| | --- |
| | license: cc-by-4.0 |
| | --- |
| | |
| | # Machine Learning for Two-Sample Testing under Right-Censored Data: A Simulation Study |
| | - [Petr PHILONENKO](https://orcid.org/0000-0002-6295-4470), Ph.D. in Computer Science; |
| | - [Sergey POSTOVALOV](https://orcid.org/0000-0003-3718-1936), D.Sc. in Computer Science. |
| |
|
| | # About |
| | This dataset is a supplement to the [github repositiry](https://github.com/pfilonenko/ML_for_TwoSampleTesting) and paper addressed to solve the two-sample problem under right-censored observations using Machine Learning. |
| | The problem statement can be formualted as H0: S1(t)=S2(t) versus H: S1(t)≠S_2(t) where S1(t) and S2(t) are survival functions of samples X1 and X2. |
| | |
| | This dataset contains the synthetic data simulated by the Monte Carlo method and Inverse Transform Sampling. |
| | |
| | # Repository |
| | |
| | The files of this dataset have following structure: |
| | ~~~ |
| | data |
| | ├── 1_raw |
| | │ └── two_sample_problem_dataset.tsv.gz |
| | ├── 2_samples |
| | │ ├── sample_train.tsv.gz |
| | │ └── sample_simulation.tsv.gz |
| | └── 3_dataset_with_ML_pred |
| | └── dataset_with_ML_pred.tsv.gz |
| | ~~~ |
| | |
| | - **two_sample_problem_dataset.tsv.gz** is a raw simulated data. In the [github repositiry](https://github.com/pfilonenko/ML_for_TwoSampleTesting), this file must be located in the _ML_for_TwoSampleTesting/proposed_ml_for_two_sample_testing/data/1_raw/_ |
| | - **sample_train.tsv.gz** and **sample_simulation.tsv.gz** are train and test samples splited from the **two_sample_problem_dataset.tsv.gz**. In the [github repositiry](https://github.com/pfilonenko/ML_for_TwoSampleTesting), these files must be located in the _ML_for_TwoSampleTesting/proposed_ml_for_two_sample_testing/data/2_samples/_ |
| | - **dataset_with_ML_pred.tsv.gz** is the test sample supplemented by the predictions of the proposed ML-methods. In the [github repositiry](https://github.com/pfilonenko/ML_for_TwoSampleTesting), this file must be located in the _ML_for_TwoSampleTesting/proposed_ml_for_two_sample_testing/data/3_dataset_with_ML_pred/_ |
| | |
| | # Dataset & Samples |
| | In these files there are following fields: |
| | |
| | 1) PARAMETERS OF SAMPLE SIMULATION |
| | - **sample** is a type of the sample (train, val, test). This field is used to split dataset into train-validate-test samples for ML-model training; |
| | - **H0_H1** is a true hypothesis: if **H0**, then test statistics were simulated under S1(t)=S2(t); if **H1**, then test statistics were simulated under S1(t)≠S2(t); |
| | - **Hi** is an alternative hypothesis (H01-H09, H11-H19, or H21-H29) for S1(t) and S2(t). Detailed description of these alternatives can be found in the paper; |
| | - **n1** is the size of the sample 1; |
| | - **n2** is the size of the sample 2; |
| | - **perc** is a set (expected) censoring rate for the samples 1 and 2; |
| | - **real_perc1** is an actual censoring rate of sample 1; |
| | - **real_perc2** is an actual censoring rate of sample 2; |
| | |
| | 2) STATISTICS OF CLASSICAL TWO-SAMPLE TESTS |
| | - **Peto_test** is a statistic of the Peto and Peto’s Generalized Wilcoxon test (which is computed on two samples under parameters described above); |
| | - **Gehan_test** is a statistic of the Gehan’s Generalized Wilcoxon test; |
| | - **logrank_test** is a statistic of the logrank test; |
| | - **CoxMantel_test** is a statistic of the Cox-Mantel test; |
| | - **BN_GPH_test** is a statistic of the Bagdonavičius-Nikulin test (Generalized PH model); |
| | - **BN_MCE_test** is a statistic of the Bagdonavičius-Nikulin test (Multiple Crossing-Effect model); |
| | - **BN_SCE_test** is a statistic of the Bagdonavičius-Nikulin test (Single Crossing-Effect model); |
| | - **Q_test** is a statistic of the Q-test; |
| | - **MAX_Value_test** is a statistic of the Maximum Value test; |
| | - **MIN3_test** is a statistic of the MIN3 test; |
| | - **WLg_logrank_test** is a statistic of the Weighted Logrank test (weighted function: 'logrank'); |
| | - **WLg_TaroneWare_test** is a statistic of the Weighted Logrank test (weighted function: 'Tarone-Ware'); |
| | - **WLg_Breslow_test** is a statistic of the Weighted Logrank test (weighted function: 'Breslow'); |
| | - **WLg_PetoPrentice_test** is a statistic of the Weighted Logrank test (weighted function: 'Peto-Prentice'); |
| | - **WLg_Prentice_test** is a statistic of the Weighted Logrank test (weighted function: 'Prentice'); |
| | - **WKM_test** is a statistic of the Weighted Kaplan-Meier test; |
| |
|
| | 3) STATISTICS OF THE PROPOSED ML-METHODS FOR TWO-SAMPLE PROBLEM |
| | - **CatBoost_test** is a statistic of the proposed ML-method based on the CatBoost framework; |
| | - **XGBoost_test** is a statistic of the proposed ML-method based on the XGBoost framework; |
| | - **LightAutoML_test** is a statistic of the proposed ML-method based on the LightAutoML (LAMA) framework; |
| | - **SKLEARN_RF_test** is a statistic of the proposed ML-method based on Random Forest (implemented in sklearn); |
| | - **SKLEARN_LogReg_test** is a statistic of the proposed ML-method based on Logistic Regression (implemented in sklearn); |
| | - **SKLEARN_GB_test** is a statistic of the proposed ML-method based on Gradient Boosting Machine (implemented in sklearn). |
| | |
| | # Dataset Simulation |
| | |
| | For this dataset, the full source code (C++) is available [here](https://github.com/pfilonenko/ML_for_TwoSampleTesting/tree/main/dataset/simulation). |
| | It makes possible to reproduce and extend the simulation by the Monte Carlo method. Here, we present the file main.cpp only. |
| | |
| | ```C++ |
| | #include"simulation_for_machine_learning.h" |
| | |
| | // Select two-sample tests |
| | vector<HomogeneityTest*> AllTests() |
| | { |
| | vector<HomogeneityTest*> D; |
| | |
| | // ---- Classical Two-Sample tests for Uncensored Case ---- |
| | //D.push_back( new HT_AndersonDarlingPetitt ); |
| | //D.push_back( new HT_KolmogorovSmirnovTest ); |
| | //D.push_back( new HT_LehmannRosenblatt ); |
| | |
| | // ---- Two-Sample tests for Right-Censored Case ---- |
| | D.push_back( new HT_Peto ); |
| | D.push_back( new HT_Gehan ); |
| | D.push_back( new HT_Logrank ); |
| | |
| | D.push_back( new HT_BagdonaviciusNikulinGeneralizedCox ); |
| | D.push_back( new HT_BagdonaviciusNikulinMultiple ); |
| | D.push_back( new HT_BagdonaviciusNikulinSingle ); |
| | |
| | D.push_back( new HT_QTest ); //based on the Kaplan-Meier estimator |
| | D.push_back( new HT_MAX ); //Maximum Value test |
| | D.push_back( new HT_SynthesisTest ); //MIN3 test |
| | |
| | D.push_back( new HT_WeightedLogrank("logrank") ); |
| | D.push_back( new HT_WeightedLogrank("Tarone–Ware") ); |
| | D.push_back( new HT_WeightedLogrank("Breslow") ); |
| | D.push_back( new HT_WeightedLogrank("Peto–Prentice") ); |
| | D.push_back( new HT_WeightedLogrank("Prentice") ); |
| | |
| | D.push_back( new HT_WeightedKaplanMeyer ); |
| | |
| | return D; |
| | } |
| | |
| | // Example of two-sample testing using this code |
| | void EXAMPLE_1(vector<HomogeneityTest*> &D) |
| | { |
| | // load the samples |
| | Sample T1(".//samples//1Chemotherapy.txt"); |
| | Sample T2(".//samples//2Radiotherapy.txt"); |
| | |
| | // two-sample testing through selected tests |
| | for(int j=0; j<D.size(); j++) |
| | { |
| | char test_name[512]; |
| | D[j]->TitleTest(test_name); |
| | |
| | |
| | double Sn = D[j]->CalculateStatistic(T1, T2); |
| | double pvalue = D[j]->p_value(T1, T2, 27000); // 27k in accodring to the Kolmogorov's theorem => simulation error MAX||G(S|H0)-Gn(S|H0)|| <= 0.01 |
| | |
| | printf("%s\n", &test_name); |
| | printf("\t Sn: %lf\n", Sn); |
| | printf("\t pv: %lf\n", pvalue); |
| | printf("--------------------------------"); |
| | } |
| | } |
| | |
| | // Example of the dataset simulation for the proposed ML-method |
| | void EXAMPLE_2(vector<HomogeneityTest*> &D) |
| | { |
| | // Run dataset (train or test sample) simulation (results in ".//to_machine_learning_2024//") |
| | simulation_for_machine_learning sm(D); |
| | } |
| | |
| | // init point |
| | int main() |
| | { |
| | // Set the number of threads |
| | int k = omp_get_max_threads() - 1; |
| | omp_set_num_threads( k ); |
| | |
| | // Select two-sample tests |
| | auto D = AllTests(); |
| | |
| | // Example of two-sample testing using this code |
| | EXAMPLE_1(D); |
| | |
| | // Example of the dataset simulation for the proposed ML-method |
| | EXAMPLE_2(D); |
| | |
| | // Freeing memory |
| | ClearMemory(D); |
| | |
| | printf("The mission is completed.\n"); |
| | return 0; |
| | } |
| | ``` |
| | |
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