regression_objective.hpp 23.2 KB
Newer Older
Guolin Ke's avatar
Guolin Ke committed
1
2
3
#ifndef LIGHTGBM_OBJECTIVE_REGRESSION_OBJECTIVE_HPP_
#define LIGHTGBM_OBJECTIVE_REGRESSION_OBJECTIVE_HPP_

Guolin Ke's avatar
Guolin Ke committed
4
#include <LightGBM/objective_function.h>
5
6
#include <LightGBM/meta.h>

7
#include <LightGBM/utils/array_args.h>
Guolin Ke's avatar
Guolin Ke committed
8
9

namespace LightGBM {
10

11
12
13
14
15
16
17
18
19
20
21
22
23
24
25
26
27
28
29
30
31
32
33
34
35
36
37
38
39
40
41
42
43
44
45
46
47
48
49
50
51
52
53
54
55
56
57
58
59
60
#define PercentileFun(T, data_reader, cnt_data, alpha) {\
  std::vector<T> ref_data(cnt_data);\
  for (data_size_t i = 0; i < cnt_data; ++i) {\
    ref_data[i] = data_reader(i);\
  }\
  const double float_pos = (1.0f - alpha) * cnt_data;\
  const data_size_t pos = static_cast<data_size_t>(float_pos);\
  if (pos < 1) {\
    return ref_data[ArrayArgs<T>::ArgMax(ref_data)];\
  } else if (pos >= cnt_data) {\
    return ref_data[ArrayArgs<T>::ArgMin(ref_data)];\
  } else {\
    const double bias = float_pos - pos;\
    if (pos > cnt_data / 2) {\
      ArrayArgs<T>::ArgMaxAtK(&ref_data, 0, cnt_data, pos - 1);\
      T v1 = ref_data[pos - 1];\
      T v2 = ref_data[pos + ArrayArgs<T>::ArgMax(ref_data.data() + pos, cnt_data - pos)];\
      return static_cast<T>(v1 - (v1 - v2) * bias);\
    } else {\
      ArrayArgs<T>::ArgMaxAtK(&ref_data, 0, cnt_data, pos);\
      T v2 = ref_data[pos];\
      T v1 = ref_data[ArrayArgs<T>::ArgMin(ref_data.data(), pos)];\
      return static_cast<T>(v1 - (v1 - v2) * bias);\
    }\
  }\
}\

#define WeightedPercentileFun(T, data_reader, weight_reader, cnt_data, alpha) {\
  std::vector<data_size_t> sorted_idx(cnt_data);\
  for (data_size_t i = 0; i < cnt_data; ++i) {\
    sorted_idx[i] = i;\
  }\
  std::sort(sorted_idx.begin(), sorted_idx.end(), [=](data_size_t a, data_size_t b) {return data_reader(a) < data_reader(b); });\
  std::vector<double> weighted_cdf(cnt_data);\
  weighted_cdf[0] = weight_reader(sorted_idx[0]);\
  for (data_size_t i = 1; i < cnt_data; ++i) {\
    weighted_cdf[i] = weighted_cdf[i - 1] + weight_reader(sorted_idx[i]);\
  }\
  double threshold = weighted_cdf[cnt_data - 1] * alpha;\
  size_t pos = std::upper_bound(weighted_cdf.begin(), weighted_cdf.end(), threshold) - weighted_cdf.begin();\
  if (pos == 0) {\
    return data_reader(sorted_idx[0]);\
  }\
  CHECK(threshold >= weighted_cdf[pos - 1]);\
  CHECK(threshold < weighted_cdf[pos]);\
  T v1 = data_reader(sorted_idx[pos - 1]);\
  T v2 = data_reader(sorted_idx[pos]);\
  return static_cast<T>((threshold - weighted_cdf[pos]) / (weighted_cdf[pos + 1] - weighted_cdf[pos]) * (v2 - v1) + v1);\
}\

Guolin Ke's avatar
Guolin Ke committed
61
/*!
62
* \brief Objective function for regression
Guolin Ke's avatar
Guolin Ke committed
63
64
65
*/
class RegressionL2loss: public ObjectiveFunction {
public:
Guolin Ke's avatar
Guolin Ke committed
66
  explicit RegressionL2loss(const Config& config) {
67
    sqrt_ = config.reg_sqrt;
Guolin Ke's avatar
Guolin Ke committed
68
69
  }

70
71
72
73
74
75
76
  explicit RegressionL2loss(const std::vector<std::string>& strs) {
    sqrt_ = false;
    for (auto str : strs) {
      if (str == std::string("sqrt")) {
        sqrt_ = true;
      }
    }
77
  }
78
  
Guolin Ke's avatar
Guolin Ke committed
79
80
81
82
83
84
  ~RegressionL2loss() {
  }

  void Init(const Metadata& metadata, data_size_t num_data) override {
    num_data_ = num_data;
    label_ = metadata.label();
85
86
    if (sqrt_) {
      trans_label_.resize(num_data_);
87
      #pragma omp parallel for schedule(static)
88
      for (data_size_t i = 0; i < num_data; ++i) {
89
        trans_label_[i] = Common::Sign(label_[i]) * std::sqrt(std::fabs(label_[i]));
90
91
92
      }
      label_ = trans_label_.data();
    }
Guolin Ke's avatar
Guolin Ke committed
93
94
95
    weights_ = metadata.weights();
  }

96
97
  void GetGradients(const double* score, score_t* gradients,
                    score_t* hessians) const override {
Guolin Ke's avatar
Guolin Ke committed
98
    if (weights_ == nullptr) {
99
      #pragma omp parallel for schedule(static)
Guolin Ke's avatar
Guolin Ke committed
100
      for (data_size_t i = 0; i < num_data_; ++i) {
101
        gradients[i] = static_cast<score_t>(score[i] - label_[i]);
102
        hessians[i] = 1.0f;
Guolin Ke's avatar
Guolin Ke committed
103
104
      }
    } else {
105
      #pragma omp parallel for schedule(static)
Guolin Ke's avatar
Guolin Ke committed
106
      for (data_size_t i = 0; i < num_data_; ++i) {
107
108
        gradients[i] = static_cast<score_t>((score[i] - label_[i]) * weights_[i]);
        hessians[i] = static_cast<score_t>(weights_[i]);
Guolin Ke's avatar
Guolin Ke committed
109
110
111
112
      }
    }
  }

Guolin Ke's avatar
Guolin Ke committed
113
114
  const char* GetName() const override {
    return "regression";
Guolin Ke's avatar
Guolin Ke committed
115
116
  }

117
118
  void ConvertOutput(const double* input, double* output) const override {
    if (sqrt_) {
119
      output[0] = Common::Sign(input[0]) * input[0] * input[0];
120
121
122
123
124
    } else {
      output[0] = input[0];
    }
  }

125
126
127
  std::string ToString() const override {
    std::stringstream str_buf;
    str_buf << GetName();
128
129
130
    if (sqrt_) {
      str_buf << " sqrt";
    }
131
132
133
    return str_buf.str();
  }

134
135
136
137
138
139
140
141
  bool IsConstantHessian() const override {
    if (weights_ == nullptr) {
      return true;
    } else {
      return false;
    }
  }

142
  double BoostFromScore(int) const override {
143
144
145
146
147
148
149
150
    double suml = 0.0f;
    double sumw = 0.0f;
    if (weights_ != nullptr) {
      #pragma omp parallel for schedule(static) reduction(+:suml,sumw)
      for (data_size_t i = 0; i < num_data_; ++i) {
        suml += label_[i] * weights_[i];
        sumw += weights_[i];
      }
151
    } else {
152
153
154
155
156
      sumw = static_cast<double>(num_data_);
      #pragma omp parallel for schedule(static) reduction(+:suml)
      for (data_size_t i = 0; i < num_data_; ++i) {
        suml += label_[i];
      }
157
    }
158
    return suml / sumw;
159
  }
160

161
162
protected:
  bool sqrt_;
Guolin Ke's avatar
Guolin Ke committed
163
164
165
  /*! \brief Number of data */
  data_size_t num_data_;
  /*! \brief Pointer of label */
166
  const label_t* label_;
Guolin Ke's avatar
Guolin Ke committed
167
  /*! \brief Pointer of weights */
168
169
  const label_t* weights_;
  std::vector<label_t> trans_label_;
Guolin Ke's avatar
Guolin Ke committed
170
171
};

Guolin Ke's avatar
Guolin Ke committed
172
173
174
/*!
* \brief L1 regression loss
*/
175
class RegressionL1loss: public RegressionL2loss {
176
public:
Guolin Ke's avatar
Guolin Ke committed
177
  explicit RegressionL1loss(const Config& config): RegressionL2loss(config) {
178
  }
179

180
  explicit RegressionL1loss(const std::vector<std::string>& strs): RegressionL2loss(strs) {
181
182
  }

183
184
  ~RegressionL1loss() {}

185
186
  void GetGradients(const double* score, score_t* gradients,
                    score_t* hessians) const override {
187
    if (weights_ == nullptr) {
188
      #pragma omp parallel for schedule(static)
189
      for (data_size_t i = 0; i < num_data_; ++i) {
190
        const double diff = score[i] - label_[i];
191
192
        gradients[i] = static_cast<score_t>(Common::Sign(diff));
        hessians[i] = 1.0f;
193
194
      }
    } else {
195
      #pragma omp parallel for schedule(static)
196
      for (data_size_t i = 0; i < num_data_; ++i) {
197
        const double diff = score[i] - label_[i];
198
199
        gradients[i] = static_cast<score_t>(Common::Sign(diff) * weights_[i]);
        hessians[i] = weights_[i];
200
201
202
203
      }
    }
  }

204
  double BoostFromScore(int) const override {
205
206
207
208
209
210
211
212
213
214
215
216
    const double alpha = 0.5;
    if (weights_ != nullptr) {
      #define data_reader(i) (label_[i])
      #define weight_reader(i) (weights_[i])
      WeightedPercentileFun(label_t, data_reader, weight_reader, num_data_, alpha);
      #undef data_reader
      #undef weight_reader
    } else {
      #define data_reader(i) (label_[i])
      PercentileFun(label_t, data_reader, num_data_, alpha);
      #undef data_reader
    }
217
218
  }

219
220
221
222
223
224
225
226
227
228
229
230
231
232
233
234
235
236
237
238
239
240
241
242
243
244
245
246
247
248
249
250
  bool IsRenewTreeOutput() const override { return true; }

  double RenewTreeOutput(double, const double* pred, 
                         const data_size_t* index_mapper,
                         const data_size_t* bagging_mapper,
                         data_size_t num_data_in_leaf) const override {
    const double alpha = 0.5;
    if (weights_ == nullptr) {
      if (bagging_mapper == nullptr) {
        #define data_reader(i) (label_[index_mapper[i]] - pred[index_mapper[i]])
        PercentileFun(double, data_reader, num_data_in_leaf, alpha);
        #undef data_reader
      } else {
        #define data_reader(i) (label_[bagging_mapper[index_mapper[i]]] - pred[bagging_mapper[index_mapper[i]]])
        PercentileFun(double, data_reader, num_data_in_leaf, alpha);
        #undef data_reader
      }
    } else {
      if (bagging_mapper == nullptr) {
        #define data_reader(i) (label_[index_mapper[i]] - pred[index_mapper[i]])
        #define weight_reader(i) (weights_[index_mapper[i]])
        WeightedPercentileFun(double, data_reader, weight_reader, num_data_in_leaf, alpha);
        #undef data_reader
        #undef weight_reader
      } else {
        #define data_reader(i) (label_[bagging_mapper[index_mapper[i]]] - pred[bagging_mapper[index_mapper[i]]])
        #define weight_reader(i) (weights_[bagging_mapper[index_mapper[i]]])
        WeightedPercentileFun(double, data_reader, weight_reader, num_data_in_leaf, alpha);
        #undef data_reader
        #undef weight_reader
      }
    }
251
252
  }

253
254
255
  const char* GetName() const override {
    return "regression_l1";
  }
256
257
};

Guolin Ke's avatar
Guolin Ke committed
258
259
260
/*!
* \brief Huber regression loss
*/
261
class RegressionHuberLoss: public RegressionL2loss {
Tsukasa OMOTO's avatar
Tsukasa OMOTO committed
262
public:
Guolin Ke's avatar
Guolin Ke committed
263
  explicit RegressionHuberLoss(const Config& config): RegressionL2loss(config) {
264
    alpha_ = static_cast<double>(config.alpha);
Guolin Ke's avatar
Guolin Ke committed
265
266
267
268
    if (sqrt_) {
      Log::Warning("Cannot use sqrt transform in %s Regression, will auto disable it", GetName());
      sqrt_ = false;
    }
Tsukasa OMOTO's avatar
Tsukasa OMOTO committed
269
270
  }

271
  explicit RegressionHuberLoss(const std::vector<std::string>& strs): RegressionL2loss(strs) {
Guolin Ke's avatar
Guolin Ke committed
272
273
274
275
    if (sqrt_) {
      Log::Warning("Cannot use sqrt transform in %s Regression, will auto disable it", GetName());
      sqrt_ = false;
    }
276
277
  }

Tsukasa OMOTO's avatar
Tsukasa OMOTO committed
278
  ~RegressionHuberLoss() {
Tsukasa OMOTO's avatar
Tsukasa OMOTO committed
279
280
  }

281
282
  void GetGradients(const double* score, score_t* gradients,
                    score_t* hessians) const override {
Tsukasa OMOTO's avatar
Tsukasa OMOTO committed
283
    if (weights_ == nullptr) {
284
      #pragma omp parallel for schedule(static)
Tsukasa OMOTO's avatar
Tsukasa OMOTO committed
285
      for (data_size_t i = 0; i < num_data_; ++i) {
286
        const double diff = score[i] - label_[i];
287
        if (std::abs(diff) <= alpha_) {
288
          gradients[i] = static_cast<score_t>(diff);
Tsukasa OMOTO's avatar
Tsukasa OMOTO committed
289
        } else {
290
          gradients[i] = static_cast<score_t>(Common::Sign(diff) * alpha_);
Tsukasa OMOTO's avatar
Tsukasa OMOTO committed
291
        }
292
        hessians[i] = 1.0f;
Tsukasa OMOTO's avatar
Tsukasa OMOTO committed
293
294
      }
    } else {
295
      #pragma omp parallel for schedule(static)
Tsukasa OMOTO's avatar
Tsukasa OMOTO committed
296
      for (data_size_t i = 0; i < num_data_; ++i) {
297
        const double diff = score[i] - label_[i];
298
        if (std::abs(diff) <= alpha_) {
299
          gradients[i] = static_cast<score_t>(diff * weights_[i]);
Tsukasa OMOTO's avatar
Tsukasa OMOTO committed
300
        } else {
301
          gradients[i] = static_cast<score_t>(Common::Sign(diff) * weights_[i] * alpha_);
Tsukasa OMOTO's avatar
Tsukasa OMOTO committed
302
        }
303
        hessians[i] = static_cast<score_t>(weights_[i]);
Tsukasa OMOTO's avatar
Tsukasa OMOTO committed
304
305
306
307
308
309
310
311
      }
    }
  }

  const char* GetName() const override {
    return "huber";
  }

312
313
  bool IsConstantHessian() const override {
    return false;
314
315
  }

Tsukasa OMOTO's avatar
Tsukasa OMOTO committed
316
317
private:
  /*! \brief delta for Huber loss */
318
  double alpha_;
Tsukasa OMOTO's avatar
Tsukasa OMOTO committed
319
320
};

Tsukasa OMOTO's avatar
Tsukasa OMOTO committed
321
322

// http://research.microsoft.com/en-us/um/people/zhang/INRIA/Publis/Tutorial-Estim/node24.html
323
class RegressionFairLoss: public RegressionL2loss {
Tsukasa OMOTO's avatar
Tsukasa OMOTO committed
324
public:
Guolin Ke's avatar
Guolin Ke committed
325
  explicit RegressionFairLoss(const Config& config): RegressionL2loss(config) {
326
    c_ = static_cast<double>(config.fair_c);
Tsukasa OMOTO's avatar
Tsukasa OMOTO committed
327
328
  }

329
  explicit RegressionFairLoss(const std::vector<std::string>& strs): RegressionL2loss(strs) {
330
331
332

  }

Tsukasa OMOTO's avatar
Tsukasa OMOTO committed
333
334
  ~RegressionFairLoss() {}

335
336
  void GetGradients(const double* score, score_t* gradients,
                    score_t* hessians) const override {
Tsukasa OMOTO's avatar
Tsukasa OMOTO committed
337
    if (weights_ == nullptr) {
338
      #pragma omp parallel for schedule(static)
Tsukasa OMOTO's avatar
Tsukasa OMOTO committed
339
      for (data_size_t i = 0; i < num_data_; ++i) {
340
        const double x = score[i] - label_[i];
341
342
        gradients[i] = static_cast<score_t>(c_ * x / (std::fabs(x) + c_));
        hessians[i] = static_cast<score_t>(c_ * c_ / ((std::fabs(x) + c_) * (std::fabs(x) + c_)));
Tsukasa OMOTO's avatar
Tsukasa OMOTO committed
343
344
      }
    } else {
345
      #pragma omp parallel for schedule(static)
Tsukasa OMOTO's avatar
Tsukasa OMOTO committed
346
      for (data_size_t i = 0; i < num_data_; ++i) {
347
        const double x = score[i] - label_[i];
348
349
        gradients[i] = static_cast<score_t>(c_ * x / (std::fabs(x) + c_) * weights_[i]);
        hessians[i] = static_cast<score_t>(c_ * c_ / ((std::fabs(x) + c_) * (std::fabs(x) + c_)) * weights_[i]);
Tsukasa OMOTO's avatar
Tsukasa OMOTO committed
350
351
352
353
354
355
356
357
      }
    }
  }

  const char* GetName() const override {
    return "fair";
  }

358
359
  bool IsConstantHessian() const override {
    return false;
360
361
  }

Tsukasa OMOTO's avatar
Tsukasa OMOTO committed
362
363
private:
  /*! \brief c for Fair loss */
364
  double c_;
Tsukasa OMOTO's avatar
Tsukasa OMOTO committed
365
366
};

367
368
369
370

/*!
* \brief Objective function for Poisson regression
*/
371
class RegressionPoissonLoss: public RegressionL2loss {
372
public:
Guolin Ke's avatar
Guolin Ke committed
373
  explicit RegressionPoissonLoss(const Config& config): RegressionL2loss(config) {
374
    max_delta_step_ = static_cast<double>(config.poisson_max_delta_step);
375
    if (sqrt_) {
376
      Log::Warning("Cannot use sqrt transform in %s Regression, will auto disable it", GetName());
377
378
      sqrt_ = false;
    }
379
380
  }

381
  explicit RegressionPoissonLoss(const std::vector<std::string>& strs): RegressionL2loss(strs) {
382
383
384

  }

385
386
387
  ~RegressionPoissonLoss() {}

  void Init(const Metadata& metadata, data_size_t num_data) override {
388
    if (sqrt_) {
389
      Log::Warning("Cannot use sqrt transform in %s Regression, will auto disable it", GetName());
390
391
      sqrt_ = false;
    }
392
    RegressionL2loss::Init(metadata, num_data);
393
    // Safety check of labels
394
    label_t miny;
395
    double sumy;
396
    Common::ObtainMinMaxSum(label_, num_data_, &miny, (label_t*)nullptr, &sumy);
397
    if (miny < 0.0f) {
398
      Log::Fatal("[%s]: at least one target label is negative", GetName());
399
400
    }
    if (sumy == 0.0f) {
401
      Log::Fatal("[%s]: sum of labels is zero", GetName());
402
    }
403
404
  }

405
406
407
408
409
410
411
412
413
  /* Parametrize with unbounded internal score "f"; then
   *  loss = exp(f) - label * f
   *  grad = exp(f) - label
   *  hess = exp(f)
   *
   * And the output is exp(f); so the associated metric get s=exp(f)
   * so that its loss = s - label * log(s); a little awkward maybe.
   *
   */
414
415
  void GetGradients(const double* score, score_t* gradients,
                    score_t* hessians) const override {
416
    if (weights_ == nullptr) {
417
      #pragma omp parallel for schedule(static)
418
      for (data_size_t i = 0; i < num_data_; ++i) {
419
420
        gradients[i] = static_cast<score_t>(std::exp(score[i]) - label_[i]);
        hessians[i] = static_cast<score_t>(std::exp(score[i] + max_delta_step_));
421
422
      }
    } else {
423
      #pragma omp parallel for schedule(static)
424
      for (data_size_t i = 0; i < num_data_; ++i) {
425
426
        gradients[i] = static_cast<score_t>((std::exp(score[i]) - label_[i]) * weights_[i]);
        hessians[i] = static_cast<score_t>(std::exp(score[i] + max_delta_step_) * weights_[i]);
427
428
429
430
      }
    }
  }

431
432
433
434
  void ConvertOutput(const double* input, double* output) const override {
    output[0] = std::exp(input[0]);
  }

435
436
437
438
  const char* GetName() const override {
    return "poisson";
  }

439
440
  double BoostFromScore(int) const override {
    return std::log(RegressionL2loss::BoostFromScore(0));
441
442
  }

443
444
445
446
  bool IsConstantHessian() const override {
    return false;
  }

447
448
449
450
451
private:
  /*! \brief used to safeguard optimization */
  double max_delta_step_;
};

452
453
class RegressionQuantileloss : public RegressionL2loss {
public:
Guolin Ke's avatar
Guolin Ke committed
454
  explicit RegressionQuantileloss(const Config& config): RegressionL2loss(config) {
455
    alpha_ = static_cast<score_t>(config.alpha);
Guolin Ke's avatar
Guolin Ke committed
456
    CHECK(alpha_ > 0 && alpha_ < 1);
457
458
459
460
461
462
463
464
465
466
467
468
469
470
471
472
473
474
475
476
477
478
479
480
481
482
  }

  explicit RegressionQuantileloss(const std::vector<std::string>& strs): RegressionL2loss(strs) {

  }

  ~RegressionQuantileloss() {}

  void GetGradients(const double* score, score_t* gradients,
                    score_t* hessians) const override {
    if (weights_ == nullptr) {
      #pragma omp parallel for schedule(static)
      for (data_size_t i = 0; i < num_data_; ++i) {
        score_t delta = static_cast<score_t>(score[i] - label_[i]);
        if (delta >= 0) {
          gradients[i] = (1.0f - alpha_);
        } else {
          gradients[i] = -alpha_;
        }
        hessians[i] = 1.0f;
      }
    } else {
      #pragma omp parallel for schedule(static)
      for (data_size_t i = 0; i < num_data_; ++i) {
        score_t delta = static_cast<score_t>(score[i] - label_[i]);
        if (delta >= 0) {
483
          gradients[i] = static_cast<score_t>((1.0f - alpha_) * weights_[i]);
484
        } else {
485
          gradients[i] = static_cast<score_t>(-alpha_ * weights_[i]);
486
        }
487
        hessians[i] = static_cast<score_t>(weights_[i]);
488
489
490
491
492
493
494
495
      }
    }
  }

  const char* GetName() const override {
    return "quantile";
  }

496
  double BoostFromScore(int) const override {
497
498
499
500
501
502
503
504
505
506
507
508
509
510
511
512
513
514
515
516
517
518
519
520
521
522
523
524
525
526
527
528
529
530
531
532
533
534
535
536
537
538
539
540
541
542
    if (weights_ != nullptr) {
      #define data_reader(i) (label_[i])
      #define weight_reader(i) (weights_[i])
      WeightedPercentileFun(label_t, data_reader, weight_reader, num_data_, alpha_);
      #undef data_reader
      #undef weight_reader
    } else {
      #define data_reader(i) (label_[i])
      PercentileFun(label_t, data_reader, num_data_, alpha_);
      #undef data_reader
    }
  }

  bool IsRenewTreeOutput() const override { return true; }

  double RenewTreeOutput(double, const double* pred,
                         const data_size_t* index_mapper,
                         const data_size_t* bagging_mapper,
                         data_size_t num_data_in_leaf) const override {
    if (weights_ == nullptr) {
      if (bagging_mapper == nullptr) {
        #define data_reader(i) (label_[index_mapper[i]] - pred[index_mapper[i]])
        PercentileFun(double, data_reader, num_data_in_leaf, alpha_);
        #undef data_reader
      } else {
        #define data_reader(i) (label_[bagging_mapper[index_mapper[i]]] - pred[bagging_mapper[index_mapper[i]]])
        PercentileFun(double, data_reader, num_data_in_leaf, alpha_);
        #undef data_reader
      }
    } else {
      if (bagging_mapper == nullptr) {
        #define data_reader(i) (label_[index_mapper[i]] - pred[index_mapper[i]])
        #define weight_reader(i) (weights_[index_mapper[i]])
        WeightedPercentileFun(double, data_reader, weight_reader, num_data_in_leaf, alpha_);
        #undef data_reader
        #undef weight_reader
      } else {
        #define data_reader(i) (label_[bagging_mapper[index_mapper[i]]] - pred[bagging_mapper[index_mapper[i]]])
        #define weight_reader(i) (weights_[bagging_mapper[index_mapper[i]]])
        WeightedPercentileFun(double, data_reader, weight_reader, num_data_in_leaf, alpha_);
        #undef data_reader
        #undef weight_reader
      }
    }
  }

543
544
545
546
private:
  score_t alpha_;
};

547
548
549
550
551

/*!
* \brief Mape Regression Loss
*/
class RegressionMAPELOSS : public RegressionL1loss {
552
public:
Guolin Ke's avatar
Guolin Ke committed
553
  explicit RegressionMAPELOSS(const Config& config) : RegressionL1loss(config) {
554
555
  }

556
  explicit RegressionMAPELOSS(const std::vector<std::string>& strs) : RegressionL1loss(strs) {
557
558
559

  }

560
561
562
563
564
565
  ~RegressionMAPELOSS() {}

  void Init(const Metadata& metadata, data_size_t num_data) override {
    RegressionL2loss::Init(metadata, num_data);
    for (data_size_t i = 0; i < num_data_; ++i) {
      if (std::fabs(label_[i]) < 1) {
566
        Log::Warning("Met 'abs(label) < 1', will convert them to '1' in MAPE objective and metric");
567
568
569
570
571
572
573
574
575
576
577
578
579
580
581
582
        break;
      }
    }
    label_weight_.resize(num_data);
    if (weights_ == nullptr) {
      #pragma omp parallel for schedule(static)
      for (data_size_t i = 0; i < num_data_; ++i) {
        label_weight_[i] = 1.0f / std::max(1.0f, std::fabs(label_[i]));
      }
    } else {
      #pragma omp parallel for schedule(static)
      for (data_size_t i = 0; i < num_data_; ++i) {
        label_weight_[i] = 1.0f / std::max(1.0f, std::fabs(label_[i])) * weights_[i];
      }
    }
  }
583
584
585
586
587
588

  void GetGradients(const double* score, score_t* gradients,
                    score_t* hessians) const override {
    if (weights_ == nullptr) {
      #pragma omp parallel for schedule(static)
      for (data_size_t i = 0; i < num_data_; ++i) {
589
590
591
        const double diff = score[i] - label_[i];
        gradients[i] = static_cast<score_t>(Common::Sign(diff) * label_weight_[i]);
        hessians[i] = 1.0f;
592
593
594
595
      }
    } else {
      #pragma omp parallel for schedule(static)
      for (data_size_t i = 0; i < num_data_; ++i) {
596
597
598
        const double diff = score[i] - label_[i];
        gradients[i] = static_cast<score_t>(Common::Sign(diff) * label_weight_[i]);
        hessians[i] = weights_[i];
599
600
601
602
      }
    }
  }

603
  double BoostFromScore(int) const override {
604
605
606
607
608
609
610
611
612
613
614
615
616
617
618
619
620
621
622
623
624
625
626
627
628
629
630
631
    const double alpha = 0.5;
    #define data_reader(i) (label_[i])
    #define weight_reader(i) (label_weight_[i])
    WeightedPercentileFun(label_t, data_reader, weight_reader, num_data_, alpha);
    #undef data_reader
    #undef weight_reader
  }

  bool IsRenewTreeOutput() const override { return true; }

  double RenewTreeOutput(double, const double* pred,
                         const data_size_t* index_mapper,
                         const data_size_t* bagging_mapper,
                         data_size_t num_data_in_leaf) const override {
    const double alpha = 0.5;
    if (bagging_mapper == nullptr) {
      #define data_reader(i) (label_[index_mapper[i]] - pred[index_mapper[i]])
      #define weight_reader(i) (label_weight_[index_mapper[i]])
      WeightedPercentileFun(double, data_reader, weight_reader, num_data_in_leaf, alpha);
      #undef data_reader
      #undef weight_reader
    } else {
      #define data_reader(i) (label_[bagging_mapper[index_mapper[i]]] - pred[bagging_mapper[index_mapper[i]]])
      #define weight_reader(i) (label_weight_[bagging_mapper[index_mapper[i]]])
      WeightedPercentileFun(double, data_reader, weight_reader, num_data_in_leaf, alpha);
      #undef data_reader
      #undef weight_reader
    }
632
633
634
  }

  const char* GetName() const override {
635
636
637
638
639
    return "mape";
  }

  bool IsConstantHessian() const override {
    return true;
640
641
642
  }

private:
643
644
  std::vector<label_t> label_weight_;

645
646
};

Guolin Ke's avatar
Guolin Ke committed
647
648
649
650
651
652
653


/*!
* \brief Objective function for Gamma regression
*/
class RegressionGammaLoss : public RegressionPoissonLoss {
public:
Guolin Ke's avatar
Guolin Ke committed
654
  explicit RegressionGammaLoss(const Config& config) : RegressionPoissonLoss(config) {
Guolin Ke's avatar
Guolin Ke committed
655
656
657
658
659
660
661
662
663
664
665
666
667
668
669
670
671
672
673
674
675
676
677
678
679
680
681
682
683
684
685
686
687
688
689
690
  }

  explicit RegressionGammaLoss(const std::vector<std::string>& strs) : RegressionPoissonLoss(strs) {

  }

  ~RegressionGammaLoss() {}

  void GetGradients(const double* score, score_t* gradients,
                    score_t* hessians) const override {
    if (weights_ == nullptr) {
      #pragma omp parallel for schedule(static)
      for (data_size_t i = 0; i < num_data_; ++i) {
        gradients[i] = static_cast<score_t>(1.0 - label_[i] / std::exp(score[i]));
        hessians[i] = static_cast<score_t>(label_[i] / std::exp(score[i]));
      }
    } else {
      #pragma omp parallel for schedule(static)
      for (data_size_t i = 0; i < num_data_; ++i) {
        gradients[i] = static_cast<score_t>(1.0 - label_[i] / std::exp(score[i]) * weights_[i]);
        hessians[i] = static_cast<score_t>(label_[i] / std::exp(score[i]) * weights_[i]);
      }
    }
  }

  const char* GetName() const override {
    return "gamma";
  }
 
};

/*!
* \brief Objective function for Tweedie regression
*/
class RegressionTweedieLoss: public RegressionPoissonLoss {
public:
Guolin Ke's avatar
Guolin Ke committed
691
  explicit RegressionTweedieLoss(const Config& config) : RegressionPoissonLoss(config) {
Guolin Ke's avatar
Guolin Ke committed
692
693
694
695
696
697
698
699
700
701
702
703
704
705
706
707
708
709
710
711
712
713
714
715
716
717
718
719
720
721
722
723
724
725
726
    rho_ = config.tweedie_variance_power;
  }

  explicit RegressionTweedieLoss(const std::vector<std::string>& strs) : RegressionPoissonLoss(strs) {

  }

  ~RegressionTweedieLoss() {}

  void GetGradients(const double* score, score_t* gradients,
                    score_t* hessians) const override {
    if (weights_ == nullptr) {
      #pragma omp parallel for schedule(static)
      for (data_size_t i = 0; i < num_data_; ++i) {
        gradients[i] = static_cast<score_t>(-label_[i] * std::exp((1 - rho_) * score[i]) + std::exp((2 - rho_) * score[i]));
        hessians[i] = static_cast<score_t>(-label_[i] * (1 - rho_) * std::exp((1 - rho_) * score[i]) + 
          (2 - rho_) * std::exp((2 - rho_) * score[i]));
      }
    } else {
      #pragma omp parallel for schedule(static)
      for (data_size_t i = 0; i < num_data_; ++i) {
        gradients[i] = static_cast<score_t>((-label_[i] * std::exp((1 - rho_) * score[i]) + std::exp((2 - rho_) * score[i])) * weights_[i]);
        hessians[i] = static_cast<score_t>((-label_[i] * (1 - rho_) * std::exp((1 - rho_) * score[i]) +
          (2 - rho_) * std::exp((2 - rho_) * score[i])) * weights_[i]);
      }
    }
  }

  const char* GetName() const override {
    return "tweedie";
  }
private:
  double rho_;
};

727
728
729
#undef PercentileFun
#undef WeightedPercentileFun

Guolin Ke's avatar
Guolin Ke committed
730
}  // namespace LightGBM
Guolin Ke's avatar
Guolin Ke committed
731
#endif   // LightGBM_OBJECTIVE_REGRESSION_OBJECTIVE_HPP_