OnlineLinearMachine.cpp

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00001 /*
00002  * This program is free software; you can redistribute it and/or modify
00003  * it under the terms of the GNU General Public License as published by
00004  * the Free Software Foundation; either version 3 of the License, or
00005  * (at your option) any later version.
00006  *
00007  * Written (W) 1999-2009 Soeren Sonnenburg
00008  * Copyright (C) 1999-2009 Fraunhofer Institute FIRST and Max-Planck-Society
00009  */
00010 
00011 #include <shogun/machine/OnlineLinearMachine.h>
00012 #include <shogun/base/Parameter.h>
00013 
00014 using namespace shogun;
00015 
00016 COnlineLinearMachine::COnlineLinearMachine()
00017 : CMachine(), w_dim(0), w(NULL), bias(0), features(NULL)
00018 {
00019     m_parameters->add_vector(&w, &w_dim, "w", "Parameter vector w.");
00020     m_parameters->add(&bias, "bias", "Bias b.");
00021     m_parameters->add((CSGObject**) &features, "features", "Feature object.");
00022 }
00023 
00024 COnlineLinearMachine::~COnlineLinearMachine()
00025 {
00026     // It is possible that a derived class may have already
00027     // called SG_FREE() on the weight vector
00028     if (w != NULL)
00029         SG_FREE(w);
00030     SG_UNREF(features);
00031 }
00032 
00033 bool COnlineLinearMachine::load(FILE* srcfile)
00034 {
00035     SG_SET_LOCALE_C;
00036     SG_RESET_LOCALE;
00037     return false;
00038 }
00039 
00040 bool COnlineLinearMachine::save(FILE* dstfile)
00041 {
00042     SG_SET_LOCALE_C;
00043     SG_RESET_LOCALE;
00044     return false;
00045 }
00046 
00047 CLabels* COnlineLinearMachine::apply()
00048 {
00049     ASSERT(features);
00050     ASSERT(features->has_property(FP_STREAMING_DOT));
00051 
00052     DynArray<float64_t>* labels_dynarray=new DynArray<float64_t>();
00053     int32_t num_labels=0;
00054 
00055     features->start_parser();
00056     while (features->get_next_example())
00057     {
00058         float64_t current_lab=features->dense_dot(w, w_dim) + bias;
00059 
00060         labels_dynarray->append_element(current_lab);
00061         num_labels++;
00062 
00063         features->release_example();
00064     }
00065     features->end_parser();
00066 
00067     SGVector<float64_t> labels_array(num_labels);
00068     for (int32_t i=0; i<num_labels; i++)
00069         labels_array.vector[i]=(*labels_dynarray)[i];
00070 
00071     return new CLabels(labels_array);
00072 }
00073 
00074 CLabels* COnlineLinearMachine::apply(CFeatures* data)
00075 {
00076     if (!data)
00077         SG_ERROR("No features specified\n");
00078     if (!data->has_property(FP_STREAMING_DOT))
00079         SG_ERROR("Specified features are not of type CStreamingDotFeatures\n");
00080     set_features((CStreamingDotFeatures*) data);
00081     return apply();
00082 }
00083 
00084 float32_t COnlineLinearMachine::apply(float32_t* vec, int32_t len)
00085 {
00086         return CMath::dot(vec, w, len)+bias;
00087 }
00088 
00089 float32_t COnlineLinearMachine::apply_to_current_example()
00090 {
00091         return features->dense_dot(w, w_dim)+bias;
00092 }
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