Mining knowledge graphs to map heterogeneous relations between the internet of things patterns
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Date
Authors
Sithole, Vusi
Marshall, Linda
Journal Title
Journal ISSN
Volume Title
Publisher
Institute of Advanced Engineering and Science
Abstract
Patterns for the internet of things (IoT) which represent proven solutions used to solve design problems in the IoT are numerous. Similar to object-oriented design patterns, these IoT patterns contain multiple mutual heterogeneous relationships. However, these pattern relationships are hidden and virtually unidentified in most documents. In this paper, we use machine learning techniques to automatically mine knowledge graphs to map these relationships between several IoT patterns. The end result is a semantic knowledge graph database which outlines patterns as vertices and their relations as edges. We have identified four main relationships between the IoT patterns - a pattern is similar to another pattern if it addresses the same use case problem, a large-scale pattern uses a small- scale pattern in a lower level layer, a large pattern is composed of multiple smaller scale patterns underneath it, and patterns complement and combine with each other to resolve a given use case problem. Our results show some promising prospects towards the use of machine learning techniques to generate an automated repository to organise the IoT patterns, which are usually extracted at various levels of abstraction and granularity.
Description
Keywords
Internet of Things (IoT), Knowledge graphs, Patterns, Text processing, Topic modelling
Sustainable Development Goals
Citation
Sithole, V. & Marshall, L. 2021, 'Mining knowledge graphs to map heterogeneous relations between the internet of things patterns', International Journal of Electrical and Computer Engineering, vol. 11, no. 6, pp. 5066-5080, DOI: 10.11591/ijece.v11i6.pp5066-5080,