Abstract

Sensor ontology models the sensor information and knowledge in a machine-understandable way, which aims at addressing the data heterogeneity problem on the Internet of Things (IoT). However, the existing sensor ontologies are maintained independently for different requirements, which might define the same concept with different terms or context, yielding the heterogeneity issue. Since the complex semantic relationship between the sensor concepts and the large-scale entities is to be dealt with, finding the identical entity correspondences is an error-prone task. To effectively determine the sensor entity correspondences, this work proposes a semisupervised learning-based sensor ontology matching technique. First, we borrow the idea of “centrality” from the social network to construct the training examples; then, we present an evolutionary algorithm- (EA-) based metamatching technique to train the model of aggregating different similarity measures; finally, we use the trained model to match the rest entities. The experiment uses the benchmark as well as three real sensor ontologies to test our proposal’s performance. The experimental results show that our approach is able to determine high-quality sensor entity correspondences in all matching tasks.

Highlights

  • Sensor ontology models the sensor information and knowledge on Internet of ings (IoT) in a machine-understandable way [1]

  • We first require the expert to match a certain number of correct correspondences, which works as the reference alignment in the training phase; the Evolutionary Algorithm (EA) is used to train a model of aggregating similarity measures; the obtained model is used to match the rest sensor entities in the training phase

  • We use the benchmark and three sensor ontologies, i.e., CSIRO sensor ontology (CSIRO), Sensor Network ontology (SSN), and MMI Device ontology (MMI). e selected sensor ontologies are all widely used in SSW, which shares lots of overlapping information

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Summary

Introduction

Sensor ontology models the sensor information and knowledge on Internet of ings (IoT) in a machine-understandable way [1]. Since the complex semantic relationship between the sensor concepts and the large-scale entities is to be dealt with, addressing the sensor ontology heterogeneity problem is an error-prone task. It is difficult to determine a proper weight set for various matching tasks with different heterogeneous features with completely unsupervised way [5]. Security and Communication Networks learning-based sensor ontology matching technique. We first require the expert to match a certain number of correct correspondences, which works as the reference alignment in the training phase; the Evolutionary Algorithm (EA) is used to train a model of aggregating similarity measures; the obtained model is used to match the rest sensor entities in the training phase.

Sensor Ontology Metamatching Problem
The Optimization Model of Metamatching Problem
Semisupervised Learning-Based Sensor Ontology Matching
Experiment and Results
Conclusion and Future Work
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