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

11/26/2019
by   Mark de Rooij, et al.
0

Machine and Statistical learning techniques become more and more important for the analysis of psychological data. Four core concepts of machine learning are the bias variance trade-off, cross-validation, regularization, and basis expansion. We present some early psychometric papers, from almost a century ago, that dealt with cross-validation and regularization. From this review it is safe to conclude that the origins of these lie partly in the field of psychometrics. From our historical review, two new ideas arose which we investigated further: The first is about the relationship between reliability and predictive validity; the second is whether optimal regression weights should be estimated by regularizing their values towards equality or shrinking their values towards zero. In a simulation study we show that the reliability of a test score does not influence the predictive validity as much as is usually written in psychometric textbooks. Using an empirical example we show that regularization towards equal regression coefficients is beneficial in terms of prediction error.

READ FULL TEXT

page 12

page 13

research
08/03/2012

Cross-conformal predictors

This note introduces the method of cross-conformal prediction, which is ...
research
06/23/2017

Cross-validation failure: small sample sizes lead to large error bars

Predictive models ground many state-of-the-art developments in statistic...
research
11/15/2017

Accelerating Cross-Validation in Multinomial Logistic Regression with ℓ_1-Regularization

We develop an approximate formula for evaluating a cross-validation esti...
research
07/04/2019

Subsampling Bias and The Best-Discrepancy Systematic Cross Validation

Statistical machine learning models should be evaluated and validated be...
research
10/06/2018

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

When cross-validating standard or extended Cox models, the commonly used...
research
01/16/2020

Cross-conformal e-prediction

This note discusses a simple modification of cross-conformal prediction ...
research
05/27/2014

Futility Analysis in the Cross-Validation of Machine Learning Models

Many machine learning models have important structural tuning parameters...

Please sign up or login with your details

Forgot password? Click here to reset