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Semantic interoperability between heterogeneous multi-agent systems based on Deep Learning

机译:基于深度学习的异构多主体系统之间的语义互操作性

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Ontologies are important for knowledge-based information systems such as multi-agent systems. Ontologies are a natural solution to ensure a semantic interoperability between heterogeneous multi-agent systems. In this paper, we present a new model that uses a trained neural network to build ontologies adapted from other ontologies in order to solve the problem of semantic interoperability between heterogeneous multi-agent systems (SMAs). The main idea is to attribute to each concept of a given SMA ontology an image label that indicates its semantic representation. To build a new adapted ontology, a trained neural network is used to interpret the ontology concepts of an existing source SMA.
机译:本体对于基于知识的信息系统(例如多主体系统)很重要。本体是确保异构多代理系统之间语义互操作性的自然解决方案。在本文中,我们提出了一个新模型,该模型使用经过训练的神经网络来构建与其他本体适配的本体,以解决异构多智能体系统(SMA)之间的语义互操作性问题。主要思想是给定SMA本体的每个概念一个图像标签,该图像标签指示其语义表示。为了构建新的适应性本体,使用受过训练的神经网络来解释现有源SMA的本体概念。

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