// Class: ReadLD // Automatically generated by MethodBase::MakeClass // /* configuration options ===================================================== #GEN -*-*-*-*-*-*-*-*-*-*-*- general info -*-*-*-*-*-*-*-*-*-*-*- Method : LD::LD TMVA Release : 4.2.1 [262657] ROOT Release : 6.41/01 [403713] Creator : root Date : Tue May 19 20:08:01 2026 Host : Linux d4f37374721b 4.18.0-553.117.1.el8_10.x86_64 #1 SMP Sun Apr 5 23:14:32 EDT 2026 x86_64 GNU/Linux Dir : /github/home/master/notebooks Training events: 2000 Analysis type : [Classification] #OPT -*-*-*-*-*-*-*-*-*-*-*-*- options -*-*-*-*-*-*-*-*-*-*-*-*- # Set by User: V: "False" [Verbose output (short form of "VerbosityLevel" below - overrides the latter one)] VarTransform: "None" [List of variable transformations performed before training, e.g., "D_Background,P_Signal,G,N_AllClasses" for: "Decorrelation, PCA-transformation, Gaussianisation, Normalisation, each for the given class of events ('AllClasses' denotes all events of all classes, if no class indication is given, 'All' is assumed)"] H: "True" [Print method-specific help message] CreateMVAPdfs: "True" [Create PDFs for classifier outputs (signal and background)] # Default: VerbosityLevel: "Default" [Verbosity level] IgnoreNegWeightsInTraining: "False" [Events with negative weights are ignored in the training (but are included for testing and performance evaluation)] ## #VAR -*-*-*-*-*-*-*-*-*-*-*-* variables *-*-*-*-*-*-*-*-*-*-*-*- NVar 4 var1+var2 myvar1 myvar1 myvar1 'F' [-9.23118686676,7.07192516327] var1-var2 myvar2 myvar2 Expression 2 'F' [-3.70671987534,4.02912044525] var3 var3 var3 Variable 3 units 'F' [-5.15695810318,4.15070819855] var4 var4 var4 Variable 4 units 'F' [-6.31600189209,4.52105665207] NSpec 2 var1*2 spec1 spec1 Spectator 1 units 'F' [-9.63254642487,9.05203056335] var1*3 spec2 spec2 Spectator 2 units 'F' [-14.4488201141,13.578045845] ============================================================================ */ #include #include #include #include #include #ifndef IClassifierReader__def #define IClassifierReader__def class IClassifierReader { public: // constructor IClassifierReader() : fStatusIsClean( true ) {} virtual ~IClassifierReader() {} // return classifier response virtual double GetMvaValue( const std::vector& inputValues ) const = 0; // returns classifier status bool IsStatusClean() const { return fStatusIsClean; } protected: bool fStatusIsClean; }; #endif class ReadLD : public IClassifierReader { public: // constructor ReadLD( std::vector& theInputVars ) : IClassifierReader(), fClassName( "ReadLD" ), fNvars( 4 ) { // the training input variables const char* inputVars[] = { "var1+var2", "var1-var2", "var3", "var4" }; // sanity checks if (theInputVars.size() <= 0) { std::cout << "Problem in class \"" << fClassName << "\": empty input vector" << std::endl; fStatusIsClean = false; } if (theInputVars.size() != fNvars) { std::cout << "Problem in class \"" << fClassName << "\": mismatch in number of input values: " << theInputVars.size() << " != " << fNvars << std::endl; fStatusIsClean = false; } // validate input variables for (size_t ivar = 0; ivar < theInputVars.size(); ivar++) { if (theInputVars[ivar] != inputVars[ivar]) { std::cout << "Problem in class \"" << fClassName << "\": mismatch in input variable names" << std::endl << " for variable [" << ivar << "]: " << theInputVars[ivar].c_str() << " != " << inputVars[ivar] << std::endl; fStatusIsClean = false; } } // initialize min and max vectors (for normalisation) fVmin[0] = 0; fVmax[0] = 0; fVmin[1] = 0; fVmax[1] = 0; fVmin[2] = 0; fVmax[2] = 0; fVmin[3] = 0; fVmax[3] = 0; // initialize input variable types fType[0] = 'F'; fType[1] = 'F'; fType[2] = 'F'; fType[3] = 'F'; // initialize constants Initialize(); } // destructor virtual ~ReadLD() { Clear(); // method-specific } // the classifier response // "inputValues" is a vector of input values in the same order as the // variables given to the constructor double GetMvaValue( const std::vector& inputValues ) const override; private: // method-specific destructor void Clear(); // common member variables const char* fClassName; const size_t fNvars; size_t GetNvar() const { return fNvars; } char GetType( int ivar ) const { return fType[ivar]; } // normalisation of input variables double fVmin[4]; double fVmax[4]; double NormVariable( double x, double xmin, double xmax ) const { // normalise to output range: [-1, 1] return 2*(x - xmin)/(xmax - xmin) - 1.0; } // type of input variable: 'F' or 'I' char fType[4]; // initialize internal variables void Initialize(); double GetMvaValue__( const std::vector& inputValues ) const; // private members (method specific) std::vector fLDCoefficients; }; inline void ReadLD::Initialize() { fLDCoefficients.push_back( -0.052434123504 ); fLDCoefficients.push_back( -0.283994790045 ); fLDCoefficients.push_back( -0.0871784211002 ); fLDCoefficients.push_back( -0.139133388863 ); fLDCoefficients.push_back( 0.665187860215 ); // sanity check if (fLDCoefficients.size() != fNvars+1) { std::cout << "Problem in class \"" << fClassName << "\"::Initialize: mismatch in number of input values" << fLDCoefficients.size() << " != " << fNvars+1 << std::endl; fStatusIsClean = false; } } inline double ReadLD::GetMvaValue__( const std::vector& inputValues ) const { double retval = fLDCoefficients[0]; for (size_t ivar = 1; ivar < fNvars+1; ivar++) { retval += fLDCoefficients[ivar]*inputValues[ivar-1]; } return retval; } // Clean up inline void ReadLD::Clear() { // clear coefficients fLDCoefficients.clear(); } inline double ReadLD::GetMvaValue( const std::vector& inputValues ) const { // classifier response value double retval = 0; // classifier response, sanity check first if (!IsStatusClean()) { std::cout << "Problem in class \"" << fClassName << "\": cannot return classifier response" << " because status is dirty" << std::endl; } else { retval = GetMvaValue__( inputValues ); } return retval; }