Abstract Given high-dimensional software measurement data, researchers and practitioners often use feature (metric) selection techniques to improve the performance of software quality classification models. This paper presents our newly proposed threshold-based feature selection techniques, comparing the performance of these techniques by building classification models using five commonly used classifiers. In order to evaluate the effectiveness of different feature selection techniques, the models are evaluated using eight different performance metrics separately since a given performance metric usually captures only one aspect of the classification performance. All experiments are conducted on three Eclipse data sets with different levels ...
In prediction modeling, the choice of features chosen from the original feature set is crucial for a...
Classification techniques is a popular approach to predict software defects and it involves categori...
The knowledge about the software metrics, which serve as quality indicators, is vital for the efficien...
Feature selection is a process of selecting a subset of rel-evant features for building learning mod...
One factor that affects the success of machine learning is the presence of irrelevant or redundant i...
Software metrics collected during project development play a critical role in software quality assur...
The selection of software metrics for building software quality prediction models is a search-based ...
Several aspects of software product quality can be assessed and measured using product metrics. With...
Software metrics collected during project development play a critical role in software quality assur...
Attribute selection is an important activity in data preprocessing for software quality modeling and...
Thresholds are essential for promoting source code metrics as an effective instrument to control the...
While extensive research in data mining has been devoted to developing better feature selection tech...
Summarization: Feature selection (FS) is a significant topic for the development of efficient patter...
In view of the substantial number of existing feature selection algorithms, the need arises to count...
The development of change prediction models can help the software practitioners in planning testing ...
In prediction modeling, the choice of features chosen from the original feature set is crucial for a...
Classification techniques is a popular approach to predict software defects and it involves categori...
The knowledge about the software metrics, which serve as quality indicators, is vital for the efficien...
Feature selection is a process of selecting a subset of rel-evant features for building learning mod...
One factor that affects the success of machine learning is the presence of irrelevant or redundant i...
Software metrics collected during project development play a critical role in software quality assur...
The selection of software metrics for building software quality prediction models is a search-based ...
Several aspects of software product quality can be assessed and measured using product metrics. With...
Software metrics collected during project development play a critical role in software quality assur...
Attribute selection is an important activity in data preprocessing for software quality modeling and...
Thresholds are essential for promoting source code metrics as an effective instrument to control the...
While extensive research in data mining has been devoted to developing better feature selection tech...
Summarization: Feature selection (FS) is a significant topic for the development of efficient patter...
In view of the substantial number of existing feature selection algorithms, the need arises to count...
The development of change prediction models can help the software practitioners in planning testing ...
In prediction modeling, the choice of features chosen from the original feature set is crucial for a...
Classification techniques is a popular approach to predict software defects and it involves categori...
The knowledge about the software metrics, which serve as quality indicators, is vital for the efficien...