *
22
* Authors (alphabetical): *
23
* Andreas Hoecker <Andreas.Hocker@cern.ch> - CERN, Switzerland *
24
* Helge Voss <Helge.Voss@cern.ch> - MPI-K Heidelberg, Germany *
25
* Kai Voss <Kai.Voss@cern.ch> - U. of Victoria, Canada *
26
* *
27
* Copyright (c) 2005: *
28
* CERN, Switzerland *
29
* U. of Victoria, Canada *
30
* Heidelberg U., Germany *
31
* *
32
* Redistribution and use in source and binary forms, with or without *
33
* modification, are permitted according to the terms listed in LICENSE *
34
* (http://tmva.sourceforge.net/LICENSE) *
35
**********************************************************************************/
36
37
/*! \class TMVA::GiniIndex
38
\ingroup TMVA
39
40
Implementation of the GiniIndex as separation criterion.
41
42
Large Gini Indices (maximum 0.5) mean , that the sample is well mixed (same
43
amount of signal and bkg) bkg.
44
45
Small Indices mean, well separated.
46
47
#### General definition:
48
49
\f[
50
Gini(Sample M) = 1 - (\frac{c(1)}{N})^2 - (\frac{c(2)}{N})^2 .... - (\frac{c(k)}{N})^2
51
\f]
52
53
Where:
54
55
\f$ M \f$ is a sample of whatever \f$ N \f$ elements (events) that belong
56
to \f$ K \f$ different classes.
57
58
\f$ c(k) \f$ is the number of elements that belong to class \f$ k \f$ for just
59
Signal and Background classes this boils down to:
60
61
\f[
62
Gini(Sample) = \frac{2sb}{(s+b)^2}
63
\f]
64
*/
65
66
#include "
TMVA/GiniIndex.h
"
67
68
#include "
Rtypes.h
"
69
70
ClassImp
(
TMVA::GiniIndex
)
71
72
////////////////////////////////////////////////////////////////////////////////
73
/// what we use here is 2*Gini.. as for the later use the factor
74
/// 2 is irrelevant and hence I'd like to save this calculation
75
76
Double_t
TMVA::
GiniIndex
::GetSeparationIndex( const
Double_t
s, const
Double_t
b
)
77
{
78
if
(s+b <= 0)
return
0;
79
if
(s<=0 || b <=0)
return
0;
80
// else return s*b/(s+b)/(s+b);
81
else
return
2*s*b/(s+
b
)/(s+b);
82
}
83
84
Rtypes.h
GiniIndex.h
TMVA::GiniIndex
Implementation of the GiniIndex as separation criterion.
Definition:
GiniIndex.h:63
ClassImp
#define ClassImp(name)
Definition:
Rtypes.h:336
Double_t
double Double_t
Definition:
RtypesCore.h:55
b
you should not use this method at all Int_t Int_t Double_t Double_t Double_t Int_t Double_t Double_t Double_t Double_t b
Definition:
TRolke.cxx:630