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1
Introduction
2
Overview
3
Survival Analysis
4
General Framework
5
Censoring and Truncation
6
Can we throw away censored data
7
Cox regression model
8
Covariates
9
Nonparametric baseline hazard
10
Deep learning models
11
DeepServe
12
CoxTime
13
Democracy Data Set
14
Dips Off
15
Perspectives
16
Resources
17
Customer Analytics
18
Probability
19
Binary Classification
20
EHR Database
21
Cox Time
22
Evaluation
Description:
Explore deep learning models for survival analysis in this comprehensive 59-minute lecture by Louise Ferbach, a Kaggle Competitions Master and Actuary Data Scientist at SCOR. Delve into time-to-event prediction problems applicable to credit default, machine failure, and cancer relapse scenarios. Learn about the general framework of survival analysis, including censoring and truncation concepts, and understand why censored data should not be discarded. Examine the Cox regression model, its covariates, and nonparametric baseline hazard. Discover cutting-edge deep learning models like DeepServe and CoxTime, and their application to real-world datasets such as the Democracy Data Set. Gain insights into customer analytics, probability estimation, and binary classification in the context of survival analysis. Explore the use of Electronic Health Record (EHR) databases and evaluation techniques for survival models. This lecture provides a thorough overview of deep learning applications in survival analysis, equipping you with valuable knowledge for various time-to-event prediction challenges. Read more

Deep Learning for Survival Analysis

Abhishek Thakur
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