Data-driven algorithms are studied in diverse domains to support critical decisions, directly impacting people's well-being. As a result, a growing community of researchers has been investigating the equity of existing algorithms and proposing novel ones, advancing the understanding of risks and opportunities of automated decision-making for historically disadvantaged populations. Progress in fair Machine Learning hinges on data, which can be appropriately used only if adequately documented. Unfortunately, the algorithmic fairness community suffers from a collective data documentation debt caused by a lack of information on specific resources (opacity) and scatteredness of available information (sparsity). In this work, we target data documentation debt by surveying over two hundred datasets employed in algorithmic fairness research, and producing standardized and searchable documentation for each of them. Moreover we rigorously identify the three most popular fairness datasets, namely Adult, COMPAS and German Credit, for which we compile in-depth documentation. This unifying documentation effort supports multiple contributions. Firstly, we summarize the merits and limitations of Adult, COMPAS and German Credit, adding to and unifying recent scholarship, calling into question their suitability as general-purpose fairness benchmarks. Secondly, we document and summarize hundreds of available alternatives, annotating their domain and supported fairness tasks, along with additional properties of interest for fairness researchers. Finally, we analyze these datasets from the perspective of five important data curation topics: anonymization, consent, inclusivity, sensitive attributes, and transparency. We discuss different approaches and levels of attention to these topics, making them tangible, and distill them into a set of best practices for the curation of novel resources.
翻译:由数据驱动的算法在不同的领域进行研究,以支持关键决策,直接影响到人们的福祉。因此,越来越多的研究人员一直在调查现有算法的公平性和提出新的算法,增进对历史上处境不利人口自动决策的风险和机会的了解;公平机器学习的进展取决于数据,而数据只有经过充分记录才能适当使用。不幸的是,算法公平社区由于缺乏关于具体资源(不透明)和现有信息分散(差异)的信息而承受集体数据文件债务,因此,对数据记录债务进行定位,为此,我们调查了在算法公平研究中使用的200多套数据,并提出了新的算法,为每个这类人制作了标准化和可搜索的文件。此外,我们严格地确定了三种最受欢迎的公平数据集,即成人、COMPAS和德国信贷,我们为这些数据汇编了深入的文件。这种统一的文件工作支持多种贡献。首先,我们总结了成人、COMPAS和德国信贷的优点和局限性,补充和统一了最近的奖学金,质疑它们是否适合作为一般目的的公平基准。 其次,我们记录和总结了这些数据库的公平性,我们用数百种重要数据,我们用的方法来分析它们。