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Learning behavioral norms in uncertain and changing contexts

机译:在不确定和变化的环境中学习行为规范

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Human behavior is often guided by social and moral norms. Robots that enter human societies must therefore behave in norm-conforming ways as well to increase coordination, predictability, and safety in human-robot interactions. However, human norms are context-specific and laced with uncertainty, making the representation, learning, and communication of norms challenging. We provide a formal representation of norms using deontic logic, Dempster-Shafer Theory, and a machine learning algorithm that allows an artificial agent to learn norms under uncertainty from human data. We demonstrate a novel cognitive capability with which an agent can dynamically learn norms while being exposed to distinct contexts, recognizing the unique identity of each context and the norms that apply in it.
机译:人的行为通常以社会和道德规范为指导。因此,进入人类社会的机器人必须以符合规范的方式运行,以提高人机交互中的协调性,可预测性和安全性。但是,人类规范是针对特定上下文的,并且充满不确定性,这使得规范的表示,学习和沟通具有挑战性。我们提供使用规范逻辑,Dempster-Shafer理论以及机器学习算法的规范的形式表示,该算法允许人工代理在不确定性下从人类数据中学习规范。我们展示了一种新颖的认知能力,借助该能力,代理可以在暴露于不同上下文的情况下动态学习规范,从而认识到每种上下文的唯一身份以及适用于其中的规范。

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