Actor-Focused Interactive Visualization for AI Planning

G. Cantareira, Gerard Canal, R. Borgo
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引用次数: 1

Abstract

As we grow more reliant on AI systems for an increasing variety of applications in our lives, the need to understand and interpret such systems also becomes more pronounced, be it for improvement, trust, or legal liability. AI Planning is one type of task that provides explanation challenges, particularly due to the increasing complexity in generated plans and convoluted causal chains that connect actions and determine overall plan structure. While there are many recent techniques to support plan explanation, visual aids for navigating this data are quite limited. Furthermore, there is often a barrier between techniques focused on abstract planning concepts and domain-related explanations. In this paper, we present a visual analytics tool to support plan summarization and interaction, focusing in robotics domains using an actor-based structure. We show how users can quickly grasp vital information about actions involved in a plan and how they relate to each other. Finally, we present a framework used to design our tool, highlighting how general PDDL elements can be converted into visual representations and further connecting concept to domain.
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面向AI规划的以参与者为中心的交互式可视化
随着我们越来越依赖于人工智能系统在生活中越来越多的应用,理解和解释这些系统的需求也变得更加明显,无论是为了改进、信任还是法律责任。AI Planning是一种提供解释挑战的任务类型,特别是由于生成的计划和连接行动并决定整体计划结构的错综复杂的因果链越来越复杂。虽然最近有许多技术支持计划解释,但用于导航这些数据的可视化辅助工具相当有限。此外,在专注于抽象规划概念的技术和与领域相关的解释之间经常存在障碍。在本文中,我们提出了一个可视化的分析工具,以支持计划总结和交互,重点在机器人领域使用基于角色的结构。我们展示了用户如何快速掌握计划中涉及的行动的重要信息,以及它们如何相互关联。最后,我们提出了一个用于设计我们的工具的框架,强调了如何将一般的PDDL元素转换为可视化表示,并进一步将概念连接到领域。
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