Software Defect Prediction (SDP) provides insights that can help software teams to allocate their limited resources in developing software systems. It predicts likely defective modules and helps avoid pitfalls that are associated with such modules. However, these insights may be inaccurate and unreliable if parameters of SDP models are not taken into consideration. In this study, the effect of parameter tuning on the k nearest neighbor (k-NN) in SDP was investigated. More specifically, the impact of varying and selecting optimal k value, the influence of distance weighting and the impact of distance functions on k-NN. An experiment was designed to investigate this problem in SDP over 6 software defect datasets. The experimental results reve...
Abstract—Software defect prediction can help to allocate testing resources efficiently through ranki...
To identify software modules that are more likely to be defective, machine learning has been used to...
Just-in-time software defect prediction (JIT-SDP) is an active topic in software defect prediction, ...
Software Defect Prediction (SDP) provides insights that can help software teams to allocate their li...
If the software fails to perform its function, serious consequences may result. Software defect pred...
The number of Neighbours (k) and distance measure (DM) are widely modified for improved kNN performa...
AbstractAccurate fault prediction is an indispensable step, to the extent of being a critical activi...
Software defect prediction is crucial used for detecting possible defects in software before they ma...
This research examines the model of Fuzzy k-Nearest Neighbor (Fk-NN) to predict software defects. So...
The ongoing development of computer systems requires massive software projects. Running the componen...
Context: Software defect prediction plays a crucial role in estimating the most defect-prone compone...
Abstract It is natural for the developed software to contain some defects and errors. The importan...
Several studies have raised concerns about the performance of estimation techniques if employed with...
Most machine learning techniques rely on a set of user-defined parameters. Changes in the values of ...
Different data preprocessing methods and classifiers have been established and evaluated earlier for...
Abstract—Software defect prediction can help to allocate testing resources efficiently through ranki...
To identify software modules that are more likely to be defective, machine learning has been used to...
Just-in-time software defect prediction (JIT-SDP) is an active topic in software defect prediction, ...
Software Defect Prediction (SDP) provides insights that can help software teams to allocate their li...
If the software fails to perform its function, serious consequences may result. Software defect pred...
The number of Neighbours (k) and distance measure (DM) are widely modified for improved kNN performa...
AbstractAccurate fault prediction is an indispensable step, to the extent of being a critical activi...
Software defect prediction is crucial used for detecting possible defects in software before they ma...
This research examines the model of Fuzzy k-Nearest Neighbor (Fk-NN) to predict software defects. So...
The ongoing development of computer systems requires massive software projects. Running the componen...
Context: Software defect prediction plays a crucial role in estimating the most defect-prone compone...
Abstract It is natural for the developed software to contain some defects and errors. The importan...
Several studies have raised concerns about the performance of estimation techniques if employed with...
Most machine learning techniques rely on a set of user-defined parameters. Changes in the values of ...
Different data preprocessing methods and classifiers have been established and evaluated earlier for...
Abstract—Software defect prediction can help to allocate testing resources efficiently through ranki...
To identify software modules that are more likely to be defective, machine learning has been used to...
Just-in-time software defect prediction (JIT-SDP) is an active topic in software defect prediction, ...