In this paper, we present a new theoretical approach for enabling domain knowledge acquisition by intelligent systems. We introduce a hybrid model that starts with minimal input knowledge in the form of an upper ontology of concepts, stores and reasons over this knowledge through a knowledge graph database and learns new information through a Logic Neural Network. We study the behavior of this architecture when handling new data and show that the final system is capable of enriching its current knowledge as well as extending it to new domains.
翻译:在本文中,我们展示了一种新的理论方法,使智能系统能够获取域知识。我们引入了一种混合模式,它以最低限度的投入知识为开端,其形式是:通过知识图形数据库,对知识的概念、储存和理由进行上层本体学,并通过逻辑神经网络学习新信息。我们在处理新数据时研究这一架构的行为,并表明最终系统能够丰富其现有知识并将其推广到新领域。