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Trust me! I am a robot: an affective computational account of scaffolding in robot-robot interaction

机译:相信我! 我是一个机器人:机器人机器人交互中的脚手架的情感计算叙述

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Forming trust in a biological or artificial interaction partner that provides reliable strategies and employing the learned strategies to scaffold another agent are critical problems that are often addressed separately in human-robot and robot-robot interaction studies. In this paper, we provide a unified approach to address these issues in robot-robot interaction settings. To be concrete, we present a trust-based affective computational account of scaffolding while performing a sequential visual recalling task. In that, we endow the Pepper humanoid robot with cognitive modules of auto-associative memory and internal reward generation to implement the trust model. The former module is an instance of a cognitive function with an associated neural cost determining the cognitive load of performing visual memory recall. The latter module uses this cost to generate an internal reward signal to facilitate neural cost-based reinforcement learning (RL) in an interactive scenario involving online instructors with different guiding strategies: reliable, less-reliable, and random. These cognitive modules allow the Pepper robot to assess the instructors based on the average cumulative reward it can collect and choose the instructor that helps reduce its cognitive load most as the trustworthy one. After determining the trustworthy instructor, the Pepper robot is recruited to be a caregiver robot to guide a perceptually limited infant robot (i.e., the Nao robot) that performs the same task. In this setting, we equip the Pepper robot with a simple theory of mind module that learns the state-action-reward associations by observing the infant robot’s behavior and guides the learning of the infant robot, similar to when it went through the online agent-robot interactions. The experiment results on this robot-robot interaction scenario indicate that the Pepper robot as a caregiver leverages the decision-making policies – obtained by interacting with the trustworthy instructor– to guide the infant robot to perform the same task efficiently. Overall, this study suggests how robotic-trust can be grounded in human-robot or robot-robot interactions based on cognitive load, and be used as a mechanism to choose the right scaffolding agent for effective knowledge transfer.
机译:在生物学或人工互动合作伙伴中形成信任,提供可靠的策略,并雇用学习策略的脚手架另一个代理人是人类机器人和机器人机器人互动研究中经常被讨论的关键问题。在本文中,我们提供了一个统一的方法来解决机器人机器人交互设置中的这些问题。要具体,我们在执行顺序视觉调用任务时展示了基于信任的脚手架的情感计算帐户。在那之中,我们赋予了人类机器人的辣椒,具有认知模块的自动关联记忆和内部奖励生成来实现信任模型。前模块是具有相关联的神经成本的认知功能的实例,确定执行可视存储器召回的认知负载。后一块模块使用这种成本来生成内部奖励信号,以便在涉及具有不同指导策略的在线教练的交互式场景中促进基于神经成本的强化学习(RL):可靠,可靠,随机。这些认知模块允许Pepper Robot根据可以收集的平均累积奖励评估教师,并选择有助于减少其认知负荷的教练,这些奖励最常作为可信赖的奖励。在确定值得信赖的教练之后,招募辣椒机器人成为护理人员机器人,以引导一个感知有限的婴儿机器人(即Nao机器人),该机器人执行相同的任务。在这个设置中,我们用简单的心灵模块装备辣椒机器人,通过观察婴儿机器人的行为并指导婴儿机器人的学习来学习国家行动奖励关联,类似于它通过在线代理时 - 机器人交互。该实验结果对该机器人 - 机器人交互情景表明,作为护理人员的胡椒机器人利用决策策略 - 通过与值得信赖的教练进行交互来引导婴儿机器人有效地执行相同的任务。总体而言,本研究表明机器人 - 信任如何基于认知载荷的人机或机器人机器人相互作用,并用作选择右支架剂的机制,以便有效的知识转移。

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