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  3. Explainability Through Systematicity: The Hard Systematicity Challenge for Artificial Intelligence.
 

Explainability Through Systematicity: The Hard Systematicity Challenge for Artificial Intelligence.

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BORIS DOI
10.48620/90677
Publisher DOI
10.1007/s11023-025-09738-9
PubMed ID
40746976
Description
This paper argues that explainability is only one facet of a broader ideal that shapes our expectations towards artificial intelligence (AI). Fundamentally, the issue is to what extent AI exhibits systematicity-not merely in being sensitive to how thoughts are composed of recombinable constituents, but in striving towards an integrated body of thought that is consistent, coherent, comprehensive, and parsimoniously principled. This richer conception of systematicity has been obscured by the long shadow of the "systematicity challenge" to connectionism, according to which network architectures are fundamentally at odds with what Fodor and colleagues termed "the systematicity of thought." I offer a conceptual framework for thinking about "the systematicity of thought" that distinguishes four senses of the phrase. I use these distinctions to defuse the perceived tension between systematicity and connectionism and show that the conception of systematicity that historically shaped our sense of what makes thought rational, authoritative, and scientific is more demanding than the Fodorian notion. To determine whether we have reason to hold AI models to this ideal of systematicity, I then argue, we must look to the rationales for systematization and explore to what extent they transfer to AI models. I identify five such rationales and apply them to AI. This brings into view the "hard systematicity challenge." However, the demand for systematization itself needs to be regulated by the rationales for systematization. This yields a dynamic understanding of the need to systematize thought, which tells us how systematic we need AI models to be and when.
Date of Publication
2025
Publication Type
Article
Subject(s)
100 Philosophy
Keyword(s)
Compositionality
•
Connectionism
•
Explainability
•
Functions of systematization
•
Interpretability
•
Language of thought
•
Philosophy of artificial intelligence
•
Productivity
•
Systematicity
•
XAI
Language(s)
en
Contributor(s)
Queloz, Matthieuorcid-logo
Institut für Philosophie - Wissenschaftsphilosophie
Institute of Philosophy, Theoretical Philosophy
Additional Credits
Institut für Philosophie - Wissenschaftsphilosophie
Series
Minds and Machines
Publisher
Springer
ISSN
0924-6495
Access(Rights)
open.access
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