Background: Prediction of software vulnerabilities is a major concern in the field of software security. Many researchers have worked to construct various software vulnerability prediction (SVP) models. The emerging machine learning domain aids in building effective SVP models. The employment of data balancing/resampling techniques and optimal hyperparameters can upgrade their performance. Previous research studies have shown the impact of hyperparameter optimization (HPO) on machine learning algorithms and data balancing techniques. Aim: The current study aims to analyze the impact of dual hyperparameter optimization on metrics-based SVP models. Method: This paper has proposed the methodology using the python framework Optuna that opti...
Software defect prediction is crucial used for detecting possible defects in software before they ma...
The number of security failure discovered and disclosed publicly are increasing at a pace like never...
Selecting the best configuration of hyperparameter values for a Machine Learning model yields direct...
Software vulnerabilities form an increasing security risk for software systems, that might be exploi...
Bug prediction is a technique that strives to identify where defects will appear in a software syste...
Software metrics are widely-used indicators of software quality and several studies have shown that...
Statistical prediction models can be an effective technique to identify vulnerable components in lar...
Abstract Security vulnerability prediction (SVP) can construct models to identify potentially vulner...
There is an increasing trend to mine vulnerabilities from software repositories and use machine lear...
Software vulnerabilities are infamous threats to the security of computing systems, and it is vital ...
Today almost every device depends on a piece of software. As a result, our life increasingly depends...
Software vulnerabilities enable malicious actors to exploit security weaknesses of a software system...
Software vulnerability is a critical issue in the realm of cyber security. In terms of techniques, m...
Software security is a very important aspect for software development organizations who wish to prov...
2016 Summer.Includes bibliographical references.Most of the attacks on computer systems and networks...
Software defect prediction is crucial used for detecting possible defects in software before they ma...
The number of security failure discovered and disclosed publicly are increasing at a pace like never...
Selecting the best configuration of hyperparameter values for a Machine Learning model yields direct...
Software vulnerabilities form an increasing security risk for software systems, that might be exploi...
Bug prediction is a technique that strives to identify where defects will appear in a software syste...
Software metrics are widely-used indicators of software quality and several studies have shown that...
Statistical prediction models can be an effective technique to identify vulnerable components in lar...
Abstract Security vulnerability prediction (SVP) can construct models to identify potentially vulner...
There is an increasing trend to mine vulnerabilities from software repositories and use machine lear...
Software vulnerabilities are infamous threats to the security of computing systems, and it is vital ...
Today almost every device depends on a piece of software. As a result, our life increasingly depends...
Software vulnerabilities enable malicious actors to exploit security weaknesses of a software system...
Software vulnerability is a critical issue in the realm of cyber security. In terms of techniques, m...
Software security is a very important aspect for software development organizations who wish to prov...
2016 Summer.Includes bibliographical references.Most of the attacks on computer systems and networks...
Software defect prediction is crucial used for detecting possible defects in software before they ma...
The number of security failure discovered and disclosed publicly are increasing at a pace like never...
Selecting the best configuration of hyperparameter values for a Machine Learning model yields direct...