Two-Faced Humans on Twitter and Facebook: Harvesting Social Multimedia
for Human Personality Profiling
- URL: http://arxiv.org/abs/2106.10673v1
- Date: Sun, 20 Jun 2021 10:48:49 GMT
- Title: Two-Faced Humans on Twitter and Facebook: Harvesting Social Multimedia
for Human Personality Profiling
- Authors: Qi Yang, Aleksandr Farseev, Andrey Filchenkov
- Abstract summary: We infer the Myers-Briggs Personality Type indicators by applying a novel multi-view fusion framework, called "PERS"
Our experimental results demonstrate the PERS's ability to learn from multi-view data for personality profiling by efficiently leveraging on the significantly different data arriving from diverse social multimedia sources.
- Score: 74.83957286553924
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: Human personality traits are the key drivers behind our decision-making,
influencing our life path on a daily basis. Inference of personality traits,
such as Myers-Briggs Personality Type, as well as an understanding of
dependencies between personality traits and users' behavior on various social
media platforms is of crucial importance to modern research and industry
applications. The emergence of diverse and cross-purpose social media avenues
makes it possible to perform user personality profiling automatically and
efficiently based on data represented across multiple data modalities. However,
the research efforts on personality profiling from multi-source multi-modal
social media data are relatively sparse, and the level of impact of different
social network data on machine learning performance has yet to be
comprehensively evaluated. Furthermore, there is not such dataset in the
research community to benchmark. This study is one of the first attempts
towards bridging such an important research gap. Specifically, in this work, we
infer the Myers-Briggs Personality Type indicators, by applying a novel
multi-view fusion framework, called "PERS" and comparing the performance
results not just across data modalities but also with respect to different
social network data sources. Our experimental results demonstrate the PERS's
ability to learn from multi-view data for personality profiling by efficiently
leveraging on the significantly different data arriving from diverse social
multimedia sources. We have also found that the selection of a machine learning
approach is of crucial importance when choosing social network data sources and
that people tend to reveal multiple facets of their personality in different
social media avenues. Our released social multimedia dataset facilitates future
research on this direction.
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