2019
DOI: 10.1145/3351246
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Modeling Personality vs. Modeling Personalidad

Abstract: Sensor data collected from smartphones provides the possibility to passively infer a user's personality traits. Such models can be used to enable technology personalization, while contributing to our substantive understanding of how human behavior manifests in daily life. A significant challenge in personality modeling involves improving the accuracy of personality inferences, however, research has yet to assess and consider the cultural impact of users' country of residence on model replicability. We collecte… Show more

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Cited by 27 publications
(5 citation statements)
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“…Furthermore, retirement can be a transitional phase potentially triggering personality development (Löckenhoff et al, 2009; Robinson et al, 2010; Schwaba & Bleidorn, 2019). Regional differences should also be taken into account because socialization in different contexts may potentially affect both work environments and personality (Allik et al, 2017; Khwaja et al, 2019; Murphy et al, 2021).…”
Section: Introductionmentioning
confidence: 99%
“…Furthermore, retirement can be a transitional phase potentially triggering personality development (Löckenhoff et al, 2009; Robinson et al, 2010; Schwaba & Bleidorn, 2019). Regional differences should also be taken into account because socialization in different contexts may potentially affect both work environments and personality (Allik et al, 2017; Khwaja et al, 2019; Murphy et al, 2021).…”
Section: Introductionmentioning
confidence: 99%
“…Further, we used the median value to split participants into two groups, e.g., into High Agreeableness versus Low Agreeableness. This methodology has been previously applied in the literature [ 50 , 51 ] to analyse different clusters of individuals. The exhaustive categories considered for our analysis are shown in Table 1 .…”
Section: Quantitative Studymentioning
confidence: 99%
“…7 Post data collection, Su et al [125] performed data balancing, conditioned on the sensitive attribute, managing to narrow the impact of gender voice differences on their speech recognition model. Similarly, a strand of work explored data splitting, conditioned on the sensitive attribute (gender, age, BMI, skin tone, country, and health condition) to enable model personalization [59,77,91,125,150]. More advanced mechanisms suggest modifying feature representations so that a subsequent classifier will be fairer.…”
Section: Takeaway #1mentioning
confidence: 99%