Table of contents : Cover Half Title Series Page Title Page Copyright Page Table of Contents Notes on Editors List of Contributors Preface Chapter 1 Semantic Web Technologies 1.1 Introduction 1.2 The Concept of Semantic Web 1.3 Semantic Web Technologies 1.3.1 Semantic Web Standards 1.3.1.1 URI/IRI 1.3.1.2 XML 1.3.1.3 RDF/RDFS 1.3.1.4 SKOS 1.3.1.5 OWL 1.3.1.6 SPARQL 1.3.1.7 RIF 1.3.2 Semantic Web Methods 1.3.2.1 Contextual Analysis 1.3.2.2 Reasoning Engine 1.3.2.3 Natural Language Understanding 1.3.2.4 Knowledge Graph 1.3.2.5 Linked Data 1.3.2.6 Ontology 1.3.3 Semantic Web Tools 1.3.3.1 Semantic Knowledge Annotation Tools 1.3.3.2 Semantic Knowledge Acquisition Tools 1.3.3.3 Semantic Knowledge Representation Tools 1.3.3.4 Reasoners 1.4 A Peep into the Pragmatics of Semantic Web Technologies 1.5 Conclusion References Chapter 2 Leveraging Semantic Web Technologies for Veracity Assessment of Big Biodiversity Data 2.1 Introduction 2.1.1 Motivation and Research Challenges 2.1.2 Research Objectives 2.2 Related Work 2.3 Method 2.3.1 Data Definitions 2.3.2 Data Consistency Analysis 2.3.3 Data Mapping Procedures 2.4 Result 2.4.1 Dataset 2.4.2 Dataset Vocabulary 2.4.3 Data Structure Analysis 2.4.4 Data Type Analysis 2.4.5 Data Granularity Analysis 2.5 Conclusion Acknowledgement References Notes Chapter 3 Semantic Web Technologies: Latest Industrial Applications 3.1 Introduction 3.2 Business Value of Semantic Web Technology (SWT) 3.2.1 Graph Databases 3.2.2 SWT and Machine Learning 3.2.3 Semantic Models 3.2.4 Agile Data 3.2.5 Data Integrity 3.2.6 W3C Standards 3.2.7 Data Governance 3.2.8 Explainable Inferences 3.2.9 Linked Data 3.2.10 Data Visualization 3.2.11 Data Virtualization 3.2.12 Digital Twins 3.3 The Big Picture: A Data Fabric 3.4 Semantic Web Technology Applications 3.4.1 Semantic Search 3.4.2 Internet of Things (IoT) 3.4.3 Expert Systems and AI 3.4.4 Harmonization 3.4.5 Enterprise Data Models 3.4.6 Enterprise 360 3.4.6.1 Montefiore and Franz Entity-Event Model 3.4.7 Recommendation Engines 3.5 Conclusion 3.5.1 Barriers to Adoption 3.5.2 Suggested Next Steps 3.5.2.1 Avoid Analysis Paralysis 3.5.2.2 Utilize Agile Methods 3.5.2.3 Start with an “Easy Win” First Project with Business Value 3.5.2.4 Expand Your Knowledge of SWT 3.6 Glossary References Chapter 4 Latest Applications of Semantic Web Technologies for Service Industry 4.1 Introduction 4.2 Applications of SWTs in Business and Finance 4.2.1 Business Intelligence Applications 4.2.2 Customer Relationship Management Applications 4.2.3 Content Discovery 4.2.4 Collaboration 4.3 Applications of SWTs in Law 4.3.1 Storage of Information in Law 4.3.2 Information Retrieval in Law 4.3.3 Question and Answering in Law 4.3.4 Summarization in Law 4.4 Applications of SWTs in Health 4.4.1 SWTs and Standardization/Interoperability in Health 4.4.2 SWTs and Clinical Information Management 4.4.3 SWTs and Precision Medicine 4.5 Applications of SWTs in Security 4.5.1 Application of SWTs to Cyber-security 4.5.2 Application of SWTs to Counter-Terrorism 4.5.3 Application of SWTs to Policing 4.6 Applications of SWTs in Education 4.6.1 SWTs and Resource Retrieval 4.6.2 SWTs and Resource Recommendation 4.6.3 SWT and Adaptive e-Learning 4.7 Applications of SWTs in Research and Development 4.7.1 SWTs and Knowledge Production 4.7.2 SWTs and Knowledge Accumulation 4.7.3 SWTs and Knowledge Application 4.8 Applications of SWTs in Communication 4.8.1 SWTs and Telecommunication Service Delivery 4.8.2 SWTs and Social Media Platforms 4.9 Applications of SWTs in Hospitality 4.9.1 SWTs and Guest Attraction 4.9.2 SWTs and Guest Retention 4.10 Applications of SWTs in Utility 4.11 Applications of SWTs in Governance 4.12 Applications of SWTs in Logistics and Transportation 4.12.1 SWTs and Land L&T Industry 4.12.2 SWTs and Air L&T Industry 4.12.3 SWTs and Water L&T Industry 4.13 Applications of SWTs in Meteorology 4.14 Summary and Conclusion References Notes Chapter 5 Semantic Web Ontology Centred University Course Recommendation Scheme 5.1 E-learning 5.1.1 E-learning during Covid19 5.2 Recommender Systems 5.2.1 Recommendation Systems in the E-learning Domain 5.3 Ontology 5.3.1 Applications of Ontology 5.3.1.1 Ontologies in E-learning 5.3.2 Ontology-Based Recommender Systems in E-learning 5.3.3 Case Study 5.4 Performance Analysis 5.5 Conclusion References Chapter 6 Exploring Reasoning for Utilizing the Full Potential of Semantic Web 6.1 Introduction 6.1.1 Semantics in Semantic Web 6.1.2 Semantic Web Architecture 6.2 Ontologies 6.2.1 Role of Ontologies in Semantic Web 6.3 Web Ontology Language (OWL) 6.3.1 DL Reasoners 6.4 Rules in Semantic Web 6.4.1 Need for Rules 6.4.2 Limitations of Ontology Formalisms 6.4.3 Ontologies and Rules 6.4.4 Importance of Rules 6.4.5 Rules-Based Reasoning 6.4.5.1 Types of Rules 6.4.5.2 Rule Languages 6.4.5.3 Rule Engine 6.5 Conclusion References Chapter 7 Ontology Modeling: An Overview of Semantic Web Ontology Formalisms and Engineering Approaches with Editorial Tools 7.1 Introduction 7.2 Ontology Modeling Methodology 7.2.1 SAMOD 7.2.2 TOVE 7.2.3 Pattern-Based 7.2.4 Methontology 7.2.5 Lexicon-Based 7.2.6 KACTUS 7.2.7 Horrocks Method 7.2.8 Developing Ontology-Grounded Methods and Applications(DOGMA) 7.2.9 Fuzzy Ontology Development Method 7.3 Ontology Modeling Formalisms 7.3.1 Ontology Languages 7.3.1.1 XML 7.3.1.2 DAML and OIL 7.3.1.3 RDF+RDFS 7.3.1.4 KIF 7.3.1.5 RIF 7.3.1.6 SADL 7.3.1.7 OWL 7.3.2 Semantic Query and Rule Languages 7.3.2.1 Query Languages 7.3.2.2 SWRL 7.3.2.3 SQWRL 7.3.2.4 Semantic Web Reasoners and Rule Engines 7.4 Ontology Modeling Tools 7.4.1 SWOOP 7.4.2 Apollo 7.4.3 OntoEdit 7.4.4 KAON 7.4.5 WebOnto 7.4.6 OntoStudio 7.4.7 Ontolingua 7.4.8 RDFedit 7.4.9 SWIDE 7.4.10 DODDLE-OWL 7.4.11 TopBraid Composer 7.4.12 IODT 7.4.13 LinkFactory Workbench 7.4.14 Protégé 7.5 Conclusion References Chapter 8 Semantic Annotation of Objects of Interest in Digitized Herbarium Specimens for Fine-Grained Object Classification 8.1 Introduction 8.1.1 Annotation of Digitized Herbarium Specimen 8.1.2 Motivation 8.2 Related Work 8.2.1 Ontology for Biodiversity Research 8.2.2 Semantic Annotation for Biodiversity Research 8.2.3 Contributions 8.3 Method 8.3.1 Methodology 8.3.2 Schema Development 8.3.2.1 Entities 8.3.2.2 Entity Relationships 8.3.3 Mapping Rules 8.4 Result 8.4.1 Dataset 8.4.2 Schema 8.4.3 Data Mapping 8.4.4 Discussion 8.5 Conclusion Acknowledgment References Notes Chapter 9 UpOnto: Strategic Conceptual Ontology Modeling for Unit Operations in Chemical Industries and Their Retrieval Using Firefly Algorithm 9.1 Introduction 9.2 Related Works 9.3 Methodology 9.4 Implementation 9.4.1 Description of Processes in XML 9.4.2 Description of Objects 9.4.3 RDF/OWL Classification of the Reaction Hierarchy 9.4.4 Ontology Modeling using Protégé 9.4.5 Ontology Visualization 9.5 Results and Evaluation 9.5.1 Semiotic Evaluation 9.5.2 Retrieval of the Ontology 9.5.3 Retrieval Evaluation 9.6 Conclusion References Chapter 10 Ontologies for Knowledge Representation: Tools and Techniques for Building Ontologies 10.1 Introduction 10.2 Ontology Representation Languages 10.3 Types of Ontologies 10.3.1 General-Purpose Ontologies 10.3.2 Domain-Specific Ontologies 10.4 Techniques for Building Ontologies 10.4.1 Constructing Ontologies from Scratch 10.4.1.1 Case Study on Building Library Ontology 10.4.2 Automatic Construction of Ontologies 10.4.3 Reusability Approach to Ontology Construction 10.4.3.1 Case Study on Building College Management System Ontology (CMS) 10.4.4 Agile Methodology for Ontology Development 10.5 Ontology Editors and Visualization Tools 10.5.1 Ontolingua Server 10.5.2 Protégé 10.5.3 Swoop 10.5.4 OntoEdit 10.5.5 Apollo 10.5.6 OntoViz 10.5.7 WebVOWL 10.5.8 BioOntoVis 10.6 Applications of Ontology and Semantic Web Technologies 10.7 Ontologies for Knowledge Representation: Opportunities and Challenges 10.8 Conclusion References Chapter 11 Data Science and Ontologies: An Exploratory Study 11.1 Introduction 11.2 Ontologies 11.3 Role of Ontologies in Data Science 11.3.1 Semantic Data Modelling 11.3.2 Semantic Data Integration 11.3.3 Semantic Data Mining 11.4 Data Science Ontologies 11.5 Related Work 11.6 Conclusion References Chapter 12 Ontology Application to Constructing the GMDH-Based Inductive Modeling Tools 12.1 Introduction 12.2 Ontology as the Knowledge Structure of a Domain 12.3 GMDH-based Inductive Modeling as a Technology of Transition from Statistical Data to Mathematical Models 12.3.1 Basic Principles of GMDH 12.3.2 Formal Statement of the GMDH Problem 12.3.3 Kinds of Problems and Software Implementations of GMDH Algorithms 12.4 Structuring the GMDH Domain Knowledge to Design the Ontology Models 12.4.1 Diagram of Sequential Decision Making in the Process of Inductive Modeling 12.4.2 Definition of Basic Concepts of the GMDH Domain 12.4.3 Identifying Relationships between Concepts 12.4.4 Determining Key Parameters of Main Stages of the Modeling Process 12.5 Designing GMDH Tools Using Ontological Models of the Domain 12.5.1 Requirements for a Set of Tools 12.5.2 Ontological Principles of User Interface Construction 12.5.3 Structure of the Software Complex 12.5.4 Main Requirements for the Intelligent User Interface 12.6 Ontology Models of the Domain for Designing Generalized GMDH Tool 12.7 Conclusion References Chapter 13 Exploring the Contemporary Area of Ontology Research: FAIR Ontology 13.1 Introduction 13.2 FAIR Ontology and FAIRification 13.3 Role of Ontology Libraries in FAIR Ontologies 13.4 FAIR Ontologies: Research Paradigms 13.5 Conclusion References Chapter 14 Analysis of Ontology-Based Semantic Association Rule Mining 14.1 Introduction 14.2 Association Rule Mining 14.2.1 Interestingness Measure 14.2.2 Rules Generation 14.2.3 Applications 14.3 Semantic Association Rule Mining (SARM) 14.3.1 Semantic Proxies 14.3.2 Semantic Association Approaches 14.4 Ontology-Based Semantic Association Rule Mining (OSARM) 14.4.1 Framework 14.4.2 Applications 14.5 Discussion 14.6 Conclusion References Chapter 15 Visualizing Chat-Bot Knowledge Graph Using RDF 15.1 Introduction 15.1.1 Semantic Web 15.1.2 Chatbots 15.1.3 Paper’s Contribution 15.2 Related Work 15.3 Proposed Work 15.3.1 Query Preprocessing & NLP 15.3.2 Query Type Detection 15.3.3 Bot Modules 15.3.4 Context Awareness Engine 15.4 Implementation Details 15.4.1 Tools/Technologies used 15.4.2 Steps of Implementation 15.5 Results 15.6 Conclusion References Chapter 16 Toward Data Integration in the Era of Big Data: Role of Ontologies 16.1 Introduction and Motivation 16.2 Background 16.2.1 Big Data Characteristics 16.2.2 Big Data Integration 16.2.3 NoSQL Data Bases 16.2.4 Ontologies 16.3 Related Works 16.4 Proposed Approach 16.5 Conclusion References Notes Index