Social Robotics through an Anticipatory Governance Lens

Author(s):  
Lucy Diep ◽  
John-John Cabibihan ◽  
Gregor Wolbring
2021 ◽  
Vol 8 ◽  
Author(s):  
Jesse De Pagter

In recent years, the governance of robotic technologies has become an important topic in policy-making contexts. The many potential applications and roles of robots in combination with steady advances in their uptake within society are expected to cause various unprecedented issues, which in many cases will increase the demand for new policy measures. One of the major issues is the way in which societies will address potential changes in the moral and legal status of autonomous social robots. Robot standing is an important concept that aims to understand and elaborate on such changes in robots’ status. This paper explores the concept of robot standing as a useful idea that can assist in the anticipatory governance of social robots. However, at the same time, the concept necessarily involves forms of speculative thinking, as it is anticipating a future that has not yet fully arrived. This paper elaborates on how such speculative engagement with the potential of technology represents an important point of discussion in the critical study of technology more generally. The paper then situates social robotics in the context of anticipatory technology governance by emphasizing the idea that robots are currently in the process of becoming constituted as objects of governance. Subsequently, it explains how specifically a speculative concept like robot standing can be of value in this process.


2020 ◽  
Vol 31 (4) ◽  
pp. 109
Author(s):  
Elena Seredkina

Sensors ◽  
2021 ◽  
Vol 21 (4) ◽  
pp. 1292
Author(s):  
Neziha Akalin ◽  
Amy Loutfi

This article surveys reinforcement learning approaches in social robotics. Reinforcement learning is a framework for decision-making problems in which an agent interacts through trial-and-error with its environment to discover an optimal behavior. Since interaction is a key component in both reinforcement learning and social robotics, it can be a well-suited approach for real-world interactions with physically embodied social robots. The scope of the paper is focused particularly on studies that include social physical robots and real-world human-robot interactions with users. We present a thorough analysis of reinforcement learning approaches in social robotics. In addition to a survey, we categorize existent reinforcement learning approaches based on the used method and the design of the reward mechanisms. Moreover, since communication capability is a prominent feature of social robots, we discuss and group the papers based on the communication medium used for reward formulation. Considering the importance of designing the reward function, we also provide a categorization of the papers based on the nature of the reward. This categorization includes three major themes: interactive reinforcement learning, intrinsically motivated methods, and task performance-driven methods. The benefits and challenges of reinforcement learning in social robotics, evaluation methods of the papers regarding whether or not they use subjective and algorithmic measures, a discussion in the view of real-world reinforcement learning challenges and proposed solutions, the points that remain to be explored, including the approaches that have thus far received less attention is also given in the paper. Thus, this paper aims to become a starting point for researchers interested in using and applying reinforcement learning methods in this particular research field.


Sign in / Sign up

Export Citation Format

Share Document