With the increasing pervasiveness of Artificial Intelligence (AI), many visual analytics tools have been proposed to examine fairness, but they mostly focus on data scientist users. Instead, tackling fairness must be inclusive and involve domain experts with specialized tools and workflows. Thus, domain-specific visualizations are needed for algorithmic fairness. Furthermore, while much work on AI fairness has focused on predictive decisions, less has been done for fair allocation and planning, which require human expertise and iterative design to integrate myriad constraints. We propose the Intelligible Fair Allocation (IF-Alloc) Framework that leverages explanations of causal attribution (Why), contrastive (Why Not) and counterfactual reasoning (What If, How To) to aid domain experts to assess and alleviate unfairness in allocation problems. We apply the framework to fair urban planning for designing cities that provide equal access to amenities and benefits for diverse resident types. Specifically, we propose an interactive visual tool, Intelligible Fair City Planner (IF-City), to help urban planners to perceive inequality across groups, identify and attribute sources of inequality, and mitigate inequality with automatic allocation simulations and constraint-satisfying recommendations. We demonstrate and evaluate the usage and usefulness of IF-City on a real neighborhood in New York City, US, with practicing urban planners from multiple countries, and discuss generalizing our findings, application, and framework to other use cases and applications of fair allocation.
翻译:随着人工智能(AI)的日益普及,许多视觉分析工具被提出来审查公平性,但大多侧重于数据科学家用户。相反,处理公平性必须具有包容性,让领域专家参与,并有专门的工具和工作流程。因此,为了算法公正,需要有针对特定领域的可视化。此外,尽管在人工智能公正方面做了大量工作,侧重于预测性决定,但在公平分配和规划方面做得较少,这需要人的专门知识和迭接设计,以综合各种制约因素。我们提议了“可知性公平分配(IF-Alloc)框架”,利用对因果归属(原因)、对比(原因)和反事实推理(如果,如何)的解释来帮助域专家评估和减轻分配问题的不公平性。我们把框架应用于公平的城市规划,为不同类型居民平等获得福利和惠益提供平等机会。我们提议了一个互动的视觉工具,要求人性公平城市规划员(IF-City),帮助城市规划者了解各群体之间的不平等,确定和归属不平等的来源,并通过自动分配模拟和制约性推理(如果,如何)来帮助域专家评估和讨论我们城市应用的多重用途,并讨论我们城市应用中的其他应用。