Applying Machine Learning Analysis for Software Quality Test

05/16/2023
by   Al Khan, et al.
0

One of the biggest expense in software development is the maintenance. Therefore, it is critical to comprehend what triggers maintenance and if it may be predicted. Numerous research have demonstrated that specific methods of assessing the complexity of created programs may produce useful prediction models to ascertain the possibility of maintenance due to software failures. As a routine it is performed prior to the release, and setting up the models frequently calls for certain, object-oriented software measurements. It is not always the case that software developers have access to these measurements. In this paper, the machine learning is applied on the available data to calculate the cumulative software failure levels. A technique to forecast a software`s residual defectiveness using machine learning can be looked into as a solution to the challenge of predicting residual flaws. Software metrics and defect data were separated out of the static source code repository. Static code is used to create software metrics, and reported bugs in the repository are used to gather defect information. By using a correlation method, metrics that had no connection to the defect data were removed. This makes it possible to analyze all the data without pausing the programming process. Large, sophisticated software`s primary issue is that it is impossible to control everything manually, and the cost of an error can be quite expensive. Developers may miss errors during testing as a consequence, which will raise maintenance costs. Finding a method to accurately forecast software defects is the overall objective.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
09/26/2017

The Co-Evolution of Test Maintenance and Code Maintenance through the lens of Fine-Grained Semantic Changes

Automatic testing is a widely adopted technique for improving software q...
research
11/02/2020

Employing Partial Least Squares Regression with Discriminant Analysis for Bug Prediction

Forecasting defect proneness of source code has long been a major resear...
research
10/13/2021

HEDP: A Method for Early Forecasting Software Defects based on Human Error Mechanisms

As the primary cause of software defects, human error is the key to unde...
research
11/25/2020

An Empirical Investigation on the Challenges of Creating Custom Static Analysis Rules for Defect Localization

Background: Custom static analysis rules, i.e., rules specific for one o...
research
05/16/2019

MSRBot: Using Bots to Answer Questions from Software Repositories

Software repositories contain a plethora of useful information that can ...
research
11/11/2019

On the costs and profit of software defect prediction

Defect prediction can be a powerful tool to guide the use of quality ass...
research
08/08/2017

Cherry-Picking of Code Commits in Long-Running, Multi-release Software

This paper presents Tartarian, a tool that supports maintenance of softw...

Please sign up or login with your details

Forgot password? Click here to reset