从印度人的名字解读人口不公平

Medidoddi Vahini, Jalend Bantupalli, Souvic Chakraborty, Animesh Mukherjee
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引用次数: 2

摘要

. 人口统计分类在评估推荐系统的公平性或衡量在线网络和投票系统中的意外偏见方面至关重要。教育和政治等重要领域往往是未来社会平等的基础,它们需要仔细研究,以设计出能够更好地促进资源分配平等的政策,这些政策受到该国人口分布不平衡的限制。我们收集了三个公开可用的数据集来训练性别和种姓分类领域最先进的分类器。我们在印度上下文中训练模型,在印度,相同的名字可以有不同的样式约定(一个邦的Jolly Abraham/Kumar Abhishikta在另一个邦可能写成Abraham Jolly/Abishikta Kumar)。最后,我们还进行了交叉测试(在不同的数据集上进行训练和测试),以了解上述模型的有效性。我们还对预测模型进行了误差分析。最后,我们试图评估现有印度制度中的偏见作为案例研究,并在次大陆复杂的人口结构中发现一些有趣的模式,这些模式体现在性别和种姓的维度上。
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Decoding Demographic un-fairness from Indian Names
. Demographic classification is essential in fairness assessment in recommender systems or in measuring unintended bias in online networks and voting systems. Important fields like education and politics, which often lay a foundation for the future of equality in society, need scrutiny to design policies that can better foster equality in resource distribution constrained by the unbalanced demographic distribution of people in the country. We collect three publicly available datasets to train state-of-the-art classifiers in the domain of gender and caste classification. We train the models in the Indian context, where the same name can have different styling conventions (Jolly Abraham/Kumar Abhishikta in one state may be written as Abraham Jolly/Abishikta Kumar in the other). Finally, we also perform cross-testing (training and testing on different datasets) to understand the efficacy of the above models. We also perform an error analysis of the prediction models. Finally, we attempt to assess the bias in the existing Indian system as case studies and find some intriguing patterns manifesting in the complex demographic layout of the sub-continent across the dimensions of gender and caste.
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