A Seven-Layer Model for Standardising AI Fairness Assessment
Avinash Agarwal, Harsh Agarwal

TL;DR
This paper introduces a seven-layer model inspired by OSI to standardize AI fairness assessment across all stages of AI system development and deployment, addressing gaps in holistic fairness strategies.
Contribution
It proposes a novel seven-layer framework for comprehensive AI fairness standardization, including checklists and bias mitigation strategies for each stage.
Findings
Layer-wise checklists for fairness assessment
Identification of bias sources at each stage
Facilitates standardized benchmarking of AI fairness
Abstract
Problem statement: Standardisation of AI fairness rules and benchmarks is challenging because AI fairness and other ethical requirements depend on multiple factors such as context, use case, type of the AI system, and so on. In this paper, we elaborate that the AI system is prone to biases at every stage of its lifecycle, from inception to its usage, and that all stages require due attention for mitigating AI bias. We need a standardised approach to handle AI fairness at every stage. Gap analysis: While AI fairness is a hot research topic, a holistic strategy for AI fairness is generally missing. Most researchers focus only on a few facets of AI model-building. Peer review shows excessive focus on biases in the datasets, fairness metrics, and algorithmic bias. In the process, other aspects affecting AI fairness get ignored. The solution proposed: We propose a comprehensive approach in…
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Taxonomy
TopicsEthics and Social Impacts of AI
