Cross validating extensions of kernel, sparse or regular partial least squares regression models to censored data

10/06/2018
by   Frédéric Bertrand, et al.
0

When cross-validating standard or extended Cox models, the commonly used criterion is the cross-validated partial loglikelihood using a naive or a van Houwelingen scheme -to make efficient use of the death times of the left out data in relation to the death times of all the data-. Quite astonishingly, we will show, using a strong simulation study involving three different data simulation algorithms, that these two cross-validation methods fail with the extensions, either straightforward or more involved ones, of partial least squares regression to the Cox model. This is quite an interesting result for at least two reasons. Firstly, several nice features of PLS based models, including regularization, interpretability of the components, missing data support, data visualization thanks to biplots of individuals and variables -and even parsimony for SPLS based models-, account for a common use of these extensions by statisticians who usually select their hyperparameters using cross-validation. Secondly, they are almost always featured in benchmarking studies to assess the performance of a new estimation technique used in a high dimensional context and often show poor statistical properties. We carried out a vast simulation study to evaluate more than a dozen of potential cross-validation criteria, either AUC or prediction error based. Several of them lead to the selection of a reasonable number of components. Using these newly found cross-validation criteria to fit extensions of partial least squares regression to the Cox model, we performed a benchmark reanalysis that showed enhanced performances of these techniques. In addition, we defined a new robust measure based on the Schmid score and the R coefficient of determination for least absolute deviation: the integrated R Schmid Score weighted. Simulations were carried out using the R-package plsRcox.

READ FULL TEXT

page 12

page 15

page 16

page 24

page 28

page 29

page 32

page 33

research
05/24/2019

Cross validation approaches for penalized Cox regression

Cross validation is commonly used for selecting tuning parameters in pen...
research
11/17/2017

Variable selection with genetic algorithms using repeated cross-validation of PLS regression models as fitness measure

Genetic algorithms are a widely used method in chemometrics for extracti...
research
05/19/2020

Fast cross-validation for multi-penalty ridge regression

Prediction based on multiple high-dimensional data types needs to accoun...
research
12/30/2018

On Cross-validation for Sparse Reduced Rank Regression

In high-dimensional data analysis, regularization methods pursuing spars...
research
11/26/2019

The Early Roots of Statistical Learning in the Psychometric Literature: A review and two new results

Machine and Statistical learning techniques become more and more importa...
research
03/26/2016

Learning Hough Regression Models via Bridge Partial Least Squares for Object Detection

Popular Hough Transform-based object detection approaches usually constr...

Please sign up or login with your details

Forgot password? Click here to reset