Emergent, not Immanent: A Baradian Reading of Explainable AI

要旨

Explainable AI (XAI) is frequently positioned as a technical problem of revealing the inner workings of an AI model. This position is affected by unexamined onto-epistemological assumptions: meaning is treated as immanent to the model, the explainer is positioned outside the system, and a causal structure is presumed recoverable through computational techniques. In this paper, we draw on Barad’s agential realism to develop an alternative onto-epistemology of XAI. We propose that interpretations are material-discursive performances that emerge from situated entanglements of the AI model with humans, context, and the interpretative apparatus. To develop this position, we read a comprehensive set of XAI methods through agential realism and reveal the assumptions and limitations that underpin several of these methods. We then articulate the framework’s ethical dimension and propose design directions for XAI interfaces that support emergent interpretation, using a speculative text-to-music interface as a case study.

著者
Fabio Morreale
Sony AI, Barcelona, Spain
Joan Serrà
Sony AI, Barcelona, Spain
Yuki Mistufuji
Sony AI, New York, New York, United States

会議: CHI 2026

ACM CHI Conference on Human Factors in Computing Systems

セッション: Structural Foundations and Theories

P1 - Room 115
7 件の発表
2026-04-13 20:15:00
2026-04-13 21:45:00