Xue Xingsi, Wang Haolin, Liu Wenyu
Intelligent Information Processing Research Center, Fujian University of Technology, Fuzhou, Fujian, China.
Guangxi Key Laboratory of Automatic Detecting Technology and Instruments, Guilin University of Electronic Technology, Guilin, Guangxi, China.
PeerJ Comput Sci. 2021 Nov 19;7:e763. doi: 10.7717/peerj-cs.763. eCollection 2021.
Sensor ontologies formally model the core concepts in the sensor domain and their relationships, which facilitates the trusted communication and collaboration of Artificial Intelligence of Things (AIoT). However, due to the subjectivity of the ontology building process, sensor ontologies might be defined by different terms, leading to the problem of heterogeneity. In order to integrate the knowledge of two heterogeneous sensor ontologies, it is necessary to determine the correspondence between two heterogeneous concepts, which is the so-called ontology matching. Recently, more and more neural networks have been considered as an effective approach to address the ontology heterogeneity problem, but they require a large number of manually labelled training samples to train the network, which poses an open challenge. In order to improve the quality of the sensor ontology alignment, an unsupervised neural network model is proposed in this work. It first models the ontology matching problem as a binary classification problem, and then uses a competitive learning strategy to efficiently cluster the ontologies to be matched, which does not require the labelled training samples. The experiment utilizes the benchmark track provided by the Ontology Alignment Evaluation Initiative (OAEI) and multiple real sensor ontology alignment tasks to test our proposal's performance. The experimental results show that the proposed approach is able to determine higher quality alignment results compared to other matching strategies under different domain knowledge such as bibliographic and real sensor ontologies.
传感器本体对传感器领域的核心概念及其关系进行形式化建模,这有助于物联网人工智能(AIoT)的可信通信与协作。然而,由于本体构建过程的主观性,传感器本体可能由不同的术语定义,从而导致异构性问题。为了整合两个异构传感器本体的知识,有必要确定两个异构概念之间的对应关系,即所谓的本体匹配。最近,越来越多的神经网络被视为解决本体异构性问题的有效方法,但它们需要大量人工标注的训练样本进行网络训练,这构成了一个开放性挑战。为了提高传感器本体对齐的质量,本文提出了一种无监督神经网络模型。它首先将本体匹配问题建模为一个二分类问题,然后使用竞争学习策略对要匹配的本体进行有效聚类,这不需要标注的训练样本。实验利用本体对齐评估倡议(OAEI)提供的基准跟踪和多个实际传感器本体对齐任务来测试我们提案的性能。实验结果表明,与其他匹配策略相比,在诸如书目和实际传感器本体等不同领域知识下,该方法能够确定更高质量的对齐结果。