Vicarious Value Learning and Inference in Human-Human and Human-Robot Interaction

Robert J. Lowe, A. Almer, P. Gander, C. Balkenius
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引用次数: 7

Abstract

Among the biggest challenges for researchers of human-robot interaction is imbuing robots with lifelong learning capacities that allow efficient interactions between humans and robots. In order to address this challenge we are developing computational mechanisms for a humanoid robotic agent utilizing both system 1 and system 2-like cognitive processing capabilities. At the core of this processing is a Social Affective Appraisal model that allows for vicarious value learning and inference. Using a multi-dimensional reinforcement learning approach the robotic agent learns affective value-based functions (system 1). This learning can ground representations of affective relations (predicates) relevant to interacting agents. In this article we discuss the existing theoretical basis for developing our neural network model as a system 1-like process. We also discuss initial ideas for developing system 2-like top-down/generative affective (semantic relation-based) processing. The aim of the symbolic-connectionist architectural development is to promote autonomous capabilities in humanoid robots for interacting efficiently/intelligently (recombinant application of learned associations) with humans in changing and challenging environments.
人机交互中的替代价值学习与推理
人机交互研究人员面临的最大挑战之一是赋予机器人终身学习能力,使人类和机器人之间能够有效地交互。为了解决这一挑战,我们正在开发一个类人机器人代理的计算机制,利用系统1和系统2的认知处理能力。这个过程的核心是一个社会情感评估模型,它允许替代价值学习和推理。使用多维强化学习方法,机器人代理学习基于情感值的函数(系统1)。这种学习可以表示与交互代理相关的情感关系(谓词)。本文讨论了将神经网络模型发展为类系统过程的现有理论基础。我们还讨论了开发类似系统2的自顶向下/生成情感(基于语义关系)处理的初步想法。符号连接主义建筑发展的目的是促进人形机器人在变化和具有挑战性的环境中与人类进行有效/智能交互(重组应用学习关联)的自主能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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