The Pragmatic Turn in Explainable Artificial Intelligence (XAI)
February 22, 2020 Β· Declared Dead Β· π Minds and Machines
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Authors
AndrΓ©s PΓ‘ez
arXiv ID
2002.09595
Category
cs.AI: Artificial Intelligence
Cross-listed
cs.CY,
cs.HC,
cs.LG
Citations
218
Venue
Minds and Machines
Last Checked
3 months ago
Abstract
In this paper I argue that the search for explainable models and interpretable decisions in AI must be reformulated in terms of the broader project of offering a pragmatic and naturalistic account of understanding in AI. Intuitively, the purpose of providing an explanation of a model or a decision is to make it understandable to its stakeholders. But without a previous grasp of what it means to say that an agent understands a model or a decision, the explanatory strategies will lack a well-defined goal. Aside from providing a clearer objective for XAI, focusing on understanding also allows us to relax the factivity condition on explanation, which is impossible to fulfill in many machine learning models, and to focus instead on the pragmatic conditions that determine the best fit between a model and the methods and devices deployed to understand it. After an examination of the different types of understanding discussed in the philosophical and psychological literature, I conclude that interpretative or approximation models not only provide the best way to achieve the objectual understanding of a machine learning model, but are also a necessary condition to achieve post-hoc interpretability. This conclusion is partly based on the shortcomings of the purely functionalist approach to post-hoc interpretability that seems to be predominant in most recent literature.
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