对全系统算法公平性的邀请

Efrén Cruz Cortés, D. Ghosh
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引用次数: 5

摘要

我们提出了一个分析和评估系统范围内算法公平性的框架。其核心理念是使用模拟技术,通过将情境和反馈整合到感兴趣的现象中,从而扩展当前公平性评估的范围。通过这样做,我们希望更好地理解导致歧视的社会行为、自动决策工具和公平启发的统计约束之间的相互作用。特别是,我们邀请社区使用基于智能体的模型作为群体水平属性因果机制的解释工具。我们还建议将这些嵌入到强化学习算法中,以找到有意义变化的最佳行动。作为采取全系统方法的激励,我们通过一个简单的预测性监管和试验模型表明,如果我们将注意力限制在系统的一部分,我们可能会将一些明显不公平的做法确定为公平,而对整体不公平视而不见。
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An Invitation to System-wide Algorithmic Fairness
We propose a framework for analyzing and evaluating system-wide algorithmic fairness. The core idea is to use simulation techniques in order to extend the scope of current fairness assessments by incorporating context and feedback to a phenomenon of interest. By doing so, we expect to better understand the interaction among the social behavior giving rise to discrimination, automated decision making tools, and fairness-inspired statistical constraints. In particular, we invite the community to use agent based models as an explanatory tool for causal mechanisms of population level properties. We also propose embedding these into a reinforcement learning algorithm to find optimal actions for meaningful change. As an incentive for taking a system-wide approach , we show through a simple model of predictive policing and trials that if we limit our attention to one portion of the system, we may determine some blatantly unfair practices as fair, and be blind to overall unfairness.
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