Recent engineering developments have seen the emergence of Machine Learning (ML) as a powerful form of data analysis with widespread applicability beyond its historical roots in the design of autonomous agents. However, relatively little attention has been paid to the interaction between people and ML systems. Recent developments on Explainable ML address this by providing visual and textual information on how the ML system arrived at a conclusion. In this paper we view the interaction between humans and ML systems within the broader context of interaction between agents capable of learning and explanation. Within this setting, we argue that it is more helpful to view the interaction as characterised by two-way intelligibility of information rather than once-off explanation of a prediction. We formulate two-way intelligibility as a property of a communication protocol. Development of the protocol is motivated by a set of `Intelligibility Axioms' for decision-support systems that use ML with a human-in-the-loop. The axioms are intended as sufficient criteria to claim that: (a) information provided by a human is intelligible to an ML system; and (b) information provided by an ML system is intelligible to a human. The axioms inform the design of a general synchronous interaction model between agents capable of learning and explanation. We identify conditions of compatibility between agents that result in bounded communication, and define Weak and Strong Two-Way Intelligibility between agents as properties of the communication protocol.
翻译:近来的工程发展将机器学习(ML)视为一种强有力的数据分析形式,在设计自主剂的历史根源之外,这种分析的广泛适用性超越了自主剂的历史根源,然而,相对较少注意人与ML系统之间的相互作用,但相对较少注意人与ML系统之间的相互作用,最近关于可解释的ML系统的动态通过提供有关ML系统如何得出结论的视觉和文字信息来解决这个问题。在本文件中,我们认为人与ML系统之间在能够学习和解释的代理人之间互动的更广泛范围内的互动关系。在这一背景下,我们认为,将这种相互作用视为双向智能信息而不是对预测的一次性解释更为有益。我们把双向智能作为通信协议的属性。我们把双向智能作为通信协议的属性。我们把双向智能信息作为通信协议的属性。我们开发了双向双向智能,作为通信协议的属性。 制定协议的动机是一套“可理解性AxI”决定支持系统,使用ML系统与动态代理人之间的可靠互动性定义了我们之间一个动态的模型。