AICYApr 10, 2025

A taxonomy of epistemic injustice in the context of AI and the case for generative hermeneutical erasure

arXiv:2504.07531v215 citationsh-index: 3AI and Ethics
Originality Synthesis-oriented
AI Analysis

This work addresses epistemic injustice for stakeholders in AI ethics and governance, but it is incremental as it builds on existing philosophical frameworks.

The paper tackles the problem of epistemic injustice in AI by proposing a taxonomy to map its various forms and introducing a novel concept called generative hermeneutical erasure, which describes how AI systems suppress non-Western epistemologies.

Epistemic injustice related to AI is a growing concern. In relation to machine learning models, epistemic injustice can have a diverse range of sources, ranging from epistemic opacity, the discriminatory automation of testimonial prejudice, and the distortion of human beliefs via generative AI's hallucinations to the exclusion of the global South in global AI governance, the execution of bureaucratic violence via algorithmic systems, and interactions with conversational artificial agents. Based on a proposed general taxonomy of epistemic injustice, this paper first sketches a taxonomy of the types of epistemic injustice in the context of AI, relying on the work of scholars from the fields of philosophy of technology, political philosophy and social epistemology. Secondly, an additional conceptualization on epistemic injustice in the context of AI is provided: generative hermeneutical erasure. I argue that this injustice the automation of 'epistemicide', the injustice done to epistemic agents in their capacity for collective sense-making through the suppression of difference in epistemology and conceptualization by LLMs. AI systems' 'view from nowhere' epistemically inferiorizes non-Western epistemologies and thereby contributes to the erosion of their epistemic particulars, gradually contributing to hermeneutical erasure. This work's relevance lies in proposal of a taxonomy that allows epistemic injustices to be mapped in the AI domain and the proposal of a novel form of AI-related epistemic injustice.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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