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FreeLing
3.0
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00001 00002 // 00003 // Omlet - Open Machine Learning Enhanced Toolkit 00004 // 00005 // Copyright (C) 2006 TALP Research Center 00006 // Universitat Politecnica de Catalunya 00007 // 00008 // This file is part of the Omlet library 00009 // 00010 // The Omlet library is free software; you can redistribute it 00011 // and/or modify it under the terms of the GNU General Public 00012 // License as published by the Free Software Foundation; either 00013 // version 3 of the License, or (at your option) any later version. 00014 // 00015 // This library is distributed in the hope that it will be useful, 00016 // but WITHOUT ANY WARRANTY; without even the implied warranty of 00017 // MERCHANTABILITY or FITNESS FOR A PARTICULAR PURPOSE. See the GNU 00018 // General Public License for more details. 00019 // 00020 // You should have received a copy of the GNU General Public 00021 // License along with this library; if not, write to the Free Software 00022 // Foundation, Inc., 51 Franklin St, 5th Floor, Boston, MA 02110-1301 USA 00023 // 00024 // contact: Lluis Padro (padro@lsi.upc.es) 00025 // TALP Research Center 00026 // despatx Omega.S112 - Campus Nord UPC 00027 // 08034 Barcelona. SPAIN 00028 // 00030 00031 // 00032 // Author: Xavier Carreras 00033 // 00034 00035 #ifndef _EXAMPLE 00036 #define _EXAMPLE 00037 00038 #include <map> 00039 #include <vector> 00040 00045 00046 class category { 00047 friend class example; 00048 protected: 00050 bool belongs; 00052 double weight; 00054 double prediction; 00055 00056 public: 00058 category(bool, double, double); 00060 category(const category &); 00061 }; 00062 00069 00070 class example : public std::map<int,double> { 00071 00072 private: 00074 int dimension; 00076 std::vector<category> labels; 00077 int nlabels; 00078 00079 public: 00081 example(int nl); 00083 example(const example &e); 00084 00086 example(double f1, const example& i1, double f2, const example& i2); 00087 00089 double norm(); 00090 00092 void add_feature(int l, double v = 1.0); 00093 00095 int get_nlabels() const; 00096 double get_feature_value(int label) const; 00097 int get_dimension() const; 00098 00100 double inner_product(const example &i2) const; 00102 void add_vector(double f, const example &i2); 00103 00105 void set_label(int l, bool b, double w, double pr); 00106 void set_belongs(int l, bool b); 00107 bool belongs(int l) const; 00108 int sign(int l) const; 00109 void set_weight(int l, double w); 00110 double get_weight(int l) const; 00111 void set_prediction(int l, double pr); 00112 double get_prediction(int l); 00113 }; 00114 00115 00116 #endif
1.7.6.1