通过社会媒体中的性别偏见语言分析促进性别平等

G. Singh, Soumitra Ghosh, Asif Ekbal
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摘要

性别偏见是一个普遍存在的问题,影响着妇女和边缘群体充分参与社会、经济和政治领域的能力。本研究从社交媒体互动中引入了一个新的性别偏见语言识别和提取(GLIdE)问题,并开发了一个多任务深度框架,该框架可以检测性别偏见内容,并使用输入中的情感信息从文本中识别出相关的因果短语。该方法采用了一种带有情感信息的零投策略和一种将性别刻板印象信息表示为知识图谱的机制。在这项工作中,我们还引入了首个包含12,432个社交媒体帖子的性别偏见分析语料库(GAC),并通过实证评估和广泛的定性分析证明,将性别偏见语言识别和提取任务的最佳表现基线提高了4.88%和5个ROS点。通过提高识别和分析性别偏见语言的准确性,这项工作有助于实现性别平等和促进包容性社会,符合联合国可持续发展目标(UN SDGs)和不让任何人掉队原则(LNOB)。我们通过公开分享代码和数据集,坚持透明和协作的原则,符合联合国可持续发展目标。
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Promoting Gender Equality through Gender-biased Language Analysis in Social Media
Gender bias is a pervasive issue that impacts women's and marginalized groups' ability to fully participate in social, economic, and political spheres. This study introduces a novel problem of Gender-biased Language Identification and Extraction (GLIdE) from social media interactions and develops a multi-task deep framework that detects gender-biased content and identifies connected causal phrases from the text using emotional information that is present in the input. The method uses a zero-shot strategy with emotional information and a mechanism to represent gender-stereotyped information as a knowledge graph. In this work, we also introduce the first-of-its-kind Gender-biased Analysis Corpus (GAC) of 12,432 social media posts and improve the best-performing baseline for gender-biased language identification and extraction tasks by margins of 4.88% and 5 ROS points, demonstrating this through empirical evaluation and extensive qualitative analysis. By improving the accuracy of identifying and analyzing gender-biased language, this work can contribute to achieving gender equality and promoting inclusive societies, in line with the United Nations Sustainable Development Goals (UN SDGs) and the Leave No One Behind principle (LNOB). We adhere to the principles of transparency and collaboration in line with the UN SDGs by openly sharing our code and dataset.
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