CYAIOct 20, 2025

Trust in foundation models and GenAI: A geographic perspective

arXiv:2510.17942v1h-index: 3
Originality Synthesis-oriented
AI Analysis

It provides a conceptual framework for researchers, practitioners, and policymakers to address trust issues in generative GeoAI, but it is incremental as it builds on existing discussions without introducing new methods or data.

The chapter examines the concept of trust in foundation models within a geographic context, categorizing it into epistemic, operational, and interpersonal types to address challenges like bias and transparency for better understanding in GeoAI.

Large-scale pre-trained machine learning models have reshaped our understanding of artificial intelligence across numerous domains, including our own field of geography. As with any new technology, trust has taken on an important role in this discussion. In this chapter, we examine the multifaceted concept of trust in foundation models, particularly within a geographic context. As reliance on these models increases and they become relied upon for critical decision-making, trust, while essential, has become a fractured concept. Here we categorize trust into three types: epistemic trust in the training data, operational trust in the model's functionality, and interpersonal trust in the model developers. Each type of trust brings with it unique implications for geographic applications. Topics such as cultural context, data heterogeneity, and spatial relationships are fundamental to the spatial sciences and play an important role in developing trust. The chapter continues with a discussion of the challenges posed by different forms of biases, the importance of transparency and explainability, and ethical responsibilities in model development. Finally, the novel perspective of geographic information scientists is emphasized with a call for further transparency, bias mitigation, and regionally-informed policies. Simply put, this chapter aims to provide a conceptual starting point for researchers, practitioners, and policy-makers to better understand trust in (generative) GeoAI.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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