论文标题
透明度对人类互动的影响
Transparency's Influence on Human-Collective Interactions
论文作者
论文摘要
集体机器人系统具有明显的全球智能和新兴行为,具有生物学启发和有利的。许多应用程序可以从集体的合并中受益,包括环境监测,灾难响应任务和基础设施支持。透明度研究主要集中于模型,可视化和控制机制的设计如何影响人类的相互作用。传统上,大多数评估仅集中在一个特定的系统设计元素上,评估其各自的透明度。该手稿分析了两个模型和可视化,以了解系统设计元素如何影响人类互动,以量化哪种模型和可视化组合提供了最佳的透明度,并基于对集体的远程监督提供了设计指导。分析了共识决策和基线模型,以及单个代理和抽象可视化,以制定连续的N决策任务,涉及四个集体,这些任务由每个200个实体组成。模型和可视化都提供了透明度,并以不同的方式影响了人类的相互作用。没有一个组合提供最佳的透明度。
Collective robotic systems are biologically inspired and advantageous due to their apparent global intelligence and emergent behaviors. Many applications can benefit from the incorporation of collectives, including environmental monitoring, disaster response missions, and infrastructure support. Transparency research has primarily focused on how the design of the models, visualizations, and control mechanisms influence human-collective interactions. Traditionally most evaluations have focused only on one particular system design element, evaluating its respective transparency. This manuscript analyzed two models and visualizations to understand how the system design elements impacted human-collective interactions, to quantify which model and visualization combination provided the best transparency, and provide design guidance, based on remote supervision of collectives. The consensus decision-making and baseline models, as well as an individual agent and abstract visualizations, were analyzed for sequential best-of-n decision-making tasks involving four collectives, composed of 200 entities each. Both models and visualizations provided transparency and influenced human-collective interactions differently. No single combination provided the best transparency.