#include #include #include "dense_bin.hpp" #include "sparse_bin.hpp" #include "ordered_sparse_bin.hpp" #include #include #include #include #include #include namespace LightGBM { BinMapper::BinMapper() { } // deep copy function for BinMapper BinMapper::BinMapper(const BinMapper& other) { num_bin_ = other.num_bin_; 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_; } BinMapper::BinMapper(const void* memory) { CopyFrom(reinterpret_cast(memory)); } BinMapper::~BinMapper() { } void BinMapper::FindBin(const std::string& column_name, std::vector* values, size_t total_sample_cnt, int max_bin, BinType bin_type) { bin_type_ = bin_type; std::vector& ref_values = (*values); size_t sample_size = total_sample_cnt; int zero_cnt = static_cast(total_sample_cnt - ref_values.size()); // find distinct_values first std::vector distinct_values; std::vector counts; std::sort(ref_values.begin(), ref_values.end()); // push zero in the front if (ref_values.empty() || (ref_values[0] > 0.0f && zero_cnt > 0)) { distinct_values.push_back(0); counts.push_back(zero_cnt); } if (!ref_values.empty()) { distinct_values.push_back(ref_values[0]); counts.push_back(1); } for (size_t i = 1; i < ref_values.size(); ++i) { if (ref_values[i] != ref_values[i - 1]) { if (ref_values[i - 1] == 0.0f) { counts.back() += zero_cnt; } else if (ref_values[i - 1] < 0.0f && ref_values[i] > 0.0f) { distinct_values.push_back(0); counts.push_back(zero_cnt); } distinct_values.push_back(ref_values[i]); counts.push_back(1); } else { ++counts.back(); } } // push zero in the back if (!ref_values.empty() && ref_values.back() < 0.0f && zero_cnt > 0) { distinct_values.push_back(0); counts.push_back(zero_cnt); } min_val_ = distinct_values.front(); max_val_ = distinct_values.back(); std::vector cnt_in_bin; int num_values = static_cast(distinct_values.size()); int cnt_in_bin0 = 0; if (bin_type_ == BinType::NumericalBin) { if (num_values <= max_bin) { std::sort(distinct_values.begin(), distinct_values.end()); // use distinct value is enough num_bin_ = num_values; bin_upper_bound_ = std::vector(num_values); for (int i = 0; i < num_values - 1; ++i) { bin_upper_bound_[i] = (distinct_values[i] + distinct_values[i + 1]) / 2; } cnt_in_bin = counts; bin_upper_bound_[num_values - 1] = std::numeric_limits::infinity(); } else { // mean size for one bin double mean_bin_size = sample_size / static_cast(max_bin); int rest_bin_cnt = max_bin; int rest_sample_cnt = static_cast(sample_size); std::vector is_big_count_value(num_values, false); for (int i = 0; i < num_values; ++i) { if (counts[i] >= mean_bin_size) { is_big_count_value[i] = true; --rest_bin_cnt; rest_sample_cnt -= counts[i]; } } mean_bin_size = rest_sample_cnt / static_cast(rest_bin_cnt); std::vector upper_bounds(max_bin, std::numeric_limits::infinity()); std::vector lower_bounds(max_bin, std::numeric_limits::infinity()); int bin_cnt = 0; lower_bounds[bin_cnt] = distinct_values[0]; int cur_cnt_inbin = 0; for (int i = 0; i < num_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]; cnt_in_bin.push_back(cur_cnt_inbin); ++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(rest_bin_cnt); } } } // ++bin_cnt; // update bin upper bound bin_upper_bound_ = std::vector(bin_cnt); num_bin_ = 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::infinity(); } } else { // convert to int type first std::vector distinct_values_int; std::vector counts_int; distinct_values_int.push_back(static_cast(distinct_values[0])); counts_int.push_back(counts[0]); for (size_t i = 1; i < distinct_values.size(); ++i) { if (static_cast(distinct_values[i]) != distinct_values_int.back()) { distinct_values_int.push_back(static_cast(distinct_values[i])); counts_int.push_back(counts[i]); } else { counts_int.back() += counts[i]; } } // sort by counts Common::SortForPair(counts_int, distinct_values_int, 0, true); // will ingore the categorical of small counts num_bin_ = std::min(max_bin, static_cast(counts_int.size())); categorical_2_bin_.clear(); bin_2_categorical_ = std::vector(num_bin_); int used_cnt = 0; for (int i = 0; i < num_bin_; ++i) { bin_2_categorical_[i] = distinct_values_int[i]; categorical_2_bin_[distinct_values_int[i]] = static_cast(i); used_cnt += counts_int[i]; } if (used_cnt / static_cast(sample_size) < 0.95f) { Log::Warning("Too many categoricals are ignored, \ please use bigger max_bin or partition column \"%s\" ", column_name.c_str()); } cnt_in_bin = counts_int; cnt_in_bin[0] += static_cast(sample_size) - used_cnt; } // check trival(num_bin_ == 1) feature if (num_bin_ <= 1) { is_trival_ = true; } else { is_trival_ = false; } // calculate sparse rate CHECK(num_bin_ <= max_bin); sparse_rate_ = static_cast(cnt_in_bin[GetDefaultBin()]) / static_cast(sample_size); } int BinMapper::SizeForSpecificBin(int bin) { int size = 0; size += sizeof(int); size += sizeof(bool); size += sizeof(double); size += sizeof(BinType); size += bin * sizeof(double); return size; } void BinMapper::CopyTo(char * buffer) { std::memcpy(buffer, &num_bin_, sizeof(num_bin_)); buffer += sizeof(num_bin_); 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(&min_val_, buffer, sizeof(min_val_)); buffer += sizeof(min_val_); std::memcpy(&max_val_, buffer, sizeof(max_val_)); buffer += sizeof(max_val_); 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)); } } void BinMapper::CopyFrom(const char * buffer) { std::memcpy(&num_bin_, buffer, sizeof(num_bin_)); buffer += sizeof(num_bin_); 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_); if (bin_type_ == BinType::NumericalBin) { bin_upper_bound_ = std::vector(num_bin_); std::memcpy(bin_upper_bound_.data(), buffer, num_bin_ * sizeof(double)); } else { bin_2_categorical_ = std::vector(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(i); } } } void BinMapper::SaveBinaryToFile(FILE* file) const { fwrite(&num_bin_, sizeof(num_bin_), 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); 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); } } size_t BinMapper::SizesInByte() const { size_t ret = sizeof(num_bin_) + sizeof(is_trival_) + sizeof(sparse_rate_) + sizeof(bin_type_) + sizeof(min_val_) + sizeof(max_val_); if (bin_type_ == BinType::NumericalBin) { ret += sizeof(double) * num_bin_; } else { ret += sizeof(int) * num_bin_; } return ret; } template class DenseBin; template class DenseBin; template class DenseBin; template class DenseCategoricalBin; template class DenseCategoricalBin; template class DenseCategoricalBin; template class SparseBin; template class SparseBin; template class SparseBin; template class SparseCategoricalBin; template class SparseCategoricalBin; template class SparseCategoricalBin; template class OrderedSparseBin; template class OrderedSparseBin; template class OrderedSparseBin; Bin* Bin::CreateBin(data_size_t num_data, int num_bin, double sparse_rate, bool is_enable_sparse, bool* is_sparse, uint32_t default_bin, BinType bin_type) { // sparse threshold const double kSparseThreshold = 0.8f; if (sparse_rate >= kSparseThreshold && is_enable_sparse) { *is_sparse = true; return CreateSparseBin(num_data, num_bin, default_bin, bin_type); } else { *is_sparse = false; return CreateDenseBin(num_data, num_bin, default_bin, bin_type); } } Bin* Bin::CreateDenseBin(data_size_t num_data, int num_bin, uint32_t default_bin, BinType bin_type) { if (bin_type == BinType::NumericalBin) { if (num_bin <= 255) { return new DenseBin(num_data, default_bin); } else if (num_bin <= 65535) { return new DenseBin(num_data, default_bin); } else { return new DenseBin(num_data, default_bin); } } else { if (num_bin <= 255) { return new DenseCategoricalBin(num_data, default_bin); } else if (num_bin <= 65535) { return new DenseCategoricalBin(num_data, default_bin); } else { return new DenseCategoricalBin(num_data, default_bin); } } } Bin* Bin::CreateSparseBin(data_size_t num_data, int num_bin, uint32_t default_bin, BinType bin_type) { if (bin_type == BinType::NumericalBin) { if (num_bin <= 255) { return new SparseBin(num_data, default_bin); } else if (num_bin <= 65535) { return new SparseBin(num_data, default_bin); } else { return new SparseBin(num_data, default_bin); } } else { if (num_bin <= 255) { return new SparseCategoricalBin(num_data, default_bin); } else if (num_bin <= 65535) { return new SparseCategoricalBin(num_data, default_bin); } else { return new SparseCategoricalBin(num_data, default_bin); } } } } // namespace LightGBM