CYAIJan 28

Equity Bias: An Ethical Framework for AI Design

arXiv:2604.21907
AI Analysis

It provides a philosophical and practical lens for AI developers and policymakers to address ethical accountability in AI design.

The paper introduces Equity Bias, a framework that treats bias as a reflection of encoded knowledge rather than an error, and proposes a three-phase methodology for designing more equitable AI systems.

Equity Bias is a philosophical and practical framework for building smarter, more equitable AI systems. Grounded in hermeneutic philosophy and epistemic injustice theory, it treats bias not as an error to eliminate but as a reflection of whose knowledge is encoded into systems. While traditional approaches aim to reduce or remove bias, Equity Bias instead makes bias transparent and contestable. In doing so, it broadens whose perspectives shape AI and provides a lens for understanding AI systems as interpretive agents. The framework introduces a three-phase AI Life Cycle methodology: 'Equity Archaeology' (mapping knowledge and assumptions), 'Co-Creating Meaning' (participatory design), and 'Ongoing Accountability' (continuous evaluation). Equity Bias guides developers, researchers, and policymakers towards AI that is ethically accountable and capable of addressing complex real-world challenges.

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