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Preference Change in Persuasive Robotics

2022-06-21 12:29:00
Matija Franklin, Hal Ashton

Abstract

Human-robot interaction exerts influence towards the human, which often changes behavior. This article explores an externality of this changed behavior - preference change. It expands on previous work on preference change in AI systems. Specifically, this article will explore how a robot's adaptive behavior, personalized to the user, can exert influence through social interactions, that in turn change a user's preference. It argues that the risk of this is high given a robot's unique ability to influence behavior compared to other pervasive technologies. Persuasive Robotics thus runs the risk of being manipulative.

Abstract (translated)

URL

https://arxiv.org/abs/2206.10300

PDF

https://arxiv.org/pdf/2206.10300.pdf


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