Creating software with high quality has become difficult these days with the fact that size and complexity of the developed software is high. Predicting the quality of software in early phases helps to reduce testing resources. Various statistical and machine learning techniques are used for prediction of the quality of the software. In this paper, six machine learning models have been used for software quality prediction on five open source software. Varieties of metrics have been evaluated for the software including C & K, Henderson & Sellers, McCabe etc. Results show that Random Forest and Bagging produce good results while Naïve Bayes is least preferable for prediction
Measuring the performance, reliability or quality of a software simply describes the sequence of act...
Abstract-- Predicting faults early in the software life cycle can be used to improve software proces...
Improving quality of the desired software is an important topic under software engineering domain th...
Software quality monitoring and analysis are among the most productive topics in software engineerin...
Abstract-There are several points in the software development process when estimating software quali...
This paper describes an empirical comparison of several modeling techniques for predicting the quali...
This paper describes an empirical comparison of several modeling techniques for predicting the quali...
An sympathetic of quality aspects is relevant for the software association to deliver high software ...
An sympathetic of quality aspects is relevant for the software association to deliver high software ...
Context. Software testing is the process of finding faults in software while executing it. The resul...
Background: Fault prediction is a key problem in software engineering domain. In recent years, an in...
In this paper, we are using machine learning method for predicting fault, i.e support vector machine...
Context: Software fault prediction has been an important research topic in the software engineering ...
Abstract—To improve the software quality the number of errors from the software must be removed. The...
Abstract. High-assurance and complex mission-critical software systems are heavily dependent on reli...
Measuring the performance, reliability or quality of a software simply describes the sequence of act...
Abstract-- Predicting faults early in the software life cycle can be used to improve software proces...
Improving quality of the desired software is an important topic under software engineering domain th...
Software quality monitoring and analysis are among the most productive topics in software engineerin...
Abstract-There are several points in the software development process when estimating software quali...
This paper describes an empirical comparison of several modeling techniques for predicting the quali...
This paper describes an empirical comparison of several modeling techniques for predicting the quali...
An sympathetic of quality aspects is relevant for the software association to deliver high software ...
An sympathetic of quality aspects is relevant for the software association to deliver high software ...
Context. Software testing is the process of finding faults in software while executing it. The resul...
Background: Fault prediction is a key problem in software engineering domain. In recent years, an in...
In this paper, we are using machine learning method for predicting fault, i.e support vector machine...
Context: Software fault prediction has been an important research topic in the software engineering ...
Abstract—To improve the software quality the number of errors from the software must be removed. The...
Abstract. High-assurance and complex mission-critical software systems are heavily dependent on reli...
Measuring the performance, reliability or quality of a software simply describes the sequence of act...
Abstract-- Predicting faults early in the software life cycle can be used to improve software proces...
Improving quality of the desired software is an important topic under software engineering domain th...