Litcius/Paper detail

From transparency to accountability of intelligent systems: Moving beyond aspirations

Rebecca Williams, Richard Cloete, Jennifer Cobbe, Caitlin Cottrill, Peter Edwards, Milan Marković, Iman Naja, Frances Ryan, Jatinder Singh, Wei Pang

2022Data & Policy49 citationsDOIOpen Access PDF

Abstract

Abstract A number of governmental and nongovernmental organizations have made significant efforts to encourage the development of artificial intelligence in line with a series of aspirational concepts such as transparency, interpretability, explainability, and accountability. The difficulty at present, however, is that these concepts exist at a fairly abstract level, whereas in order for them to have the tangible effects desired they need to become more concrete and specific. This article undertakes precisely this process of concretisation, mapping how the different concepts interrelate and what in particular they each require in order to move from being high-level aspirations to detailed and enforceable requirements. We argue that the key concept in this process is accountability, since unless an entity can be held accountable for compliance with the other concepts, and indeed more generally, those concepts cannot do the work required of them. There is a variety of taxonomies of accountability in the literature. However, at the core of each account appears to be a sense of “answerability”; a need to explain or to give an account. It is this ability to call an entity to account which provides the impetus for each of the other concepts and helps us to understand what they must each require.

Topics & Concepts

AccountabilityTransparency (behavior)InterpretabilityVariety (cybernetics)Process (computing)Order (exchange)Compliance (psychology)Computer sciencePublic relationsProcess managementCore (optical fiber)Key (lock)Knowledge managementPolitical scienceBusinessEngineering ethicsManagement scienceComputer securityPsychologyEngineeringArtificial intelligenceSocial psychologyLawFinanceOperating systemTelecommunicationsExplainable Artificial Intelligence (XAI)Ethics and Social Impacts of AIAdversarial Robustness in Machine Learning