SS Rathore, S Kumar - Knowledge-Based Systems, 2017 - Elsevier
Several classification techniques have been investigated and evaluated earlier for the software fault prediction. These techniques have produced different prediction accuracy for …
Background and objective Risk prediction models aim at identifying people at higher risk of developing a target disease. Feature selection is particularly important to improve the …
This study evaluates several feature ranking techniques together with some classifiers based on machine learning to identify relevant factors regarding the probability of …
SS Rathore, S Kumar - IEEE Transactions on Reliability, 2018 - ieeexplore.ieee.org
Determining the most appropriate learning technique (s) is vital for the accurate and effective software fault prediction (SFP). Earlier techniques used for SFP have reported varying …
Feature selection is a key step when dealing with high-dimensional data. In particular, these techniques simplify the process of knowledge discovery from the data by selecting the most …
B Kaur, G Joshi - Advances in Human‐Computer Interaction, 2016 - Wiley Online Library
The capability of lower order Krawtchouk moment‐based shape features has been analyzed. The behaviour of 1D and 2D Krawtchouk polynomials at lower orders is observed …
The high dimensionality of software metric features has long been noted as a data quality problem that affects the performance of software defect prediction (SDP) models. This …
Background and objective Risk prediction models aim at identifying people at higher risk of developing a target disease. Feature selection is particularly important to improve the …
Context. Software defect prediction aims to find defect prone source code, and thus reduce the effort, time and cost involved with ensuring the quality of software systems. Both code …