COMPARATIVE ANALYSIS OF SOFTWARE DESIGN PATTERNS BASED DESIGN METRICS USING MACHINE LEARNING ALGORITHMS
Journal: International Journal of Computer Engineering and Technology (IJCET) (Vol.9, No. 3)Publication Date: 2018-06-30
Authors : MOHA GUPTA; SATWINDER SINGH;
Page : 32-41
Keywords : Cohesion; Design Patterns; Machine learning; Software engineering; Software metrics;
Abstract
Software measurement has been elementary for the progress in any engineering discipline. Design metrics is being used for taking qualitative and quantitative measures as well as reduction in software project. The concept of software metrics is coherent, well established and understandable. Therefore, it is very useful in developing software project with superior quality that fulfil the customer requirements. This study emphasis on detecting software design pattern-based design metrics using machine learning algorithm. The study detects the pattern using random forest and J48 algorithms. The results indicate that the algorithms are efficient and accurate for the detection of design pattern. The result shows that random forest gave good result than J48.
Other Latest Articles
- A PREDICTION BASED MULTI- PHASES LIVE MIGRATION APPROACH TO MINIMIZE THE NUMBER OF TRANSFERRED PAGES, IN CLOUD COMPUTING ENVIRONMENT
- PRACTICAL IMPLEMENTATION AND ANALYSIS OF MLBAAC MODEL FOR CLOUD
- COMPREHENSIVE SOFTWARE DESIGN FOR KNOWLEDGE EXTRACTION FROM MULTI-DIMENSIONAL DATA USING OBJECT ORIENTED CONCEPTS
- MODEL FUZZY K-NEAREST NEIGHBOR WITH LOCAL MEAN FOR PATTERN RECOGNITION
- To Study the Role of Chemical Modification in Dispersion of Multi- Walled Carbon Nanotubes
Last modified: 2018-08-25 22:40:37