score_updater.hpp 3.84 KB
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#ifndef LIGHTGBM_BOOSTING_SCORE_UPDATER_HPP_
#define LIGHTGBM_BOOSTING_SCORE_UPDATER_HPP_

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#include <LightGBM/utils/openmp_wrapper.h>
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#include <LightGBM/meta.h>
#include <LightGBM/dataset.h>
#include <LightGBM/tree.h>
#include <LightGBM/tree_learner.h>

#include <cstring>

namespace LightGBM {
/*!
* \brief Used to store and update score for data
*/
class ScoreUpdater {
public:
  /*!
  * \brief Constructor, will pass a const pointer of dataset
  * \param data This class will bind with this data set
  */
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  ScoreUpdater(const Dataset* data, int num_class) : data_(data) {
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    num_data_ = data->num_data();
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    int64_t total_size = static_cast<int64_t>(num_data_) * num_class;
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    score_.resize(total_size);
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    // default start score is zero
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  #pragma omp parallel for schedule(static)
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    for (int64_t i = 0; i < total_size; ++i) {
      score_[i] = 0.0f;
    }
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    has_init_score_ = false;
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    const double* init_score = data->metadata().init_score();
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    // if exists initial score, will start from it
    if (init_score != nullptr) {
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      if ((data->metadata().num_init_score() % num_data_) != 0
          || (data->metadata().num_init_score() / num_data_) != num_class) {
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        Log::Fatal("number of class for initial score error");
      }
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      has_init_score_ = true;
    #pragma omp parallel for schedule(static)
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      for (int64_t i = 0; i < total_size; ++i) {
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        score_[i] = init_score[i];
      }
    }
  }
  /*! \brief Destructor */
  ~ScoreUpdater() {
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  }
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  inline bool has_init_score() const { return has_init_score_; }

  inline void AddScore(double val, int curr_class) {
    int64_t offset = curr_class * num_data_;
  #pragma omp parallel for schedule(static)
    for (int64_t i = 0; i < num_data_; ++i) {
      score_[offset + i] += val;
    }
  }
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  /*!
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  * \brief Using tree model to get prediction number, then adding to scores for all data
  *        Note: this function generally will be used on validation data too.
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  * \param tree Trained tree model
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  * \param curr_class Current class for multiclass training
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  */
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  inline void AddScore(const Tree* tree, int curr_class) {
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    tree->AddPredictionToScore(data_, num_data_, score_.data() + curr_class * num_data_);
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  }
  /*!
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  * \brief Adding prediction score, only used for training data.
  *        The training data is partitioned into tree leaves after training
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  *        Based on which We can get prediction quickly.
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  * \param tree_learner
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  * \param curr_class Current class for multiclass training
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  */
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  inline void AddScore(const TreeLearner* tree_learner, const Tree* tree, int curr_class) {
    tree_learner->AddPredictionToScore(tree, score_.data() + curr_class * num_data_);
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  }
  /*!
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  * \brief Using tree model to get prediction number, then adding to scores for parts of data
  *        Used for prediction of training out-of-bag data
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  * \param tree Trained tree model
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  * \param data_indices Indices of data that will be processed
  * \param data_cnt Number of data that will be processed
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  * \param curr_class Current class for multiclass training
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  */
  inline void AddScore(const Tree* tree, const data_size_t* data_indices,
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                       data_size_t data_cnt, int curr_class) {
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    tree->AddPredictionToScore(data_, data_indices, data_cnt, score_.data() + curr_class * num_data_);
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  }
  /*! \brief Pointer of score */
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  inline const double* score() const { return score_.data(); }
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  inline const data_size_t num_data() const { return num_data_; }

  /*! \brief Disable copy */
  ScoreUpdater& operator=(const ScoreUpdater&) = delete;
  /*! \brief Disable copy */
  ScoreUpdater(const ScoreUpdater&) = delete;
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private:
  /*! \brief Number of total data */
  data_size_t num_data_;
  /*! \brief Pointer of data set */
  const Dataset* data_;
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  /*! \brief Scores for data set */
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  std::vector<double> score_;
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  bool has_init_score_;
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};

}  // namespace LightGBM
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#endif   // LightGBM_BOOSTING_SCORE_UPDATER_HPP_