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Explainable AI Reloaded: Challenging the XAI Status Quo in the Era of Large Language Models

Upol Ehsan, Mark Riedl

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Abstract

When the initial vision of Explainable (XAI) was articulated, the most popular framing was to open the (proverbial) “black-box” of AI so that we could understand the inner workings. With the advent of Large Language Models (LLMs), the very ability to open the black-box is increasingly limited. Especially when it comes to non-technical end-users. In this paper, we challenge the assumption of “opening” the black-box in the LLM era and argue for a shift in our XAI expectations. Highlighting the epistemic blind spots of an algorithm-centered XAI view, we argue that a human-centered perspective can be a path forward. We operationalize the argument by synthesizing XAI research along three dimensions: explainability outside the black-box, explainability around the edges of the black box, and explainability that leverages infrastructural seams. We conclude with takeaways that reflexively inform XAI as a domain.

Topics & Concepts

Status quoComputer scienceData scienceArtificial intelligenceNatural language processingPolitical scienceLawExplainable Artificial Intelligence (XAI)Scientific Computing and Data ManagementArtificial Intelligence in Healthcare and Education
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