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

Author:

Balogun Abdullateef O.12ORCID,Basri Shuib1ORCID,Mahamad Saipunidzam1ORCID,Capretz Luiz Fernando3ORCID,Imam Abdullahi Abubakar1ORCID,Almomani Malek A.4ORCID,Adeyemo Victor E.5ORCID,Kumar Ganesh1ORCID

Affiliation:

1. Department of Computer and Information Science, Universiti Teknologi PETRONAS, Bandar Seri Iskandar 32610, Perak, Malaysia

2. Department of Computer Science, University of Ilorin, Ilorin 1515, Nigeria

3. Department of Electrical and Computer Engineering, Western University, London, ON, N6A 5B9, Canada

4. Department of Software Engineering, The World Islamic Sciences and Education University, Amman 11947, Jordan

5. School of Built Environment, Engineering and Computing, Leeds Beckett University, Headingley Campus, Leeds LS6 3QS, UK

Abstract

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 drawback makes it necessary to apply feature selection (FS) algorithm(s) in SDP processes. FS approaches can be categorized into three types, namely, filter FS (FFS), wrapper FS (WFS), and hybrid FS (HFS). HFS has been established as superior because it combines the strength of both FFS and WFS methods. However, selecting the most appropriate FFS (filter rank selection problem) for HFS is a challenge because the performance of FFS methods depends on the choice of datasets and classifiers. In addition, the local optima stagnation and high computational costs of WFS due to large search spaces are inherited by the HFS method. Therefore, as a solution, this study proposes a novel rank aggregation-based hybrid multifilter wrapper feature selection (RAHMFWFS) method for the selection of relevant and irredundant features from software defect datasets. The proposed RAHMFWFS is divided into two stepwise stages. The first stage involves a rank aggregation-based multifilter feature selection (RMFFS) method that addresses the filter rank selection problem by aggregating individual rank lists from multiple filter methods, using a novel rank aggregation method to generate a single, robust, and non-disjoint rank list. In the second stage, the aggregated ranked features are further preprocessed by an enhanced wrapper feature selection (EWFS) method based on a dynamic reranking strategy that is used to guide the feature subset selection process of the HFS method. This, in turn, reduces the number of evaluation cycles while amplifying or maintaining its prediction performance. The feasibility of the proposed RAHMFWFS was demonstrated on benchmarked software defect datasets with Naïve Bayes and Decision Tree classifiers, based on accuracy, the area under the curve (AUC), and F-measure values. The experimental results showed the effectiveness of RAHMFWFS in addressing filter rank selection and local optima stagnation problems in HFS, as well as the ability to select optimal features from SDP datasets while maintaining or enhancing the performance of SDP models. To conclude, the proposed RAHMFWFS achieved good performance by improving the prediction performances of SDP models across the selected datasets, compared to existing state-of-the-arts HFS methods.

Publisher

Hindawi Limited

Subject

General Mathematics,General Medicine,General Neuroscience,General Computer Science

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1. Depth linear discrimination-oriented feature selection method based on adaptive sine cosine algorithm for software defect prediction;Expert Systems with Applications;2024-11

2. Implementation of Chernobyl optimization algorithm based feature selection approach to predict software defects;F1000Research;2024-07-29

3. Feature Selection using Genetic Algorithm for Software Fault Prediction;2024 3rd International Conference on Applied Artificial Intelligence and Computing (ICAAIC);2024-06-05

4. Supervised Rank Aggregation (SRA): A Novel Rank Aggregation Approach for Ensemble-based Feature Selection;Recent Advances in Computer Science and Communications;2024-05

5. Comparative Analysis of Feature Selection Methods for Software Bug Classification;2024 International Conference on Science, Engineering and Business for Driving Sustainable Development Goals (SEB4SDG);2024-04-02

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