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Autores principales: Andrews, Mary, S, Smitha, Kattumannil, Sudheesh K.
Formato: Preprint
Publicado: 2024
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Acceso en línea:https://arxiv.org/abs/2410.00125
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author Andrews, Mary
S, Smitha
Kattumannil, Sudheesh K.
author_facet Andrews, Mary
S, Smitha
Kattumannil, Sudheesh K.
contents In this paper, we develop a relative cumulative residual information measure (RCRI) that aims to quantify the divergence between two survival functions. The dynamic relative cumulative residual information (DRCRI) measure is also introduced. We establish some characterization results under the proportional hazards model assumption. Additionally, we obtained the non-parametric estimators of RCRI and DRCRI measures based on the kernel density type estimator for the survival function. The effectiveness of the estimators are assessed through an extensive Monte Carlo simulation study. We consider data from the third Gaia data release (Gaia DR3) to demonstrate the use of the proposed measure. For this study, we have collected epoch photometry data for the objects Gaia DR3 4111834567779557376 and Gaia DR3 5090605830056251776. The RCRI-based image analysis is conducted using Chest X-ray data from the publicly available dataset.
format Preprint
id arxiv_https___arxiv_org_abs_2410_00125
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle On Relative Cumulative Residual Information Measure and Its Applications
Andrews, Mary
S, Smitha
Kattumannil, Sudheesh K.
Methodology
In this paper, we develop a relative cumulative residual information measure (RCRI) that aims to quantify the divergence between two survival functions. The dynamic relative cumulative residual information (DRCRI) measure is also introduced. We establish some characterization results under the proportional hazards model assumption. Additionally, we obtained the non-parametric estimators of RCRI and DRCRI measures based on the kernel density type estimator for the survival function. The effectiveness of the estimators are assessed through an extensive Monte Carlo simulation study. We consider data from the third Gaia data release (Gaia DR3) to demonstrate the use of the proposed measure. For this study, we have collected epoch photometry data for the objects Gaia DR3 4111834567779557376 and Gaia DR3 5090605830056251776. The RCRI-based image analysis is conducted using Chest X-ray data from the publicly available dataset.
title On Relative Cumulative Residual Information Measure and Its Applications
topic Methodology
url https://arxiv.org/abs/2410.00125