#ifndef MLPP_NUMERICAL_ANALYSIS_H #define MLPP_NUMERICAL_ANALYSIS_H // // NumericalAnalysis.hpp // // #include "core/math/math_defs.h" #include "core/object/reference.h" #include <string> #include <vector> class MLPPNumericalAnalysis : public Reference { GDCLASS(MLPPNumericalAnalysis, Reference); public: /* A numerical method for derivatives is used. This may be subject to change, as an analytical method for calculating derivatives will most likely be used in the future. */ /* real_t numDiff(real_t (*function)(real_t), real_t x); real_t numDiff_2(real_t (*function)(real_t), real_t x); real_t numDiff_3(real_t (*function)(real_t), real_t x); real_t constantApproximation(real_t (*function)(real_t), real_t c); real_t linearApproximation(real_t (*function)(real_t), real_t c, real_t x); real_t quadraticApproximation(real_t (*function)(real_t), real_t c, real_t x); real_t cubicApproximation(real_t (*function)(real_t), real_t c, real_t x); real_t numDiff(real_t (*function)(std::vector<real_t>), std::vector<real_t> x, int axis); real_t numDiff_2(real_t (*function)(std::vector<real_t>), std::vector<real_t> x, int axis1, int axis2); real_t numDiff_3(real_t (*function)(std::vector<real_t>), std::vector<real_t> x, int axis1, int axis2, int axis3); real_t newtonRaphsonMethod(real_t (*function)(real_t), real_t x_0, real_t epoch_num); real_t halleyMethod(real_t (*function)(real_t), real_t x_0, real_t epoch_num); real_t invQuadraticInterpolation(real_t (*function)(real_t), std::vector<real_t> x_0, int epoch_num); real_t eulerianMethod(real_t (*derivative)(real_t), std::vector<real_t> q_0, real_t p, real_t h); // Euler's method for solving diffrential equations. real_t eulerianMethod(real_t (*derivative)(std::vector<real_t>), std::vector<real_t> q_0, real_t p, real_t h); // Euler's method for solving diffrential equations. real_t growthMethod(real_t C, real_t k, real_t t); // General growth-based diffrential equations can be solved by seperation of variables. std::vector<real_t> jacobian(real_t (*function)(std::vector<real_t>), std::vector<real_t> x); // Indeed, for functions with scalar outputs the Jacobians will be vectors. std::vector<std::vector<real_t>> hessian(real_t (*function)(std::vector<real_t>), std::vector<real_t> x); std::vector<std::vector<std::vector<real_t>>> thirdOrderTensor(real_t (*function)(std::vector<real_t>), std::vector<real_t> x); real_t constantApproximation(real_t (*function)(std::vector<real_t>), std::vector<real_t> c); real_t linearApproximation(real_t (*function)(std::vector<real_t>), std::vector<real_t> c, std::vector<real_t> x); real_t quadraticApproximation(real_t (*function)(std::vector<real_t>), std::vector<real_t> c, std::vector<real_t> x); real_t cubicApproximation(real_t (*function)(std::vector<real_t>), std::vector<real_t> c, std::vector<real_t> x); real_t laplacian(real_t (*function)(std::vector<real_t>), std::vector<real_t> x); // laplacian std::string secondPartialDerivativeTest(real_t (*function)(std::vector<real_t>), std::vector<real_t> x); */ protected: static void _bind_methods(); }; #endif /* NumericalAnalysis_hpp */