论文标题

使用结构性因果模型表达问责模式

Expressing Accountability Patterns using Structural Causal Models

论文作者

Kacianka, Severin, Ibrahim, Amjad, Pretschner, Alexander

论文摘要

尽管问责制的确切定义和实施取决于特定上下文,但在其核心责任制中描述了一种机制,该机制将使决策透明,并且通常提供制定“不良”决定的手段。因此,问责制与嵌入人类社会,做出决定并可能造成持久伤害的网络物理系统(例如机器人或无人机)特别相关。没有问责制的概念,这种系统可能会有罪不罚,并且不适合社会。尽管有相关性,但目前尚未就其含义达成共识,更重要的是,无法表达这些系统的问责属性。作为解决方案,我们建议使用结构因果模型表达系统的问责制。它们可以表示为人类可读的图形模型,同时还提供数学工具来分析和推理它们。我们的核心贡献是说明如何使用结构性因果模型来表达和分析系统的问责制属性,并且这种方法使我们能够识别问责制模式。这些问责制模式可以分类,并用于改善系统及其架构。

While the exact definition and implementation of accountability depend on the specific context, at its core accountability describes a mechanism that will make decisions transparent and often provides means to sanction "bad" decisions. As such, accountability is specifically relevant for Cyber-Physical Systems, such as robots or drones, that embed themselves into a human society, take decisions and might cause lasting harm. Without a notion of accountability, such systems could behave with impunity and would not fit into society. Despite its relevance, there is currently no agreement on its meaning and, more importantly, no way to express accountability properties for these systems. As a solution we propose to express the accountability properties of systems using Structural Causal Models. They can be represented as human-readable graphical models while also offering mathematical tools to analyze and reason over them. Our central contribution is to show how Structural Causal Models can be used to express and analyze the accountability properties of systems and that this approach allows us to identify accountability patterns. These accountability patterns can be catalogued and used to improve systems and their architectures.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源