Mitigating Voter Attribute Bias for Fair Opinion Aggregation
Ryosuke Ueda, Koh Takeuchi, Hisashi Kashima

TL;DR
This paper proposes new methods for fair opinion aggregation that mitigate bias from voter attributes like gender or race, improving decision-making fairness in subjective tasks.
Contribution
It introduces a Soft D&S model for better soft label estimation and evaluates fairness-enhancing techniques combining opinion models with fairness options.
Findings
Soft D&S improves soft label accuracy over traditional models
Data splitting enhances fairness in dense data scenarios
Weighted voting is effective for sparse data
Abstract
The aggregation of multiple opinions plays a crucial role in decision-making, such as in hiring and loan review, and in labeling data for supervised learning. Although majority voting and existing opinion aggregation models are effective for simple tasks, they are inappropriate for tasks without objectively true labels in which disagreements may occur. In particular, when voter attributes such as gender or race introduce bias into opinions, the aggregation results may vary depending on the composition of voter attributes. A balanced group of voters is desirable for fair aggregation results but may be difficult to prepare. In this study, we consider methods to achieve fair opinion aggregation based on voter attributes and evaluate the fairness of the aggregated results. To this end, we consider an approach that combines opinion aggregation models such as majority voting and the Dawid and…
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