1 | #ifndef _theplu_yat_regression_polynomialweighted_ |
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2 | #define _theplu_yat_regression_polynomialweighted_ |
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3 | |
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4 | // $Id: PolynomialWeighted.h 1487 2008-09-10 08:41:36Z jari $ |
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5 | |
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6 | /* |
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7 | Copyright (C) 2006, 2007 Jari Häkkinen, Peter Johansson |
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8 | Copyright (C) 2008 Peter Johansson |
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9 | |
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10 | This file is part of the yat library, http://dev.thep.lu.se/yat |
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11 | |
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12 | The yat library is free software; you can redistribute it and/or |
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13 | modify it under the terms of the GNU General Public License as |
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14 | published by the Free Software Foundation; either version 3 of the |
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15 | License, or (at your option) any later version. |
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16 | |
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17 | The yat library is distributed in the hope that it will be useful, |
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18 | but WITHOUT ANY WARRANTY; without even the implied warranty of |
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19 | MERCHANTABILITY or FITNESS FOR A PARTICULAR PURPOSE. See the GNU |
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20 | General Public License for more details. |
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21 | |
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22 | You should have received a copy of the GNU General Public License |
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23 | along with yat. If not, see <http://www.gnu.org/licenses/>. |
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24 | */ |
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25 | |
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26 | #include "OneDimensionalWeighted.h" |
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27 | #include "MultiDimensionalWeighted.h" |
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28 | #include "yat/utility/Vector.h" |
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29 | |
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30 | namespace theplu { |
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31 | namespace yat { |
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32 | namespace regression { |
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33 | |
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34 | /// |
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35 | /// @brief Polynomial Regression in weighted fashion. |
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36 | /// |
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37 | class PolynomialWeighted : public OneDimensionalWeighted |
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38 | { |
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39 | public: |
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40 | |
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41 | /// |
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42 | /// @param power degree of polynomial model |
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43 | /// |
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44 | PolynomialWeighted(size_t power); |
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45 | |
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46 | /// |
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47 | /// @brief Destructor |
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48 | /// |
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49 | ~PolynomialWeighted(void); |
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50 | |
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51 | /// |
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52 | /// This function computes the best-fit given the polynomial model |
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53 | /// model by minimizing \f$ \sum{w_i(\hat{y_i}-y_i)^2} \f$, where |
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54 | /// \f$ \hat{y} \f$ is the fitted value. The weight \f$ w_i \f$ |
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55 | /// should be proportional to the inverse of the variance for \f$ |
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56 | /// y_i \f$ |
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57 | /// |
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58 | void fit(const utility::VectorBase& x, const utility::VectorBase& y, |
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59 | const utility::VectorBase& w); |
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60 | |
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61 | /// |
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62 | /// @return parameters of the model |
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63 | /// |
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64 | /// @see MultiDimensional |
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65 | /// |
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66 | const utility::Vector& fit_parameters(void) const; |
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67 | |
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68 | /// |
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69 | /// @brief Mean Squared Error |
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70 | /// |
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71 | double s2(const double w=1) const; |
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72 | |
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73 | /// |
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74 | /// function predicting in one point. |
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75 | /// |
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76 | double predict(const double x) const; |
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77 | |
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78 | /// |
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79 | /// @return error of model value in @a x |
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80 | /// |
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81 | double standard_error2(const double x) const; |
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82 | |
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83 | private: |
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84 | MultiDimensionalWeighted md_; |
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85 | size_t power_; |
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86 | |
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87 | }; |
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88 | |
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89 | }}} // of namespaces regression, yat, and theplu |
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90 | |
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91 | #endif |
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