Ties of Trust: a bowtie model to uncover trustor-trustee relationships in LLMs
Eva Paraschou, Maria Michali, Sofia Yfantidou, Stelios Karamanidis, Stefanos Rafail Kalogeros, Athena Vakali

TL;DR
This paper introduces a bowtie model to better understand trust relationships between users and LLMs, addressing complexities overlooked by previous models, and provides insights for building trustworthy AI systems.
Contribution
It proposes a novel bowtie model to holistically conceptualize trust in LLMs, integrating trustor and trustee relationships within a sociotechnical ecosystem.
Findings
Past experiences and familiarity influence trust-related actions.
Not all trustor factors equally impact trustee elements.
Human-in-the-loop features increase trust, lack of transparency decreases it.
Abstract
The rapid and unprecedented dominance of Artificial Intelligence (AI), particularly through Large Language Models (LLMs), has raised critical trust challenges in high-stakes domains like politics. Biased LLMs' decisions and misinformation undermine democratic processes, and existing trust models fail to address the intricacies of trust in LLMs. Currently, oversimplified, one-directional approaches have largely overlooked the many relationships between trustor (user) contextual factors (e.g. ideology, perceptions) and trustee (LLMs) systemic elements (e.g. scientists, tool's features). In this work, we introduce a bowtie model for holistically conceptualizing and formulating trust in LLMs, with a core component comprehensively exploring trust by tying its two sides, namely the trustor and the trustee, as well as their intricate relationships. We uncover these relationships within the…
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Taxonomy
TopicsArtificial Intelligence in Healthcare and Education · Ethics and Social Impacts of AI · Explainable Artificial Intelligence (XAI)
