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The well-designed logical robot: Learning and experience from observations to the Situation Calculus

机译:精心设计的逻辑机器人:从观察到情境演算的学习和经验

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摘要

The well-designed logical robot paradigmatically represents, in the words of McCarthy, the abilities that a robot-child should have to reveal the structure of reality within a "language of thought". In this paper we partially support McCarthy's hypothesis by showing that early perception can trigger an inference process leading to the "language of thought". We show this by defining a systematic transformation of structures of different formal languages sharing the same signature kernel for actions and states. Starting from early vision, visual features are encoded by descriptors mapping the space of features into the space of actions. The densities estimated in this space form the observation layer of a hidden states model labelling the identified actions as observations and the states as action preconditions and effects. The learned parameters are used to specify the probability space of a first-order probability model. Finally we show how to transform the probability model into a model of the Situation Calculus in which the learning phase has been reified into axioms for preconditions and effects of actions and, of course, these axioms are expressed in the language of thought. This shows, albeit partially, that there is an underlying structure of perception that can be brought into a logical language.
机译:用麦卡锡的话来说,精心设计的逻辑机器人在范式上代表了一个机器人儿童必须具备的一种能力,才能在“思想语言”中揭示现实的结构。在本文中,我们通过证明早期感知可以触发导致“思想语言”的推理过程,来部分支持麦卡锡的假设。我们通过定义不同形式语言结构的系统转换来显示这一点,这些形式语言共享针对动作和状态使用相同签名内核。从早期视觉开始,视觉特征由将特征空间映射到动作空间的描述符进行编码。在该空间中估计的密度形成了一个隐藏状态模型的观察层,该模型将识别出的动作标记为观察值,将状态标记为动作前提和效果。所学习的参数用于指定一阶概率模型的概率空间。最后,我们展示了如何将概率模型转换为情境演算的模型,在该模型中,学习阶段已针对行为的前提条件和作用进行了公理化,当然,这些公理也以思想语言表达。这表明,尽管有一部分,但它可以将一种潜在的感知结构引入逻辑语言中。

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