Authors
Clemens Stachl, Florian Pargent, Sven Hilbert, Gabriella M Harari, Ramona Schoedel, Sumer Vaid, Samuel D Gosling, Markus Bühner
Publication date
2020/9
Journal
European Journal of Personality
Volume
34
Issue
5
Pages
613-631
Publisher
SAGE Publications
Description
The increasing availability of high–dimensional, fine–grained data about human behaviour, gathered from mobile sensing studies and in the form of digital footprints, is poised to drastically alter the way personality psychologists perform research and undertake personality assessment. These new kinds and quantities of data raise important questions about how to analyse the data and interpret the results appropriately. Machine learning models are well suited to these kinds of data, allowing researchers to model highly complex relationships and to evaluate the generalizability and robustness of their results using resampling methods. The correct usage of machine learning models requires specialized methodological training that considers issues specific to this type of modelling. Here, we first provide a brief overview of past studies using machine learning in personality psychology. Second, we illustrate the main …
Scholar articles
C Stachl, F Pargent, S Hilbert, GM Harari, R Schoedel… - European Journal of Personality, 2020
C Stachl, F Pargent, S Hilbert, GM Harari, R Schoedel… - EUROPEAN JOURNAL OF PERSONALITY, 2024