OntoDI: The Methodology for Ontology Development on Data Integration

Abstract

The implementations of data integration in current days have many issues to be solved. Heterogeneity of data with non-standardization data, data conflicts between various data sources, data with a different representation, as well as semantic aspects problems are among the challenges and still open to research. Semantic data integration using ontology approach is considered as an appropriate solution to deal with semantic aspects problem in data integration. However, most methodologies for ontology development are developed to cover specific purpose and less suitable for common data integration implementation. This research offers an improved methodology for ontology development on data integration to deal with semantic aspects problem, called OntoDI. It is a continuation and improvement of the previous work about ontology development methods on agent system. OntoDI consists of three main parts, namely the pre-development, core-development and post-development, in which every part contains several phases. This paper describes the experiment of OntoDI in the electronic learning system domain. Using OntoDI, the development of ontology knowledge gives simpler phases, complete steps, and clear documentation for the ontology client. In addition, this ontology knowledge is also capable to overcome semantic aspect issues that happen in the sharing and integration process in education area.

Authors and Affiliations

Arda Yunianta, Ahmad Hoirul Basori, Anton Satria Prabuwono, Arif Bramantoro, Irfan Syamsuddin, Norazah Yusof, Alaa Omran Almagrabi, Khalid Alsubhi

Keywords

Related Articles

A New Approach for Grouping Similar Operations Extracted from WSDLs Files using K-Means Algorithm

Grouping similar operations is an effective solution to the various problems, especially those related to research because the services will be classified by joint operations. Searching for a particular operation returns...

Preliminary Study of Software Performance Models

Context: Software performance models can be obtained by applying for specific roles, skills and techniques in software life cycle, and it depends on formulating the software problem as well as gathering the performance r...

Using Space Syntax and Information Visualization for Spatial Behavior Analysis and Simulation

This study used space syntax to discuss user movement dynamics and crowded hot spots in a commercial area. Moreover, it developed personas according to its onsite observations, visualized user movement data, and performe...

A Greedy Algorithm for Load Balancing Jobs with Deadlines in a Distributed Network

One of the most challenging issues when dealing with distributed networks is the efficiency of jobs load balancing. This paper presents a novel algorithm for load balancing jobs that have a given deadline in a distribute...

Prediction of Poor Inhabitant Number Using Least Square and Moving Average Method

The number of poor inhabitant in South Kalimantan decreased within the last three years compared with the previous years. The numbers of poor inhabitant differs from time to time. This scaled dynamical number has been a...

Download PDF file
  • EP ID EP448711
  • DOI 10.14569/IJACSA.2019.0100121
  • Views 57
  • Downloads 0

How To Cite

Arda Yunianta, Ahmad Hoirul Basori, Anton Satria Prabuwono, Arif Bramantoro, Irfan Syamsuddin, Norazah Yusof, Alaa Omran Almagrabi, Khalid Alsubhi (2019). OntoDI: The Methodology for Ontology Development on Data Integration. International Journal of Advanced Computer Science & Applications, 10(1), 160-168. https://europub.co.uk/articles/-A-448711