bin.cpp 18.1 KB
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#include <LightGBM/utils/common.h>
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#include <LightGBM/bin.h>

#include "dense_bin.hpp"
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#include "dense_nbits_bin.hpp"
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#include "sparse_bin.hpp"
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#include "ordered_sparse_bin.hpp"
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#include <cmath>
#include <cstring>
#include <cstdint>

#include <limits>
#include <vector>
#include <algorithm>

namespace LightGBM {

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  BinMapper::BinMapper() {
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  }
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  // deep copy function for BinMapper
  BinMapper::BinMapper(const BinMapper& other) {
    num_bin_ = other.num_bin_;
    missing_type_ = other.missing_type_;
    is_trival_ = other.is_trival_;
    sparse_rate_ = other.sparse_rate_;
    bin_type_ = other.bin_type_;
    if (bin_type_ == BinType::NumericalBin) {
      bin_upper_bound_ = other.bin_upper_bound_;
    } else {
      bin_2_categorical_ = other.bin_2_categorical_;
      categorical_2_bin_ = other.categorical_2_bin_;
    }
    min_val_ = other.min_val_;
    max_val_ = other.max_val_;
    default_bin_ = other.default_bin_;
  }
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  BinMapper::BinMapper(const void* memory) {
    CopyFrom(reinterpret_cast<const char*>(memory));
  }
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  BinMapper::~BinMapper() {
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  }

  bool NeedFilter(const std::vector<int>& cnt_in_bin, int total_cnt, int filter_cnt, BinType bin_type) {
    if (bin_type == BinType::NumericalBin) {
      int sum_left = 0;
      for (size_t i = 0; i < cnt_in_bin.size() - 1; ++i) {
        sum_left += cnt_in_bin[i];
        if (sum_left >= filter_cnt && total_cnt - sum_left >= filter_cnt) {
          return false;
        }
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      }
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    } else {
      if (cnt_in_bin.size() <= 2) {
        for (size_t i = 0; i < cnt_in_bin.size() - 1; ++i) {
          int sum_left = cnt_in_bin[i];
          if (sum_left >= filter_cnt && total_cnt - sum_left >= filter_cnt) {
            return false;
          }
        }
      } else {
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        return false;
      }
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    }
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    return true;
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  }
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  std::vector<double> GreedyFindBin(const double* distinct_values, const int* counts,
    int num_distinct_values, int max_bin, size_t total_cnt, int min_data_in_bin) {
    std::vector<double> bin_upper_bound;
    if (num_distinct_values <= max_bin) {
      bin_upper_bound.clear();
      int cur_cnt_inbin = 0;
      for (int i = 0; i < num_distinct_values - 1; ++i) {
        cur_cnt_inbin += counts[i];
        if (cur_cnt_inbin >= min_data_in_bin) {
          bin_upper_bound.push_back((distinct_values[i] + distinct_values[i + 1]) / 2);
          cur_cnt_inbin = 0;
        }
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      }
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      cur_cnt_inbin += counts[num_distinct_values - 1];
      bin_upper_bound.push_back(std::numeric_limits<double>::infinity());
    } else {
      if (min_data_in_bin > 0) {
        max_bin = std::min(max_bin, static_cast<int>(total_cnt / min_data_in_bin));
        max_bin = std::max(max_bin, 1);
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      }
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      double mean_bin_size = static_cast<double>(total_cnt) / max_bin;

      // mean size for one bin
      int rest_bin_cnt = max_bin;
      int rest_sample_cnt = static_cast<int>(total_cnt);
      std::vector<bool> is_big_count_value(num_distinct_values, false);
      for (int i = 0; i < num_distinct_values; ++i) {
        if (counts[i] >= mean_bin_size) {
          is_big_count_value[i] = true;
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          --rest_bin_cnt;
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          rest_sample_cnt -= counts[i];
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        }
      }
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      mean_bin_size = static_cast<double>(rest_sample_cnt) / rest_bin_cnt;
      std::vector<double> upper_bounds(max_bin, std::numeric_limits<double>::infinity());
      std::vector<double> lower_bounds(max_bin, std::numeric_limits<double>::infinity());

      int bin_cnt = 0;
      lower_bounds[bin_cnt] = distinct_values[0];
      int cur_cnt_inbin = 0;
      for (int i = 0; i < num_distinct_values - 1; ++i) {
        if (!is_big_count_value[i]) {
          rest_sample_cnt -= counts[i];
        }
        cur_cnt_inbin += counts[i];
        // need a new bin
        if (is_big_count_value[i] || cur_cnt_inbin >= mean_bin_size ||
          (is_big_count_value[i + 1] && cur_cnt_inbin >= std::max(1.0, mean_bin_size * 0.5f))) {
          upper_bounds[bin_cnt] = distinct_values[i];
          ++bin_cnt;
          lower_bounds[bin_cnt] = distinct_values[i + 1];
          if (bin_cnt >= max_bin - 1) { break; }
          cur_cnt_inbin = 0;
          if (!is_big_count_value[i]) {
            --rest_bin_cnt;
            mean_bin_size = rest_sample_cnt / static_cast<double>(rest_bin_cnt);
          }
        }
      }
      ++bin_cnt;
      // update bin upper bound
      bin_upper_bound.resize(bin_cnt);
      for (int i = 0; i < bin_cnt - 1; ++i) {
        bin_upper_bound[i] = (upper_bounds[i] + lower_bounds[i + 1]) / 2.0f;
      }
      // last bin upper bound
      bin_upper_bound[bin_cnt - 1] = std::numeric_limits<double>::infinity();
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    }
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    return bin_upper_bound;
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  }
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  std::vector<double> FindBinWithZeroAsOneBin(const double* distinct_values, const int* counts,
    int num_distinct_values, int max_bin, size_t total_sample_cnt, int min_data_in_bin) {
    std::vector<double> bin_upper_bound;
    int left_cnt_data = 0;
    int cnt_zero = 0;
    int right_cnt_data = 0;
    for (int i = 0; i < num_distinct_values; ++i) {
      if (distinct_values[i] <= -kZeroAsMissingValueRange) {
        left_cnt_data += counts[i];
      } else if (distinct_values[i] > kZeroAsMissingValueRange) {
        right_cnt_data += counts[i];
      } else {
        cnt_zero += counts[i];
      }
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    }

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    int left_cnt = -1;
    for (int i = 0; i < num_distinct_values; ++i) {
      if (distinct_values[i] > -kZeroAsMissingValueRange) {
        left_cnt = i;
        break;
      }
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    }

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    if (left_cnt < 0) {
      left_cnt = num_distinct_values;
    }
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    if (left_cnt > 0) {
      int left_max_bin = static_cast<int>(static_cast<double>(left_cnt_data) / (total_sample_cnt - cnt_zero) * (max_bin - 1));
      bin_upper_bound = GreedyFindBin(distinct_values, counts, left_cnt, left_max_bin, left_cnt_data, min_data_in_bin);
      bin_upper_bound.back() = -kZeroAsMissingValueRange;
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    }

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    int right_start = -1;
    for (int i = left_cnt; i < num_distinct_values; ++i) {
      if (distinct_values[i] > kZeroAsMissingValueRange) {
        right_start = i;
        break;
      }
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    }
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    if (right_start >= 0) {
      int right_max_bin = max_bin - 1 - static_cast<int>(bin_upper_bound.size());
      auto right_bounds = GreedyFindBin(distinct_values + right_start, counts + right_start,
        num_distinct_values - right_start, right_max_bin, right_cnt_data, min_data_in_bin);
      bin_upper_bound.push_back(kZeroAsMissingValueRange);
      bin_upper_bound.insert(bin_upper_bound.end(), right_bounds.begin(), right_bounds.end());
    } else {
      bin_upper_bound.push_back(std::numeric_limits<double>::infinity());
    }
    return bin_upper_bound;
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  }
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  void BinMapper::FindBin(double* values, int num_sample_values, size_t total_sample_cnt,
    int max_bin, int min_data_in_bin, int min_split_data, BinType bin_type, bool use_missing, bool zero_as_missing) {
    int na_cnt = 0;
    int tmp_num_sample_values = 0;
    for (int i = 0; i < num_sample_values; ++i) {
      if (!std::isnan(values[i])) {
        values[tmp_num_sample_values++] = values[i];
      }
    }
    if (!use_missing) {
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      missing_type_ = MissingType::None;
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    } else if (zero_as_missing) {
      missing_type_ = MissingType::Zero;
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    } else {
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      if (tmp_num_sample_values == num_sample_values) {
        missing_type_ = MissingType::None;
      } else {
        missing_type_ = MissingType::NaN;
        na_cnt = num_sample_values - tmp_num_sample_values;
      }
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    }
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    num_sample_values = tmp_num_sample_values;
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    bin_type_ = bin_type;
    default_bin_ = 0;
    int zero_cnt = static_cast<int>(total_sample_cnt - num_sample_values - na_cnt);
    // find distinct_values first
    std::vector<double> distinct_values;
    std::vector<int> counts;
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    std::sort(values, values + num_sample_values);
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    // push zero in the front
    if (num_sample_values == 0 || (values[0] > 0.0f && zero_cnt > 0)) {
      distinct_values.push_back(0.0f);
      counts.push_back(zero_cnt);
    }
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    if (num_sample_values > 0) {
      distinct_values.push_back(values[0]);
      counts.push_back(1);
    }
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    for (int i = 1; i < num_sample_values; ++i) {
      if (values[i] != values[i - 1]) {
        if (values[i - 1] < 0.0f && values[i] > 0.0f) {
          distinct_values.push_back(0.0f);
          counts.push_back(zero_cnt);
        }
        distinct_values.push_back(values[i]);
        counts.push_back(1);
      } else {
        ++counts.back();
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      }
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    }
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    // push zero in the back
    if (num_sample_values > 0 && values[num_sample_values - 1] < 0.0f && zero_cnt > 0) {
      distinct_values.push_back(0.0f);
      counts.push_back(zero_cnt);
    }
    min_val_ = distinct_values.front();
    max_val_ = distinct_values.back();
    std::vector<int> cnt_in_bin;
    int num_distinct_values = static_cast<int>(distinct_values.size());
    if (bin_type_ == BinType::NumericalBin) {
      if (missing_type_ == MissingType::Zero) {
        bin_upper_bound_ = FindBinWithZeroAsOneBin(distinct_values.data(), counts.data(), num_distinct_values, max_bin, total_sample_cnt, min_data_in_bin);
        if (bin_upper_bound_.size() == 2) {
          missing_type_ = MissingType::None;
        }
      } else if (missing_type_ == MissingType::None) {
        bin_upper_bound_ = FindBinWithZeroAsOneBin(distinct_values.data(), counts.data(), num_distinct_values, max_bin, total_sample_cnt, min_data_in_bin);
      } else {
        bin_upper_bound_ = FindBinWithZeroAsOneBin(distinct_values.data(), counts.data(), num_distinct_values, max_bin - 1, total_sample_cnt - na_cnt, min_data_in_bin);
        bin_upper_bound_.push_back(NaN);
      }
      num_bin_ = static_cast<int>(bin_upper_bound_.size());
      {
        cnt_in_bin.resize(num_bin_, 0);
        int i_bin = 0;
        for (int i = 0; i < num_distinct_values; ++i) {
          if (distinct_values[i] > bin_upper_bound_[i_bin]) {
            ++i_bin;
          }
          cnt_in_bin[i_bin] += counts[i];
        }
        if (missing_type_ == MissingType::NaN) {
          cnt_in_bin[num_bin_ - 1] = na_cnt;
        }
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      }
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      CHECK(num_bin_ <= max_bin);
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    } else {
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      // convert to int type first
      std::vector<int> distinct_values_int;
      std::vector<int> counts_int;
      distinct_values_int.push_back(static_cast<int>(distinct_values[0]));
      counts_int.push_back(counts[0]);
      for (size_t i = 1; i < distinct_values.size(); ++i) {
        if (static_cast<int>(distinct_values[i]) != distinct_values_int.back()) {
          distinct_values_int.push_back(static_cast<int>(distinct_values[i]));
          counts_int.push_back(counts[i]);
        } else {
          counts_int.back() += counts[i];
        }
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      }
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      // sort by counts
      Common::SortForPair<int, int>(counts_int, distinct_values_int, 0, true);
      // avoid first bin is zero
      if (distinct_values_int[0] == 0 && counts_int.size() > 1) {
        std::swap(counts_int[0], counts_int[1]);
        std::swap(distinct_values_int[0], distinct_values_int[1]);
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      }
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      // will ignore the categorical of small counts
      int cut_cnt = static_cast<int>((total_sample_cnt - na_cnt) * 0.99f);
      size_t cur_cat = 0;
      categorical_2_bin_.clear();
      bin_2_categorical_.clear();
      num_bin_ = 0;
      int used_cnt = 0;
      max_bin = std::min(static_cast<int>(distinct_values_int.size()), max_bin);
      cnt_in_bin.clear();
      while (cur_cat < distinct_values_int.size()
        && (used_cnt < cut_cnt || num_bin_ < max_bin)) {
        if (distinct_values_int[cur_cat] < 0) {
          na_cnt += counts_int[cur_cat];
          cut_cnt -= counts_int[cur_cat];
          Log::Warning("Met negative value in categorical features, will convert it to NaN");
        } else {
          bin_2_categorical_.push_back(distinct_values_int[cur_cat]);
          categorical_2_bin_[distinct_values_int[cur_cat]] = static_cast<unsigned int>(num_bin_);
          used_cnt += counts_int[cur_cat];
          cnt_in_bin.push_back(counts_int[cur_cat]);
          ++num_bin_;
        }
        ++cur_cat;
      }
      // need an additional bin for NaN
      if (cur_cat == distinct_values_int.size() && na_cnt > 0) {
        // use -1 to represent NaN
        bin_2_categorical_.push_back(-1);
        categorical_2_bin_[-1] = num_bin_;
        cnt_in_bin.push_back(0);
        ++num_bin_;
      }
      // Use MissingType::None to represent this bin contains all categoricals
      if (cur_cat == distinct_values_int.size() && na_cnt == 0) {
        missing_type_ = MissingType::None;
      } else if (na_cnt == 0) {
        missing_type_ = MissingType::Zero;
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      } else {
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        missing_type_ = MissingType::NaN;
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      }
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      cnt_in_bin.back() += static_cast<int>(total_sample_cnt - used_cnt);
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    }
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    // check trival(num_bin_ == 1) feature
    if (num_bin_ <= 1) {
      is_trival_ = true;
    } else {
      is_trival_ = false;
    }
    // check useless bin
    if (!is_trival_ && NeedFilter(cnt_in_bin, static_cast<int>(total_sample_cnt), min_split_data, bin_type_)) {
      is_trival_ = true;
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    }

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    if (!is_trival_) {
      default_bin_ = ValueToBin(0);
      if (bin_type_ == BinType::CategoricalBin) {
        CHECK(default_bin_ > 0);
      }
    }
    // calculate sparse rate
    sparse_rate_ = static_cast<double>(cnt_in_bin[default_bin_]) / static_cast<double>(total_sample_cnt);
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  }
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  int BinMapper::SizeForSpecificBin(int bin) {
    int size = 0;
    size += sizeof(int);
    size += sizeof(MissingType);
    size += sizeof(bool);
    size += sizeof(double);
    size += sizeof(BinType);
    size += 2 * sizeof(double);
    size += bin * sizeof(double);
    size += sizeof(uint32_t);
    return size;
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  }
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  void BinMapper::CopyTo(char * buffer) const {
    std::memcpy(buffer, &num_bin_, sizeof(num_bin_));
    buffer += sizeof(num_bin_);
    std::memcpy(buffer, &missing_type_, sizeof(missing_type_));
    buffer += sizeof(missing_type_);
    std::memcpy(buffer, &is_trival_, sizeof(is_trival_));
    buffer += sizeof(is_trival_);
    std::memcpy(buffer, &sparse_rate_, sizeof(sparse_rate_));
    buffer += sizeof(sparse_rate_);
    std::memcpy(buffer, &bin_type_, sizeof(bin_type_));
    buffer += sizeof(bin_type_);
    std::memcpy(buffer, &min_val_, sizeof(min_val_));
    buffer += sizeof(min_val_);
    std::memcpy(buffer, &max_val_, sizeof(max_val_));
    buffer += sizeof(max_val_);
    std::memcpy(buffer, &default_bin_, sizeof(default_bin_));
    buffer += sizeof(default_bin_);
    if (bin_type_ == BinType::NumericalBin) {
      std::memcpy(buffer, bin_upper_bound_.data(), num_bin_ * sizeof(double));
    } else {
      std::memcpy(buffer, bin_2_categorical_.data(), num_bin_ * sizeof(int));
    }
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  }
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  void BinMapper::CopyFrom(const char * buffer) {
    std::memcpy(&num_bin_, buffer, sizeof(num_bin_));
    buffer += sizeof(num_bin_);
    std::memcpy(&missing_type_, buffer, sizeof(missing_type_));
    buffer += sizeof(missing_type_);
    std::memcpy(&is_trival_, buffer, sizeof(is_trival_));
    buffer += sizeof(is_trival_);
    std::memcpy(&sparse_rate_, buffer, sizeof(sparse_rate_));
    buffer += sizeof(sparse_rate_);
    std::memcpy(&bin_type_, buffer, sizeof(bin_type_));
    buffer += sizeof(bin_type_);
    std::memcpy(&min_val_, buffer, sizeof(min_val_));
    buffer += sizeof(min_val_);
    std::memcpy(&max_val_, buffer, sizeof(max_val_));
    buffer += sizeof(max_val_);
    std::memcpy(&default_bin_, buffer, sizeof(default_bin_));
    buffer += sizeof(default_bin_);
    if (bin_type_ == BinType::NumericalBin) {
      bin_upper_bound_ = std::vector<double>(num_bin_);
      std::memcpy(bin_upper_bound_.data(), buffer, num_bin_ * sizeof(double));
    } else {
      bin_2_categorical_ = std::vector<int>(num_bin_);
      std::memcpy(bin_2_categorical_.data(), buffer, num_bin_ * sizeof(int));
      categorical_2_bin_.clear();
      for (int i = 0; i < num_bin_; ++i) {
        categorical_2_bin_[bin_2_categorical_[i]] = static_cast<unsigned int>(i);
      }
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    }
  }
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  void BinMapper::SaveBinaryToFile(FILE* file) const {
    fwrite(&num_bin_, sizeof(num_bin_), 1, file);
    fwrite(&missing_type_, sizeof(missing_type_), 1, file);
    fwrite(&is_trival_, sizeof(is_trival_), 1, file);
    fwrite(&sparse_rate_, sizeof(sparse_rate_), 1, file);
    fwrite(&bin_type_, sizeof(bin_type_), 1, file);
    fwrite(&min_val_, sizeof(min_val_), 1, file);
    fwrite(&max_val_, sizeof(max_val_), 1, file);
    fwrite(&default_bin_, sizeof(default_bin_), 1, file);
    if (bin_type_ == BinType::NumericalBin) {
      fwrite(bin_upper_bound_.data(), sizeof(double), num_bin_, file);
    } else {
      fwrite(bin_2_categorical_.data(), sizeof(int), num_bin_, file);
    }
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  }
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  size_t BinMapper::SizesInByte() const {
    size_t ret = sizeof(num_bin_) + sizeof(missing_type_) + sizeof(is_trival_) + sizeof(sparse_rate_)
      + sizeof(bin_type_) + sizeof(min_val_) + sizeof(max_val_) + sizeof(default_bin_);
    if (bin_type_ == BinType::NumericalBin) {
      ret += sizeof(double) *  num_bin_;
    } else {
      ret += sizeof(int) * num_bin_;
    }
    return ret;
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  }
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  template class DenseBin<uint8_t>;
  template class DenseBin<uint16_t>;
  template class DenseBin<uint32_t>;

  template class SparseBin<uint8_t>;
  template class SparseBin<uint16_t>;
  template class SparseBin<uint32_t>;

  template class OrderedSparseBin<uint8_t>;
  template class OrderedSparseBin<uint16_t>;
  template class OrderedSparseBin<uint32_t>;

  Bin* Bin::CreateBin(data_size_t num_data, int num_bin, double sparse_rate,
    bool is_enable_sparse, double sparse_threshold, bool* is_sparse) {
    // sparse threshold
    if (sparse_rate >= sparse_threshold && is_enable_sparse) {
      *is_sparse = true;
      return CreateSparseBin(num_data, num_bin);
    } else {
      *is_sparse = false;
      return CreateDenseBin(num_data, num_bin);
    }
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  }
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  Bin* Bin::CreateDenseBin(data_size_t num_data, int num_bin) {
    if (num_bin <= 16) {
      return new Dense4bitsBin(num_data);
    } else if (num_bin <= 256) {
      return new DenseBin<uint8_t>(num_data);
    } else if (num_bin <= 65536) {
      return new DenseBin<uint16_t>(num_data);
    } else {
      return new DenseBin<uint32_t>(num_data);
    }
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  }
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  Bin* Bin::CreateSparseBin(data_size_t num_data, int num_bin) {
    if (num_bin <= 256) {
      return new SparseBin<uint8_t>(num_data);
    } else if (num_bin <= 65536) {
      return new SparseBin<uint16_t>(num_data);
    } else {
      return new SparseBin<uint32_t>(num_data);
    }
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  }

}  // namespace LightGBM