I Am What I Am – Roles for Artificial Intelligence from the Users’ Perspective

R. Philipsen, P. Brauner, Hannah Biermann, M. Ziefle
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引用次数: 1

Abstract

With increasing digitization, intelligent software systems are taking over more tasks in everyday human life, both in private and professional contexts. So-called artificial intelligence (AI) ranges from subtle and often unnoticed improvements in daily life, optimizations in data evaluation, assistance systems with which the people interact directly, to perhaps artificial anthropomorphic entities in the future. How-ever, no etiquette yet exists for integrating AI into the human living environment, which has evolved over millennia for human interaction. This paper addresses what roles AI may take, what knowledge AI may have, and how this is influenced by user characteristics. The results show that roles with personal relationships, such as an AI as a friend or partner, are not preferred by users. The higher the confidence in an AI's handling of data, the more likely personal roles are seen as an option for the AI, while the preference for subordinate roles, such as an AI as a servant or a subject, depends on general technology acceptance and belief in a dangerous world. The role attribution is independent from the usage intention and the semantic perception of artificial intelligence, which differs only slightly, e.g., in terms of morality and controllability, from the perception of human intelligence.
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我就是我——从用户角度看人工智能的角色
随着数字化程度的提高,智能软件系统在日常生活中承担了越来越多的任务,无论是在私人生活还是在专业环境中。所谓的人工智能(AI)包括日常生活中细微的、通常不被注意的改进、数据评估的优化、与人直接互动的辅助系统,以及未来可能出现的人工拟人化实体。然而,目前还没有将人工智能融入人类生活环境的礼仪,人类的生活环境已经进化了几千年。本文讨论了AI可能扮演的角色,AI可能拥有的知识,以及这如何受到用户特征的影响。结果显示,用户并不喜欢具有个人关系的角色,比如将人工智能作为朋友或伙伴。对人工智能处理数据的信心越高,就越有可能将个人角色视为人工智能的一种选择,而对从属角色的偏好,如人工智能作为仆人或主体,取决于对危险世界的普遍技术接受度和信念。角色归因独立于人工智能的使用意图和语义感知,与人类智能感知仅在道德和可控性等方面略有不同。
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