Computational and urban science amid generative AI: the enduring relevance of McDermott’s critique (opinion paper)

Christophe Claramunt , Lars De Sloover , Nico Van de Weghe

Computational Urban Science ›› 2026, Vol. 6 ›› Issue (1) : 29

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Computational Urban Science ›› 2026, Vol. 6 ›› Issue (1) :29 DOI: 10.1007/s43762-026-00264-7
Opinion Paper
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Computational and urban science amid generative AI: the enduring relevance of McDermott’s critique (opinion paper)
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Abstract

This paper revisits McDermott’s seminal 1976 critique, Artificial Intelligence Meets Natural Stupidity, in light of the rapid rise of generative AI. McDermott’s warnings about conceptual imprecision, rhetorical inflation, and anthropomorphic metaphors remain strikingly relevant today, particularly in domains where linguistic fluency is mistaken for genuine understanding. Using computational and urban science as a case study, the paper highlights the limitations of large language models (LLMs) in spatial reasoning, including their hallucination of map features, distortion of topological relationships, and failure to grasp metric consistency. These shortcomings exemplify the epistemological risks McDermott identified nearly five decades ago. The paper argues for a renewed commitment to epistemic discipline and humility in the development and communication of generative AI, especially in high-stakes domains like geospatial applications. It proposes concrete guidelines for integrating spatial theory, documenting failures, and avoiding misleading terminology, advocating for hybrid approaches that combine LLMs with GIS frameworks and human oversight. By operationalizing McDermott’s insights, the paper calls for transparent, grounded, and responsible AI systems that can genuinely support, rather than distort, urban decision-making.

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Generative AI / Computational GIS / Epistemic discipline / McDermott’s critique

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Christophe Claramunt, Lars De Sloover, Nico Van de Weghe. Computational and urban science amid generative AI: the enduring relevance of McDermott’s critique (opinion paper). Computational Urban Science, 2026, 6(1): 29 DOI:10.1007/s43762-026-00264-7

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