In:
Zeitschrift für Psychologie, Hogrefe Publishing Group, Vol. 226, No. 4 ( 2018-10), p. 232-245
Abstract:
Abstract. The increasing usage of new technologies implies changes for personality research. First, human behavior becomes measurable by digital data, and second, digital manifestations to some extent replace conventional behavior in the analog world. This offers the opportunity to investigate personality traits by means of digital footprints. In this context, the investigation of the personality trait sensation seeking attracted our attention as objective behavioral correlates have been missing so far. By collecting behavioral markers (e.g., communication or app usage) via Android smartphones, we examined whether self-reported sensation seeking scores can be reliably predicted. Overall, 260 subjects participated in our 30-day real-life data logging study. Using a machine learning approach, we evaluated cross-validated model fit based on how accurate sensation seeking scores can be predicted in unseen samples. Our findings highlight the potential of mobile sensing techniques in personality research and show exemplarily how prediction approaches can help to foster an increased understanding of human behavior.
Type of Medium:
Online Resource
ISSN:
2190-8370
,
2151-2604
DOI:
10.1027/2151-2604/a000342
Language:
English
Publisher:
Hogrefe Publishing Group
Publication Date:
2018
detail.hit.zdb_id:
200122-6
detail.hit.zdb_id:
2090996-2
SSG:
5,2
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