AICYJul 30, 2024

Rolling in the deep of cognitive and AI biases

arXiv:2407.21202v45 citationsh-index: 5
Originality Incremental advance
AI Analysis

This addresses the critical issue of overlooked human and societal factors in AI bias for domains like healthcare and law enforcement, representing a novel paradigm shift rather than an incremental improvement.

The paper tackles the problem of AI systems producing unfair outcomes despite computational fairness approaches by proposing a new methodology that incorporates human cognitive biases as core entities in AI fairness analysis, revealing hidden pathways through which human heuristics influence AI bias.

Nowadays, we delegate many of our decisions to Artificial Intelligence (AI) that acts either in solo or as a human companion in decisions made to support several sensitive domains, like healthcare, financial services and law enforcement. AI systems, even carefully designed to be fair, are heavily criticized for delivering misjudged and discriminated outcomes against individuals and groups. Numerous work on AI algorithmic fairness is devoted on Machine Learning pipelines which address biases and quantify fairness under a pure computational view. However, the continuous unfair and unjust AI outcomes, indicate that there is urgent need to understand AI as a sociotechnical system, inseparable from the conditions in which it is designed, developed and deployed. Although, the synergy of humans and machines seems imperative to make AI work, the significant impact of human and societal factors on AI bias is currently overlooked. We address this critical issue by following a radical new methodology under which human cognitive biases become core entities in our AI fairness overview. Inspired by the cognitive science definition and taxonomy of human heuristics, we identify how harmful human actions influence the overall AI lifecycle, and reveal human to AI biases hidden pathways. We introduce a new mapping, which justifies the human heuristics to AI biases reflections and we detect relevant fairness intensities and inter-dependencies. We envision that this approach will contribute in revisiting AI fairness under deeper human-centric case studies, revealing hidden biases cause and effects.

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