人工智能需要知道什么才能驱动:测试知识的相关性

IF 1.5 4区 计算机科学 Q3 COMPUTER SCIENCE, SOFTWARE ENGINEERING
Dominik Grundt, Astrid Rakow, Philipp Borchers, Eike Möhlmann
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引用次数: 0

摘要

人工智能(AI)在管理自动驾驶的复杂性方面发挥着重要作用。尽管如此,训练和确保人工智能的安全仍具有挑战性。从已知情况到未知情况的安全推广仍然是一个未解决的问题。将知识注入人工智能驱动功能似乎是解决泛化、开发成本和培训效率问题的一种很有前途的方法。我们认为,确定知识注入的相关性为知识注入的前一个发展阶段的正确执行提供了强有力的指示。作为AI性能的因果原因,相关知识对于解释AI行为非常重要。本文定义了知识注入人工智能中相关知识和交通场景需求满足的新概念。我们提出了一个基于场景的测试过程,该过程不仅可以检查知识注入的AI模型是否满足给定的需求R,还可以提供关于注入知识的相关性的陈述。最后,我们描述了一种生成抽象知识场景的系统方法,以使我们的相关性测试过程能够有效地应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
What does AI need to know to drive: Testing relevance of knowledge
Artificial Intelligence (AI) plays an important role in managing the complexity of automated driving. Nonetheless, training and ensuring the safety of AI is challenging. The safe generalization from a known to an unknown situation remains an unsolved problem. Infusing knowledge into AI driving functions seems a promising approach to address generalization, development costs, and training efficiency. We reason that ascertaining the relevance of infused knowledge provides a strong indication of the correct execution of previous development phases of knowledge infusion. As a causal reason for AI performance, relevant knowledge is important for explaining AI behavior. This paper defines a novel notion of relevant knowledge in knowledge-infused AI and for requirements satisfaction in traffic scenarios. We present a scenario-based testing procedure that not only checks whether a knowledge-infused AI model satisfies a given requirement R but also provides statements on the relevance of infused knowledge. Finally, we describe a systematic method for generating abstract knowledge scenarios to enable an efficient application of our relevance testing procedure.
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来源期刊
Science of Computer Programming
Science of Computer Programming 工程技术-计算机:软件工程
CiteScore
3.80
自引率
0.00%
发文量
76
审稿时长
67 days
期刊介绍: Science of Computer Programming is dedicated to the distribution of research results in the areas of software systems development, use and maintenance, including the software aspects of hardware design. The journal has a wide scope ranging from the many facets of methodological foundations to the details of technical issues andthe aspects of industrial practice. The subjects of interest to SCP cover the entire spectrum of methods for the entire life cycle of software systems, including • Requirements, specification, design, validation, verification, coding, testing, maintenance, metrics and renovation of software; • Design, implementation and evaluation of programming languages; • Programming environments, development tools, visualisation and animation; • Management of the development process; • Human factors in software, software for social interaction, software for social computing; • Cyber physical systems, and software for the interaction between the physical and the machine; • Software aspects of infrastructure services, system administration, and network management.
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