Fair, Transparent, and Accountable Algorithmic Decision-Making Processes

The combination of increased availability of large amounts of finegrained human behavioral data and advances in machine learning is presiding over a growing reliance on algorithms to address complex societal problems. Algorithmic decision-making processes might lead to more objective and thus potentially fairer decisions than those made by humans who may be influenced by greed, prejudice, fatigue, or hunger. However, algorithmic decision-making has been criticized for its potential to enhance discrimination, information and power asymmetry, and opacity. In this paper we provide an overview of available technical solutions to enhance fairness, accountability and transparency in algorithmic decision-making. We also highlight the criticality and urgency to engage multi-disciplinary teams of researchers, practitioners, policy makers and citizens to co-develop, deploy and evaluate in the real-world algorithmic decision-making processes designed to maximize fairness and transparency. In doing so, we describe the Open Algortihms (OPAL) project as a step towards realizing the vision of a world where data and algorithms are used as lenses and levers in support of democracy and development.

Focus: AI Ethics/Policy
Source: Springer Philosophy and Technology Journal
Redability: Expert
Type: PDF Article
Open Source: No
Keywords: algorithmic decision-making, algorithmic transparency, fairness, accountability, social good
Learn Tags: Ethics Fairness Machine Learning Trust
Summary: This paper provides an overview of available technical solutions to enhance fairness, accountability and transparency in algorithmic decision-making and highlights the criticality of engaging multidisciplinary teams to co-develop, deploy and evaluate algorithms designed to maximize fairness and transparency.