K-means based quality prediction of object-oriented software using LR-ACO
Journal: International Journal of Advanced Computer Research (IJACR) (Vol.12, No. 59)Publication Date: 2022-03-29
Authors : Sandeep Ganpat Kamble; Animesh Kumar Dubey;
Page : 12-23
Keywords : K-Means; LR; ACO; Polymorphism; Class; Inheritance.;
Abstract
A quality prediction mechanism has been developed in this paper. K-means clustering algorithm has been applied for the clustering of object-oriented features. Finally logistic regression (LR) and ant colony optimization (ACO) (LR-ACO) have been used for the classification. The object-oriented parameters have been considered like polymorphism, encapsulation, abstraction, inheritance and other object-oriented features for experimentation. The purpose of these features to categorize the data in different class levels based on memory usage, reusability and multiple forms. Different hyperparameters like dynamic allocation and feature margin have also been considered for the classification thresholds. Different performance measures have been considered for the experimentation and the results shows the approach effectiveness through different exploration.
Other Latest Articles
- SMART SOLUTION FOR OPTIMIZED MASS CUSTOMIZATION PROCESS IN SMART PHONE INDUSTRY
- The Role of Knowledge Management in the Development of Sports Clubs in the Kingdom of Saudi Arabia
- The Role of Medical Records Management in Activating Knowledge Management Applications in Saudi Arabia Hospitals
- Tecnologias da informação e comunicação em trabalho remoto: estudo de caso no setor de serviços na cidade de São Paulo-SP-Brasil
- Avaliação ergonômica em um setor de criação e desenvolvimento de uma indústria têxtil
Last modified: 2023-01-23 17:37:42