Computational appraisal of gender representativeness in popular movies
- URL: http://arxiv.org/abs/2009.09067v3
- Date: Wed, 12 May 2021 07:28:47 GMT
- Title: Computational appraisal of gender representativeness in popular movies
- Authors: Antoine Mazieres and Telmo Menezes and Camille Roth
- Abstract summary: This article illustrates how automated computational methods may be used to scale up such empirical observations.
We specifically apply a face and gender detection algorithm on a broad set of popular movies spanning more than three decades to carry out a large-scale appraisal of the on-screen presence of women and men.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Gender representation in mass media has long been mainly studied by
qualitatively analyzing content. This article illustrates how automated
computational methods may be used in this context to scale up such empirical
observations and increase their resolution and significance. We specifically
apply a face and gender detection algorithm on a broad set of popular movies
spanning more than three decades to carry out a large-scale appraisal of the
on-screen presence of women and men. Beyond the confirmation of a strong
under-representation of women, we exhibit a clear temporal trend towards a
fairer representativeness. We further contrast our findings with respect to
movie genre, budget, and various audience-related features such as movie gross
and user ratings. We lastly propose a fine description of significant
asymmetries in the mise-en-sc\`ene and mise-en-cadre of characters in relation
to their gender and the spatial composition of a given frame.
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