Neuro-symbolic AI attempts to integrate neural and symbolic architectures in a manner that addresses strengths and weaknesses of each, in a complementary fashion, in order to support robust strong AI capable of reasoning, learning, and cognitive modeling. In this paper we consider the intensional First Order Logic (IFOL) as a symbolic architecture of modern robots, able to use natural languages to communicate with humans and to reason about their own knowledge with self-reference and abstraction language property. We intend to obtain the grounding of robot's language by experience of how it uses its neuronal architectures and hence by associating this experience with the mining (sense) of non-defined language concepts (particulars/individuals and universals) in PRP (Properties/Relations/propositions) theory of IFOL. We consider three natural language levels: The syntax of particular natural language (Italian, French, etc..), and two universal language properties: its semantic logic structure (based on virtual predicates of FOL and logic connectives), and its corresponding conceptual PRP structure which universally represents the composite mining of FOL formulae grounded on the robot's neuro system.
翻译:以互补的方式,试图将神经和象征结构整合为一体,处理每个结构的优缺点,以互补的方式,支持强有力的强有力的能进行推理、学习和认知模型的强力人工智能。在本文件中,我们认为强化第一顺序逻辑(IFOL)是现代机器人的象征性结构,能够使用自然语言与人类沟通,并用自我参照和抽象语言属性来解释自己的知识。我们打算通过体验机器人语言如何使用神经结构,从而将这一经验与非定义语言概念(部分/个人和通用)的挖掘(感知)联系起来,从而获得机器人语言的基础。我们考虑三种自然语言层面:特定自然语言(意大利语、法语等)的合成税和两种通用语言特性:其语义逻辑结构(基于FOL和逻辑连接的虚拟前导和逻辑),以及其相应的概念性PRP结构,它普遍代表了FOL的复合公式。