Many Voices, One Label: How Pluralistic AI Flattens the World
TL;DR for operators An AI project can interview communities, collect thousands of preference judgments, preserve several user perspectives, and still impose one rigid interpretation of the world. That is the central warning in Rashid Mushkani’s AI Pluralism and the Worlds It Misses.1 The paper names the failure ontological flattening: the process by which contested concepts such as safety, accessibility, inclusion, comfort, or belonging become fixed labels, measurable proxies, aggregation rules, or benchmark targets that are subsequently treated as neutral. ...