AIJul 15, 2025

Collaborative Trustworthiness for Good Decision Making in Autonomous Systems

arXiv:2507.11135v1
Originality Incremental advance
AI Analysis

This work addresses the problem of trustworthy decision-making in autonomous systems for applications like mobility, but it appears incremental as it builds on existing methods with specific adaptations.

The paper tackles the challenge of ensuring safe and correct behavior in autonomous systems by proposing a collaborative approach that uses quality attributes like perception quality to determine trustworthiness, borrowing concepts from social epistemology for aggregation and propagation rules, and employing Binary Decision Diagrams for efficient automated reasoning.

Autonomous systems are becoming an integral part of many application domains, like in the mobility sector. However, ensuring their safe and correct behaviour in dynamic and complex environments remains a significant challenge, where systems should autonomously make decisions e.g., about manoeuvring. We propose in this paper a general collaborative approach for increasing the level of trustworthiness in the environment of operation and improve reliability and good decision making in autonomous system. In the presence of conflicting information, aggregation becomes a major issue for trustworthy decision making based on collaborative data sharing. Unlike classical approaches in the literature that rely on consensus or majority as aggregation rule, we exploit the fact that autonomous systems have different quality attributes like perception quality. We use this criteria to determine which autonomous systems are trustworthy and borrow concepts from social epistemology to define aggregation and propagation rules, used for automated decision making. We use Binary Decision Diagrams (BDDs) as formal models for beliefs aggregation and propagation, and formulate reduction rules to reduce the size of the BDDs and allow efficient computation structures for collaborative automated reasoning.

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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