An adaptive rank aggregation-based ensemble multi-filter feature selection method in software defect prediction

AO Balogun, S Basri, LF Capretz, S Mahamad… - Entropy, 2021 - mdpi.com
Feature selection is known to be an applicable solution to address the problem of high
dimensionality in software defect prediction (SDP). However, choosing an appropriate filter …

Empirical analysis of rank aggregation-based multi-filter feature selection methods in software defect prediction

AO Balogun, S Basri, S Mahamad, SJ Abdulkadir… - Electronics, 2021 - mdpi.com
Selecting the most suitable filter method that will produce a subset of features with the best
performance remains an open problem that is known as filter rank selection problem. A …

A Novel Rank Aggregation‐Based Hybrid Multifilter Wrapper Feature Selection Method in Software Defect Prediction

AO Balogun, S Basri, S Mahamad… - Computational …, 2021 - Wiley Online Library
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 …

Rank aggregation based multi-filter feature selection method for software defect prediction

AO Balogun, S Basri, SJ Abdulkadir… - Advances in Cyber …, 2021 - Springer
With the variety of different filter methods, selecting the most appropriate filter method which
gives the best performance is a difficult task. Filter rank selection and stability problems …

Impact of feature selection methods on the predictive performance of software defect prediction models: an extensive empirical study

AO Balogun, S Basri, S Mahamad, SJ Abdulkadir… - Symmetry, 2020 - mdpi.com
Feature selection (FS) is a feasible solution for mitigating high dimensionality problem, and
many FS methods have been proposed in the context of software defect prediction (SDP) …

Search-based wrapper feature selection methods in software defect prediction: an empirical analysis

AO Balogun, S Basri, SA Jadid, S Mahamad… - Intelligent Algorithms in …, 2020 - Springer
High dimensionality is a data quality problem that negatively influences the predictive
capabilities of prediction models in software defect prediction (SDP). As a viable solution …

Performance analysis of feature selection methods in software defect prediction: a search method approach

AO Balogun, S Basri, SJ Abdulkadir, AS Hashim - applied sciences, 2019 - mdpi.com
Software Defect Prediction (SDP) models are built using software metrics derived from
software systems. The quality of SDP models depends largely on the quality of software …

Improved software defect prediction using Pruned Histogram-based isolation forest

Z Ding, L Xing - Reliability Engineering & System Safety, 2020 - Elsevier
Software defect prediction (SDP) is a hot topic in the modern software engineering research
community. It has been used for evaluating software quality and reliability and allocating …

An empirical study on pareto based multi-objective feature selection for software defect prediction

C Ni, X Chen, F Wu, Y Shen, Q Gu - Journal of Systems and Software, 2019 - Elsevier
The performance of software defect prediction (SDP) models depend on the quality of
considered software features. Redundant features and irrelevant features may reduce the …

Data sampling-based feature selection framework for software defect prediction

AO Balogun, FB Lafenwa-Balogun, HA Mojeed… - … and Technologies for …, 2021 - Springer
High dimensionality and class imbalance are latent data quality problems that have a
negative effect on the predictive capabilities of prediction models in software defect …