Abstract

Ontology permits the addition of semantics to process models derived from mining the various data stored in many information systems. The ontological schema enables for automated querying and inference of useful knowledge from the different domain processes. Indeed, such conceptualization methods particularly ontologies for process management which is currently allied to semantic process mining trails to combine process models with ontologies, and are increasingly gaining attention in recent years. In view of that, this chapter introduces an ontology-based mining approach that makes use of concepts within the extracted event logs about domain processes to propose a method which allows for effective querying and improved analysis of the resulting models through semantic labelling (annotation), semantic representation (ontology) and semantic reasoning (reasoner). The proposed method is a semantic-based process mining approach that is able to induce new knowledge based on previously unobserved behaviours, and a more intuitive and easy way to represent and query the datasets and the discovered models compared to other standard logical procedures. To this end, the study claims that it is possible to apply effective reasoning methods to make inferences over a process knowledge-base (e.g. the learning process) that leads to automated discovery of learning patterns and/or behaviour.

Highlights

  • Ontologies has been proven to be one of the essential tools used for semantic-based process mining

  • The conceptual method of analysis provides an easy way to analyse the datasets, and even more allows the meaning of the process elements to be enhanced through the use of property descriptions languages or syntax—such as the Ontology Web-Rule Language (OWL) [7] Semantic Web Rule Language (SWRL) [8], Description Logic (DL) queries [9], and classification of discoverable entities or taxonomy [4] in order to make available inference knowledge that could be utilized to determine useful patterns by means of the semantic reasoning aptitudes

  • 10 Execute queries 11: If SQ or P ← Null 12: re-input query or set the parameter concepts 13: Else If SQ or P ← 1 14: infer the necessary associations and provide resulting outputs 15: Return: classified Concepts 16: End If statements 17: End while 18: End for as shown in the Algorithm 2, semantic reasoning helps to infer and associate meanings to labels within the defined ontologies by referring to the concepts assertions (i.e. Objects and Datatype properties) and sets of rules/expressions that are defined within the ontologies in order to answer and produce meaningful knowledge, and even in most cases, new information about the process elements and the relationships they share amongst themselves within the knowledge base

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Summary

Introduction

Ontologies has been proven to be one of the essential tools used for semantic-based process mining. The propose approach in this chapter supports the augmentation of the informative values of the resulting models by semantically annotating the process elements with concepts they represent in real time, and linking them to an ontology in order to allow for analysis of the extracted data logs and models at a much more conceptual level. The conceptual method of analysis provides an easy way to analyse the datasets (i.e. the event logs and models), and even more allows the meaning of the process elements to be enhanced through the use of property descriptions languages or syntax—such as the Ontology Web-Rule Language (OWL) [7] Semantic Web Rule Language (SWRL) [8], Description Logic (DL) queries [9], and classification of discoverable entities or taxonomy [4] in order to make available inference knowledge that could be utilized to determine useful patterns by means of the semantic reasoning aptitudes. The study looks at the ontological concepts and its main functions, and the describe how the work has utilised the schema to develop the proposed semanticbased process mining approach

Ontologies
Semantic reasoning
Ontology-based method and design framework
Main components of the proposed semantic-based approach
Proposed semantic-based algorithms and its formalization
3: Output
17: End while
Use case scenario and implementation
Semantic representation and modelling of research learning process
Related works
Discussion and conclusion
Full Text
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