Journal Article10.13164/mendel.2023.2.111
Automated Semantic Annotation Deploying Machine Learning Approaches: A Systematic Review
Wee Chea Chang,Anbuselvan Sangodiah +1 more
- 20 Dec 2023
TL;DR: This Systematic Review aims to summarise the existing state-of-the-art literature to answer five Research Questions focusing on machine learning driven semantic annotation automation.
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Abstract: Semantic Web is the vision to make Internet data machine-readable to achieve information retrieval with higher granularity and personalisation. Semantic annotation is the process that binds machine-understandable descriptions into Web resources such as text and images. Hence, the success of Semantic Web dependson the wide availability of semantically annotated Web resources. However, there remains a huge amount of unannotated Web resources due to the limited annotation capability available. In order to address this, machine learning approaches have been used to improve the automation process. This Systematic Review aims to summarise the existing state-of-the-art literature to answer five Research Questions focusing on machine learning driven semantic annotation automation. The analysis of 40 selected primary studies reveals that the use of unitary and combination of machine learning algorithms are both the current directions. SupportVector Machine (SVM) is the most-used algorithm, and supervised learning is the predominant machine learning type. Both semi-automated and fully automated annotation are almost nearly achieved. Meanwhile, text is the most annotated Web resource; and the availability of third-party annotation tools is in-line with this. While Precision, Recall, F-Measure and Accuracy are the most deployed quality metrics, not all the studies measured the quality of the annotated results. In the future, standardising quality measures is the direction for research.
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Figures
![Figure 7: Linear SVM Classifier [52].](/figures/figure7-1-27zz905xnuj4.png)
Figure 7: Linear SVM Classifier [52]. ![Figure 10: Semi-supervised Machine Learning [54].](/figures/figure10-1-51o163xaq2x7.png)
Figure 10: Semi-supervised Machine Learning [54]. 
Table 14: Distribution of Deployed Quality Metrics. ![Table 2: Contingency Matrix for the Annotation Process [78].](/figures/table2-1-1qworinpvlkd.png)
Table 2: Contingency Matrix for the Annotation Process [78]. 
Table 8: Distribution of Unitary Algorithm. 
Table 9: Distribution of Algorithms in Studies with Combinations.
Citations
Exploring Hybrid Models For Short-Term Local Weather Forecasting in IoT Environment
Toai Kim Tran,Roman Senkerik,Hanh Thi Xuan Vo,Huan Minh Vo,Adam Ulrich,Marek Musil,Ivan Zelinka +6 more
- 20 Dec 2023
TL;DR: A hybrid RF-LSTM model is proposed and evaluated in this research paper for the task of short-term local weather forecasting and can capture the actual temperature trend in its prediction performance, which makes it even more relevant for many other possible decision-making steps in sustainable applications.
References
A translation approach to portable ontology specifications
TL;DR: This paper describes a mechanism for defining ontologies that are portable over representation systems, basing Ontolingua itself on an ontology of domain-independent, representational idioms.
14.1K
Text Categorization with Suport Vector Machines: Learning with Many Relevant Features
Thorsten Joachims
- 21 Apr 1998
TL;DR: This paper explores the use of Support Vector Machines for learning text classifiers from examples and analyzes the particular properties of learning with text data and identifies why SVMs are appropriate for this task.
Performing systematic literature reviews in software engineering
David Budgen,Pearl Brereton +1 more
- 28 May 2006
TL;DR: This tutorial is designed to provide an introduction to the role, form and processes involved in performing Systematic Literature Reviews, and to gain the knowledge needed to conduct systematic reviews of their own.
5.8K
Empirical studies of agile software development: A systematic review
Tore Dybå,Torgeir Dingsøyr +1 more
TL;DR: A systematic review of empirical studies of agile software development up to and including 2005 was conducted and provides a map of findings, according to topic, that can be compared for relevance to their own settings and situations.