A growing community of researchers has been investigating the equity of algorithms, advancing the understanding of risks and opportunities of automated decision-making for historically disadvantaged populations. Progress in fair Machine Learning (ML) hinges on data, which can be appropriately used only if adequately documented. Unfortunately, the research community, as a whole, 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 survey over two hundred datasets employed in algorithmic fairness research, producing standardized and searchable documentation for each of them. Moreover we rigorously identify the t...
Machine learning (ML) tools reduce the costs of performing repetitive, time-consuming tasks yet run ...
Many machine learning systems make extensive use of large amounts of data regarding human behaviors....
To encourage ethical thinking in Machine Learning (ML) development, fairness researchers have create...
Data-driven algorithms are studied in diverse domains to support critical decisions, directly impact...
This dataset presents the description and the references for the datasets used in the fairness liter...
The increasing use of data-driven decision support systems in industry and governments is accompanie...
Automated decision systems are increasingly used to take consequential decisions in problems such as...
The rise of algorithmic decision-making has spawned much research on fair machine learning (ML). Fin...
Although many fairness criteria have been proposed to ensure that machine learning algorithms do not...
As decision-making increasingly relies on machine learning (ML) and (big) data, the issue of fairnes...
Over the last years, a wide spread of Machine Learning in increasingly more, especially sensitive ar...
Many machine learning systems make extensive use of large amounts of data regarding human behaviors....
Publisher Copyright: © 2023, The Author(s), under exclusive license to Springer Nature Switzerland A...
Western societies are marked by diverse and extensive biases and inequality that are unavoidably emb...
Decisions based on algorithmic, machine learning models can be unfair, reproducing biases in histori...
Machine learning (ML) tools reduce the costs of performing repetitive, time-consuming tasks yet run ...
Many machine learning systems make extensive use of large amounts of data regarding human behaviors....
To encourage ethical thinking in Machine Learning (ML) development, fairness researchers have create...
Data-driven algorithms are studied in diverse domains to support critical decisions, directly impact...
This dataset presents the description and the references for the datasets used in the fairness liter...
The increasing use of data-driven decision support systems in industry and governments is accompanie...
Automated decision systems are increasingly used to take consequential decisions in problems such as...
The rise of algorithmic decision-making has spawned much research on fair machine learning (ML). Fin...
Although many fairness criteria have been proposed to ensure that machine learning algorithms do not...
As decision-making increasingly relies on machine learning (ML) and (big) data, the issue of fairnes...
Over the last years, a wide spread of Machine Learning in increasingly more, especially sensitive ar...
Many machine learning systems make extensive use of large amounts of data regarding human behaviors....
Publisher Copyright: © 2023, The Author(s), under exclusive license to Springer Nature Switzerland A...
Western societies are marked by diverse and extensive biases and inequality that are unavoidably emb...
Decisions based on algorithmic, machine learning models can be unfair, reproducing biases in histori...
Machine learning (ML) tools reduce the costs of performing repetitive, time-consuming tasks yet run ...
Many machine learning systems make extensive use of large amounts of data regarding human behaviors....
To encourage ethical thinking in Machine Learning (ML) development, fairness researchers have create...