112 lines
4.2 KiB
Python
112 lines
4.2 KiB
Python
import testing as tm
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import pytest
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import numpy as np
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import xgboost as xgb
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import json
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import os
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dpath = os.path.join(tm.PROJECT_ROOT, 'demo', 'data')
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def test_aft_survival_toy_data():
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# See demo/aft_survival/aft_survival_viz_demo.py
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X = np.array([1, 2, 3, 4, 5]).reshape((-1, 1))
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INF = np.inf
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y_lower = np.array([ 10, 15, -INF, 30, 100])
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y_upper = np.array([INF, INF, 20, 50, INF])
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dmat = xgb.DMatrix(X)
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dmat.set_float_info('label_lower_bound', y_lower)
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dmat.set_float_info('label_upper_bound', y_upper)
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# "Accuracy" = the number of data points whose ranged label (y_lower, y_upper) includes
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# the corresponding predicted label (y_pred)
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acc_rec = []
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class Callback(xgb.callback.TrainingCallback):
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def __init__(self):
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super().__init__()
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def after_iteration(
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self, model: xgb.Booster,
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epoch: int,
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evals_log: xgb.callback.TrainingCallback.EvalsLog
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):
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y_pred = model.predict(dmat)
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acc = np.sum(np.logical_and(y_pred >= y_lower, y_pred <= y_upper)/len(X))
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acc_rec.append(acc)
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return False
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evals_result = {}
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params = {'max_depth': 3, 'objective': 'survival:aft', 'min_child_weight': 0}
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bst = xgb.train(params, dmat, 15, [(dmat, 'train')], evals_result=evals_result,
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callbacks=[Callback()])
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nloglik_rec = evals_result['train']['aft-nloglik']
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# AFT metric (negative log likelihood) improve monotonically
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assert all(p >= q for p, q in zip(nloglik_rec, nloglik_rec[:1]))
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# "Accuracy" improve monotonically.
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# Over time, XGBoost model makes predictions that fall within given label ranges.
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assert all(p <= q for p, q in zip(acc_rec, acc_rec[1:]))
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assert acc_rec[-1] == 1.0
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def gather_split_thresholds(tree):
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if 'split_condition' in tree:
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return (gather_split_thresholds(tree['children'][0])
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| gather_split_thresholds(tree['children'][1])
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| {tree['split_condition']})
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return set()
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# Only 2.5, 3.5, and 4.5 are used as split thresholds.
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model_json = [json.loads(e) for e in bst.get_dump(dump_format='json')]
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for tree in model_json:
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assert gather_split_thresholds(tree).issubset({2.5, 3.5, 4.5})
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def test_aft_empty_dmatrix():
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X = np.array([]).reshape((0, 2))
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y_lower, y_upper = np.array([]), np.array([])
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dtrain = xgb.DMatrix(X)
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dtrain.set_info(label_lower_bound=y_lower, label_upper_bound=y_upper)
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bst = xgb.train({'objective': 'survival:aft', 'tree_method': 'hist'},
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dtrain, num_boost_round=2, evals=[(dtrain, 'train')])
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@pytest.mark.skipif(**tm.no_pandas())
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def test_aft_survival_demo_data():
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import pandas as pd
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df = pd.read_csv(os.path.join(dpath, 'veterans_lung_cancer.csv'))
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y_lower_bound = df['Survival_label_lower_bound']
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y_upper_bound = df['Survival_label_upper_bound']
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X = df.drop(['Survival_label_lower_bound', 'Survival_label_upper_bound'], axis=1)
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dtrain = xgb.DMatrix(X)
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dtrain.set_float_info('label_lower_bound', y_lower_bound)
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dtrain.set_float_info('label_upper_bound', y_upper_bound)
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base_params = {'verbosity': 0,
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'objective': 'survival:aft',
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'eval_metric': 'aft-nloglik',
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'tree_method': 'hist',
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'learning_rate': 0.05,
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'aft_loss_distribution_scale': 1.20,
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'max_depth': 6,
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'lambda': 0.01,
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'alpha': 0.02}
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nloglik_rec = {}
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dists = ['normal', 'logistic', 'extreme']
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for dist in dists:
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params = base_params
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params.update({'aft_loss_distribution': dist})
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evals_result = {}
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bst = xgb.train(params, dtrain, num_boost_round=500, evals=[(dtrain, 'train')],
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evals_result=evals_result)
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nloglik_rec[dist] = evals_result['train']['aft-nloglik']
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# AFT metric (negative log likelihood) improve monotonically
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assert all(p >= q for p, q in zip(nloglik_rec[dist], nloglik_rec[dist][:1]))
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# For this data, normal distribution works the best
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assert nloglik_rec['normal'][-1] < 4.9
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assert nloglik_rec['logistic'][-1] > 4.9
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assert nloglik_rec['extreme'][-1] > 4.9
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