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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 376400 of 472 papers

TitleStatusHype
A Causally Formulated Hazard Ratio Estimation through Backdoor Adjustment on Structural Causal Model0
Federated Survival Analysis with Discrete-Time Cox Models0
Targeting Learning: Robust Statistics for Reproducible Research0
Secure and Differentially Private Bayesian Learning on Distributed Data0
SurvLIME-Inf: A simplified modification of SurvLIME for explanation of machine learning survival models0
Survival Analysis Using a 5-Step Stratified Testing and Amalgamation Routine in Randomized Clinical TrialsCode0
An RNN-Survival Model to Decide Email Send Times0
Combining multi-site Magnetic Resonance Imaging with machine learning predicts survival in paediatric brain tumours0
Variational Learning of Individual Survival DistributionsCode0
Novel Radiomic Feature for Survival Prediction of Lung Cancer Patients using Low-Dose CBCT Images0
Estimation of conditional mixture Weibull distribution with right-censored data using neural network for time-to-event analysis0
Uncovering life-course patterns with causal discovery and survival analysis0
Multi-Task Deep Learning: Simultaneous Segmentation and Survival Analysis via Cox Proportional Hazards Regression0
An evaluation of machine learning techniques to predict the outcome of children treated for Hodgkin-Lymphoma on the AHOD0031 trial: A report from the Children's Oncology Group0
Learning Dynamic and Personalized Comorbidity Networks from Event Data using Deep Diffusion ProcessesCode0
Topic Models with Survival Supervision: Archetypal Analysis and Neural Approaches0
The Brier Score under Administrative Censoring: Problems and SolutionsCode0
A kernel log-rank test of independence for right-censored dataCode0
Survival and Neural Models for Private Equity Exit Prediction0
Better Approximate Inference for Partial Likelihood Models with a Latent Structure0
Targeted Estimation of Heterogeneous Treatment Effect in Observational Survival AnalysisCode0
Continuous and Discrete-Time Survival Prediction with Neural Networks0
Semi-Supervised Variational Autoencoder for Survival PredictionCode0
Variable Selection with Random Survival Forest and Bayesian Additive Regression Tree for Survival Data0
Netboost: Boosting-supported network analysis improves high-dimensional omics prediction in acute myeloid leukemia and Huntington's disease0
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