Predicting Software Defects through SVM: An Empirical Approach

03/08/2018
by   Junaid Ali Reshi, et al.
0

Software defect prediction is an important aspect of preventive maintenance of a software. Many techniques have been employed to improve software quality through defect prediction. This paper introduces an approach of defect prediction through a machine learning algorithm, support vector machines (SVM), by using the code smells as the factor. Smell prediction model based on support vector machines was used to predict defects in the subsequent releases of the eclipse software. The results signify the role of smells in predicting the defects of a software. The results can further be used as a baseline to investigate further the role of smells in predicting defects.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
05/01/2019

High-Performance Support Vector Machines and Its Applications

The support vector machines (SVM) algorithm is a popular classification ...
research
10/16/2017

Spectral Algorithms for Computing Fair Support Vector Machines

Classifiers and rating scores are prone to implicitly codifying biases, ...
research
06/08/2018

Machine Learning CICY Threefolds

The latest techniques from Neural Networks and Support Vector Machines (...
research
12/05/2019

Modeling and Prediction of Iran's Steel Consumption Based on Economic Activity Using Support Vector Machines

The steel industry has great impacts on the economy and the environment ...
research
07/27/2016

Using Kernel Methods and Model Selection for Prediction of Preterm Birth

We describe an application of machine learning to the problem of predict...
research
02/21/2018

Determining the best classifier for predicting the value of a boolean field on a blood donor database

Motivation: Thanks to digitization, we often have access to large databa...
research
08/17/2018

A bagging and importance sampling approach to Support Vector Machines

An importance sampling and bagging approach to solving the support vecto...

Please sign up or login with your details

Forgot password? Click here to reset