Abstract

With recent advancements in Semantic Web technologies, a new trend in MCQ item generation has emerged through the use of ontologies. Ontologies are knowledge representation structures that formally describe entities in a domain and their relationships, thus enabling automated inference and reasoning. Ontology-based MCQ item generation is still in its infancy, but substantial research efforts are being made in the field. However, the applicability of these models for use in an educational setting has not been thoroughly evaluated. In this paper, we present an experimental evaluation of an ontology-based MCQ item generation system known as OntoQue. The evaluation was conducted using two different domain ontologies. The findings of this study show that ontology-based MCQ generation systems produce satisfactory MCQ items to a certain extent. However, the evaluation also revealed a number of shortcomings with current ontology-based MCQ item generation systems with regard to the educational significance of an automatically constructed MCQ item, the knowledge level it addresses, and its language structure. Furthermore, for the task to be successful in producing high-quality MCQ items for learning assessments, this study suggests a novel, holistic view that incorporates learning content, learning objectives, lexical knowledge, and scenarios into a single cohesive framework.

Highlights

  • Ontologies are knowledge representation models that provide a rich platform for developing intelligent applications

  • We present an experimental evaluation of an ontology-based tool for generating multiple choice question (MCQ) items, the system known as OntoQue [1]

  • This paper described an experimental evaluation on ontology-based MCQ item generation

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Summary

Introduction

Ontologies are knowledge representation models that provide a rich platform for developing intelligent applications. Ontologies provide a machine-readable form for describing the semantics of a specific domain They are knowledge representation structures that describe entities in a domain and their relationships. Classes represent sets of individuals, object and data properties represent relationships in the domain between these individuals, and individuals represent the actual objects in the domain Using these entities, an ontology facilitates the description of assertional knowledge, which provides information about specific individuals, such as class membership. Ontology entities translated into assertional and terminological knowledge about a domain represent a rich resource from which MCQ items can be automatically generated. They represent asserted facts about a specific domain in a machine-understandable way.

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