38 #ifndef ROOT_TMVA_MethodPDERS
39 #define ROOT_TMVA_MethodPDERS
207 void RRScalc (
const Event&, std::vector<Float_t>* count );
224 #endif // MethodPDERS_H
void UpdateThis()
update static this pointer
virtual ~MethodPDERS(void)
destructor
void MakeClassSpecific(std::ostream &, const TString &) const
write specific classifier response
Double_t GetNormalizedDistance(const TMVA::Event &base_event, const BinarySearchTreeNode &sample_event, Double_t *dim_normalization)
We use Euclidian metric here. Might not be best or most efficient.
std::vector< Float_t > * fShift
BinarySearchTree * fBinaryTree
Double_t NormSinc(Double_t x)
NormSinc.
A ROOT file is a suite of consecutive data records (TKey instances) with a well defined format...
void CreateBinarySearchTree(Types::ETreeType type)
create binary search trees for signal and background
Virtual base Class for all MVA method.
Double_t CKernelEstimate(const Event &, std::vector< const BinarySearchTreeNode * > &, Volume &)
normalization factors so we can work with radius 1 hyperspheres
Ranking for variables in method (implementation)
Double_t GetMvaValue(Double_t *err=0, Double_t *errUpper=0)
init the size of a volume element using a defined fraction of the volume containing the entire events...
Node for the BinarySearch or Decision Trees.
Volume for BinarySearchTree.
void Init(void)
default initialisation routine called by all constructors
static Double_t IGetVolumeContentForRoot(Double_t)
Interface to RootFinder.
void RKernelEstimate(const Event &, std::vector< const BinarySearchTreeNode * > &, Volume &, std::vector< Float_t > *pdfSum)
normalization factors so we can work with radius 1 hyperspheres
#define ClassDef(name, id)
void ReadWeightsFromStream(std::istream &istr)
read weight info from file
void GetHelpMessage() const
get help message text
Class that contains all the data information.
void CalcAverages()
compute also average RMS values required for adaptive Gaussian
Double_t CRScalc(const Event &)
void DeclareOptions()
define the options (their key words) that can be set in the option string.
void SetVolumeElement(void)
defines volume dimensions
void WriteWeightsToStream(TFile &rf) const
write training sample (TTree) to file
Bool_t fInitializedVolumeEle
BinarySearchTree * GetBinaryTree(void) const
void ReadWeightsFromXML(void *wghtnode)
static MethodPDERS * ThisPDERS(void)
static pointer to this object
This is a generalization of the above Likelihood methods to dimensions, where is the number of inpu...
void Train(void)
this is a dummy training: the preparation work to do is the construction of the binary tree as a poin...
std::vector< Float_t > * fDelta
enum TMVA::MethodPDERS::EKernelEstimator fKernelEstimator
you should not use this method at all Int_t Int_t Double_t Double_t Double_t e
virtual Bool_t HasAnalysisType(Types::EAnalysisType type, UInt_t numberClasses, UInt_t numberTargets)
PDERS can handle classification with 2 classes and regression with one or more regression-targets.
std::vector< Float_t > fAverageRMS
const std::vector< Float_t > & GetRegressionValues()
void AddWeightsXMLTo(void *parent) const
write weights to xml file
enum TMVA::MethodPDERS::EVolumeRangeMode fVRangeMode
void ProcessOptions()
process the options specified by the user
void GetSample(const Event &e, std::vector< const BinarySearchTreeNode * > &events, Volume *volume)
Double_t GetVolumeContentForRoot(Double_t)
count number of events in rescaled volume
const Ranking * CreateRanking()
MethodPDERS(const TString &jobName, const TString &methodTitle, DataSetInfo &theData, const TString &theOption)
standard constructor for the PDERS method
static MethodPDERS *& GetMethodPDERSThreadLocal()
Double_t ApplyKernelFunction(Double_t normalized_distance)
from the normalized euclidean distance calculate the distance for a certain kernel ...
A simple Binary search tree including a volume search method.
Double_t LanczosFilter(Int_t level, Double_t x)
Lanczos Filter.
void RRScalc(const Event &, std::vector< Float_t > *count)
Float_t GetError(Float_t countS, Float_t countB, Float_t sumW2S, Float_t sumW2B) const
statistical error estimate for RS estimator
Double_t KernelNormalization(Double_t pdf)
Calculating the normalization factor only once (might need a reset at some point. ...