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Survival Analysis

Survival Analysis is a branch of statistics focused on the study of time-to-event data, usually called survival times. This type of data appears in a wide range of applications such as failure times in mechanical systems, death times of patients in a clinical trial or duration of unemployment in a population. One of the main objectives of Survival Analysis is the estimation of the so-called survival function and the hazard function. If a random variable has density function $f$ and cumulative distribution function $F$, then its survival function $S$ is $1-F$, and its hazard $λ$ is $f/S$.

Source: Gaussian Processes for Survival Analysis

Image: Kvamme et al.

Papers

Showing 231240 of 472 papers

TitleStatusHype
SurvAttack: Black-Box Attack On Survival Models through Ontology-Informed EHR Perturbation0
SurvCORN: Survival Analysis with Conditional Ordinal Ranking Neural Network0
Survival Analysis of Young Triple-Negative Breast Cancer Patients0
Survival Analysis on Structured Data using Deep Reinforcement Learning0
Survival Analysis Revisited: Understanding and Unifying Poisson, Exponential, and Cox Models in Fall Risk Analysis0
Survival analysis, the infinite Gaussian mixture model, FDG-PET and non-imaging data in the prediction of progression from mild cognitive impairment0
Survival and Neural Models for Private Equity Exit Prediction0
Survival modeling using deep learning, machine learning and statistical methods: A comparative analysis for predicting mortality after hospital admission0
Survival Models: Proper Scoring Rule and Stochastic Optimization with Competing Risks0
Survival-oriented embeddings for improving accessibility to complex data structures0
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