Measuring Social Biases of Crowd Workers using Counterfactual Queries

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Authors Bhavya Ghai, Q. Vera Liao, Yunfeng Zhang, Klaus Mueller arXiv ID 2004.02028 Category cs.HC: Human-Computer Interaction Cross-listed cs.AI Citations 16 Venue arXiv.org Last Checked 4 months ago
Abstract
Social biases based on gender, race, etc. have been shown to pollute machine learning (ML) pipeline predominantly via biased training datasets. Crowdsourcing, a popular cost-effective measure to gather labeled training datasets, is not immune to the inherent social biases of crowd workers. To ensure such social biases aren't passed onto the curated datasets, it's important to know how biased each crowd worker is. In this work, we propose a new method based on counterfactual fairness to quantify the degree of inherent social bias in each crowd worker. This extra information can be leveraged together with individual worker responses to curate a less biased dataset.
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