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用于在人机协作中实现合理信任的解释性机器学习:文件删除建议实验

Explanatory machine learning for justified trust in human-AI collaboration: Experiments on file deletion recommendations.

作者信息

Göbel Kyra, Niessen Cornelia, Seufert Sebastian, Schmid Ute

机构信息

Department of Psychology, Work and Organizational Psychology Unit, Friedrich-Alexander University of Erlangen-Nürnberg, Erlangen, Germany.

Information Systems and Applied Computer Science, University of Bamberg, Bamberg, Germany.

出版信息

Front Artif Intell. 2022 Nov 23;5:919534. doi: 10.3389/frai.2022.919534. eCollection 2022.

Abstract

In the digital age, saving and accumulating large amounts of digital data is a common phenomenon. However, saving does not only consume energy, but may also cause information overload and prevent people from staying focused and working effectively. We present and systematically examine an explanatory AI system (Dare2Del), which supports individuals to delete irrelevant digital objects. To give recommendations for the optimization of related human-computer interactions, we vary different design features (explanations, familiarity, verifiability) within and across three experiments ( = 61, = 33, = 73). Moreover, building on the concept of distributed cognition, we check possible cross-connections between external (digital) and internal (human) memory. Specifically, we examine whether deleting external files also contributes to human forgetting of the related mental representations. Multilevel modeling results show the importance of presenting explanations for the acceptance of deleting suggestions in all three experiments, but also point to the need of their verifiability to generate trust in the system. However, we did not find clear evidence that deleting computer files contributes to human forgetting of the related memories. Based on our findings, we provide basic recommendations for the design of AI systems that can help to reduce the burden on people and the digital environment, and suggest directions for future research.

摘要

在数字时代,保存和积累大量数字数据是一种常见现象。然而,保存不仅会消耗能源,还可能导致信息过载,使人无法保持专注并高效工作。我们提出并系统地研究了一个解释性人工智能系统(Dare2Del),该系统支持个人删除无关的数字对象。为了为优化相关人机交互提供建议,我们在三个实验(N1 = 61,N2 = 33,N3 = 73)中以及跨实验改变了不同的设计特征(解释、熟悉度、可验证性)。此外,基于分布式认知的概念,我们检查了外部(数字)记忆和内部(人类)记忆之间可能的交叉联系。具体而言,我们研究删除外部文件是否也有助于人类忘记相关的心理表征。多层次建模结果表明,在所有三个实验中,提供解释对于接受删除建议都很重要,但也指出需要其可验证性以在系统中产生信任。然而,我们没有找到明确的证据表明删除计算机文件有助于人类忘记相关记忆。基于我们的研究结果,我们为人工智能系统的设计提供了基本建议,这些建议有助于减轻人们和数字环境的负担,并为未来的研究指明方向。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/5805/9727201/44999a5bf537/frai-05-919534-g0001.jpg

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