Litcius/Paper detail

“Transforming” Personality Scale Development: Illustrating the Potential of State-of-the-Art Natural Language Processing

Shea Fyffe, Philseok Lee, Seth A. Kaplan

2023Organizational Research Methods27 citationsDOI

Abstract

Natural language processing (NLP) techniques are becoming increasingly popular in industrial and organizational psychology. One promising area for NLP-based applications is scale development; yet, while many possibilities exist, so far these applications have been restricted—mainly focusing on automated item generation. The current research expands this potential by illustrating an NLP-based approach to content analysis, which manually categorizes scale items by their measured constructs. In NLP, content analysis is performed as a text classification task whereby a model is trained to automatically assign scale items to the construct that they measure. Here, we present an approach to text classification—using state-of-the-art transformer models—that builds upon past approaches. We begin by introducing transformer models and their advantages over alternative methods. Next, we illustrate how to train a transformer to content analyze Big Five personality items. Then, we compare the models trained to human raters, finding that transformer models outperform human raters and several alternative models. Finally, we present practical considerations, limitations, and future research directions.

Topics & Concepts

Computer scienceNatural language processingTransformerArtificial intelligencePersonalityNatural language understandingComputational linguisticsNatural languageMachine learningData sciencePsychologyEngineeringSocial psychologyElectrical engineeringVoltageTopic ModelingAdvanced Text Analysis TechniquesComputational and Text Analysis Methods