Bias Plus Variance Decomposition for Survival Analysis Problems

09/24/2011
by   Marina Sapir, et al.
0

Bias - variance decomposition of the expected error defined for regression and classification problems is an important tool to study and compare different algorithms, to find the best areas for their application. Here the decomposition is introduced for the survival analysis problem. In our experiments, we study bias -variance parts of the expected error for two algorithms: original Cox proportional hazard regression and CoxPath, path algorithm for L1-regularized Cox regression, on the series of increased training sets. The experiments demonstrate that, contrary expectations, CoxPath does not necessarily have an advantage over Cox regression.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
07/28/2021

Survival stacking: casting survival analysis as a classification problem

While there are many well-developed data science methods for classificat...
research
11/06/2022

A framework for leveraging machine learning tools to estimate personalized survival curves

The conditional survival function of a time-to-event outcome subject to ...
research
04/01/2023

Using Overlap Weights to Address Extreme Propensity Scores in Estimating Restricted Mean Counterfactual Survival Times

While the inverse probability of treatment weighting (IPTW) is a commonl...
research
06/21/2022

Ensembling over Classifiers: a Bias-Variance Perspective

Ensembles are a straightforward, remarkably effective method for improvi...
research
10/06/2021

The Variability of Model Specification

It's regarded as an axiom that a good model is one that compromises betw...
research
03/17/2021

Understanding Generalization in Adversarial Training via the Bias-Variance Decomposition

Adversarially trained models exhibit a large generalization gap: they ca...
research
01/05/2021

A unifying approach on bias and variance analysis for classification

Standard bias and variance (B V) terminologies were originally defined...

Please sign up or login with your details

Forgot password? Click here to reset