| | --- |
| | license: cc-by-4.0 |
| | --- |
| | |
| | # Machine Learning for Two-Sample Testing under Right-Censored Data: A Simulation Study |
| | - PETR PHILONENKO, Ph.D. in Computer Science; |
| | - SERGEY POSTOVALOV, 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. |
| | |
| | # Repository |
| | |
| | This dataset contains following files: |
| | |
| | This dataset is a supplement to the github-project published in the . This dataset contains following files: |
| | 1) **two_sample_problem_dataset.tsv.gz** is a raw data. This file must be located in the "ML_for_TwoSampleTesting/proposed_ml_for_two_sample_testing |
| | /data/1_raw/"; |
| | 2) **sample_train.tsv.gz** and **sample_simulation.tsv.gz** are train and test samples splited from the **two_sample_problem_dataset.tsv.gz**. These files must be located in the "ML_for_TwoSampleTesting/proposed_ml_for_two_sample_testing |
| | /data/2_samples/"; |
| | 3) **dataset_with_ML_pred.tsv.gz** is the test sample supplemented by the predictions of the proposed ML-methods. This file must be located in "ML_for_TwoSampleTesting/proposed_ml_for_two_sample_testing |
| | /data/3_dataset_with_ML_pred/". |
| |
|
| | # Dataset & Samples |
| | In these files there are following fields: |
| | - **sample** is a sample type (train, val, test); |
| | - **H0_H1** is a true hypothesis (H0 or H1); |
| | - **Hi** is an alternative hypothesis (H01-H09, H11-H19, or H21-H29); |
| | - **n1** is the size of sample 1; |
| | - **n2** is the size of sample 2; |
| | - **real_perc1** is an actual censoring rate of sample 1; |
| | - **real_perc2** is an actual censoring rate of sample 2; |
| | - **perc** is the set censoring rate for the samples 1 and 2; |
| | - **Peto_test**, **Gehan_test**, **logrank_test**, **CoxMantel_test**, **BN_GPH_test**, **BN_MCE_test**, **BN_SCE_test**, **Q_test**, **MAX_Value_test**, **MIN3_test**, **WLg_logrank_test**, **WLg_TaroneWare_test**, **WLg_Breslow_test**, **WLg_PetoPrentice_test**, **WLg_Prentice_test**, **WKM_test** are test statistics of classical two-sample tests under right-censored data; |
| | - **CatBoost_test**, **XGBoost_test**, **LightAutoML_test**, **SKLEARN_RF_test**, **SKLEARN_LogReg_test**, **SKLEARN_GB_test** are test statistics of the proposed ML-based methods. |