IRMA-International.org: Creator of Knowledge
Information Resources Management Association
Advancing the Concepts & Practices of Information Resources Management in Modern Organizations

R4 Model for Case-Based Reasoning and Its Application for Software Fault Prediction

R4 Model for Case-Based Reasoning and Its Application for Software Fault Prediction
View Sample PDF
Author(s): Ekbal Rashid (Aurora's Technological and Research Institute, India)
Copyright: 2021
Pages: 23
Source title: Research Anthology on Recent Trends, Tools, and Implications of Computer Programming
Source Author(s)/Editor(s): Information Resources Management Association (USA)
DOI: 10.4018/978-1-7998-3016-0.ch037

Purchase

View R4 Model for Case-Based Reasoning and Its Application for Software Fault Prediction on the publisher's website for pricing and purchasing information.

Abstract

Making R4 model effective and efficient I have introduced some new features, i.e., renovation of knowledgebase (KBS) and reducing the maintenance cost by removing the duplicate record from the KBS. Renovation of knowledgebase is the process of removing duplicate record stored in knowledgebase and adding world new problems along with world new solutions. This paper explores case-based reasoning and its applications for software quality improvement through early prediction of error patterns. It summarizes a variety of techniques for software quality prediction in the domain of software engineering. The system predicts the error level with respect to LOC and with respect to development time, and both affects the quality level. This paper also reviews four existing models of case-based reasoning (CBR). The paper presents a work in which I have expanded our previous work (Rashid et al., 2012). I have used different similarity measures to find the best method that increases reliability. The present work is also credited through introduction of some new terms like coefficient of efficiency, i.e., developer's ability.

Related Content

G. Sowmya, R. Sridevi, K. S. Sadasiva Rao, Sri Ganesh Shiramshetty. © 2025. 36 pages.
Srinidhi Vasan. © 2025. 20 pages.
Arul Kumar Natarajan, Yash Desai, Pravin R. Kshirsagar, Kamal Upreti, Tan Kuan Tak. © 2025. 26 pages.
R. Leisha, Katelyn Jade Medows, Michael Moses Thiruthuvanathan, S. Ravindra Babu, Prakash Divakaran, Vandana Mishra Chaturvedi. © 2025. 40 pages.
Rituraj Jain, Kumar J. Parmar, Kushal Gaddamwar, Damodharan Palaniappan, T. Premavathi, Yatharth Srivastava. © 2025. 32 pages.
Anya Behera, A. Vedashree, M. Rupesh Kumar, Kamal Upreti. © 2025. 30 pages.
Neha Bagga, Sheetal Kalra, Parminder Kaur. © 2025. 30 pages.
Body Bottom