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Identifying gender bias in blockbuster movies through the lens of machine learning

The Arts

Identifying gender bias in blockbuster movies through the lens of machine learning

M. J. Haris, A. Upreti, et al.

This innovative study by Muhammad Junaid Haris, Aanchal Upreti, Melih Kurtaran, Filip Ginter, Sebastien Lafond, and Sepinoud Azimi explores gender bias in English blockbuster movies using advanced natural language processing. The authors shed light on how male and female characters are portrayed through emotions, revealing surprising dominance and envy in men, alongside joy in women. Their unique method encourages reflection on gender equality while facilitating automated movie analysis.

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~3 min • Beginner • English
Abstract
The problem of gender bias is highly prevalent and well known. In this paper, we have analysed the portrayal of gender roles in English movies, a medium that effectively influences society in shaping people's beliefs and opinions. First, we gathered scripts of films from different genres and derived sentiments and emotions using natural language processing techniques. Afterwards, we converted the scripts into embeddings, i.e., a way of representing text in the form of vectors. With a thorough investigation, we found specific patterns in male and female characters' personality traits in movies that align with societal stereotypes. Furthermore, we used mathematical and machine learning techniques and found some biases wherein men are shown to be more dominant and envious than women, whereas women have more joyful roles in movies. In our work, we introduce, to the best of our knowledge, a novel technique to convert dialogues into an array of emotions by combining it with Plutchik's wheel of emotions. Our study aims to encourage reflections on gender equality in the domain of film and facilitate other researchers in analysing movies automatically instead of using manual approaches.
Publisher
Humanities and Social Sciences Communications
Published On
Mar 10, 2023
Authors
Muhammad Junaid Haris, Aanchal Upreti, Melih Kurtaran, Filip Ginter, Sebastien Lafond, Sepinoud Azimi
Tags
gender bias
blockbuster movies
natural language processing
emotions
personality traits
automated analysis
gender equality
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