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Bibliographic Details
Main Authors: Konstantinov, Andrei V., Kirpichenko, Stanislav R., Utkin, Lev V.
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2402.12331
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author Konstantinov, Andrei V.
Kirpichenko, Stanislav R.
Utkin, Lev V.
author_facet Konstantinov, Andrei V.
Kirpichenko, Stanislav R.
Utkin, Lev V.
contents A new model for generating survival trajectories and data based on applying an autoencoder of a specific structure is proposed. It solves three tasks. First, it provides predictions in the form of the expected event time and the survival function for a new generated feature vector on the basis of the Beran estimator. Second, the model generates additional data based on a given training set that would supplement the original dataset. Third, the most important, it generates a prototype time-dependent trajectory for an object, which characterizes how features of the object could be changed to achieve a different time to an event. The trajectory can be viewed as a type of the counterfactual explanation. The proposed model is robust during training and inference due to a specific weighting scheme incorporating into the variational autoencoder. The model also determines the censored indicators of new generated data by solving a classification task. The paper demonstrates the efficiency and properties of the proposed model using numerical experiments on synthetic and real datasets. The code of the algorithm implementing the proposed model is publicly available.
format Preprint
id arxiv_https___arxiv_org_abs_2402_12331
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Generating Survival Interpretable Trajectories and Data
Konstantinov, Andrei V.
Kirpichenko, Stanislav R.
Utkin, Lev V.
Machine Learning
Artificial Intelligence
A new model for generating survival trajectories and data based on applying an autoencoder of a specific structure is proposed. It solves three tasks. First, it provides predictions in the form of the expected event time and the survival function for a new generated feature vector on the basis of the Beran estimator. Second, the model generates additional data based on a given training set that would supplement the original dataset. Third, the most important, it generates a prototype time-dependent trajectory for an object, which characterizes how features of the object could be changed to achieve a different time to an event. The trajectory can be viewed as a type of the counterfactual explanation. The proposed model is robust during training and inference due to a specific weighting scheme incorporating into the variational autoencoder. The model also determines the censored indicators of new generated data by solving a classification task. The paper demonstrates the efficiency and properties of the proposed model using numerical experiments on synthetic and real datasets. The code of the algorithm implementing the proposed model is publicly available.
title Generating Survival Interpretable Trajectories and Data
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2402.12331