Software doping analysis for human oversight

IF 0.7 4区 计算机科学 Q3 COMPUTER SCIENCE, THEORY & METHODS
Sebastian Biewer, Kevin Baum, Sarah Sterz, Holger Hermanns, Sven Hetmank, Markus Langer, Anne Lauber-Rönsberg, Franz Lehr
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引用次数: 0

Abstract

This article introduces a framework that is meant to assist in mitigating societal risks that software can pose. Concretely, this encompasses facets of software doping as well as unfairness and discrimination in high-risk decision-making systems. The term software doping refers to software that contains surreptitiously added functionality that is against the interest of the user. A prominent example of software doping are the tampered emission cleaning systems that were found in millions of cars around the world when the diesel emissions scandal surfaced. The first part of this article combines the formal foundations of software doping analysis with established probabilistic falsification techniques to arrive at a black-box analysis technique for identifying undesired effects of software. We apply this technique to emission cleaning systems in diesel cars but also to high-risk systems that evaluate humans in a possibly unfair or discriminating way. We demonstrate how our approach can assist humans-in-the-loop to make better informed and more responsible decisions. This is to promote effective human oversight, which will be a central requirement enforced by the European Union’s upcoming AI Act. We complement our technical contribution with a juridically, philosophically, and psychologically informed perspective on the potential problems caused by such systems.

Abstract Image

人为监督的软件兴奋剂分析
本文介绍了一个旨在帮助减轻软件可能带来的社会风险的框架。具体而言,这包括软件掺杂以及高风险决策系统中的不公平和歧视问题。软件掺杂指的是软件中偷偷添加了有损用户利益的功能。软件掺杂的一个突出例子是柴油车排放丑闻曝光后,在全球数百万辆汽车中发现的被篡改的排放清洁系统。本文第一部分将软件掺杂分析的形式基础与成熟的概率篡改技术相结合,提出了一种用于识别软件不良影响的黑盒分析技术。我们将这一技术应用于柴油车的排放清洁系统,同时也应用于以可能不公平或歧视的方式评估人类的高风险系统。我们展示了我们的方法如何帮助环路中的人类做出更明智、更负责任的决定。这是为了促进有效的人类监督,这也是欧盟即将出台的人工智能法案的核心要求。我们将从法学、哲学和心理学的角度对此类系统可能造成的问题进行分析,以补充我们在技术上的贡献。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Formal Methods in System Design
Formal Methods in System Design 工程技术-计算机:理论方法
CiteScore
2.00
自引率
12.50%
发文量
16
审稿时长
>12 weeks
期刊介绍: The focus of this journal is on formal methods for designing, implementing, and validating the correctness of hardware (VLSI) and software systems. The stimulus for starting a journal with this goal came from both academia and industry. In both areas, interest in the use of formal methods has increased rapidly during the past few years. The enormous cost and time required to validate new designs has led to the realization that more powerful techniques must be developed. A number of techniques and tools are currently being devised for improving the reliability, and robustness of complex hardware and software systems. While the boundary between the (sub)components of a system that are cast in hardware, firmware, or software continues to blur, the relevant design disciplines and formal methods are maturing rapidly. Consequently, an important (and useful) collection of commonly applicable formal methods are expected to emerge that will strongly influence future design environments and design methods.
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