Software fault prediction (SFP) is typically used to predict faults in software components. Machine learning techniques (e.g., classification) are widely used to tackle this problem. With the availability of the huge amount of data that can be obtained from mining software historical repositories, it becomes possible to have some features (metrics) that are not correlated with the faults, which consequently mislead the learning algorithm and thus decrease its performance. One possible solution to eliminate those metrics is Feature Selection (FS). In this paper, a novel FS approach is proposed to enhance the performance of a layered recurrent neural network (L-RNN), which is used as a classification technique for the SFP problem. Three diffe...
The artificial neural network (ANN) is a mathematical model capable of representing any non-linear r...
Classification techniques is a popular approach to predict software defects and it involves categori...
Functional complexity of a software module can be measured in terms of static complexity metrics of ...
Early fault detection for software reduces the cost of developments. Fault level can be predicted th...
The software development life cycle generally includes analysis, design, implementation, test and re...
Software Fault Prediction (SFP) is found to be vital to predict the fault-proneness of software modu...
Abstract-- Fault prediction in software systems is crucial for any software organization to produce ...
Measuring the performance, reliability or quality of a software simply describes the sequence of act...
Abstract-- Predicting faults early in the software life cycle can be used to improve software proces...
Bio-inspired (and meta-heuristic) algorithms are successfully employed in different domains and the ...
In recent past, the use of bio-inspired algorithms got a significant attention in software fault pre...
Software fault prediction is the significant process of identifying the errors or defects or faults ...
An adaptive software reliability prediction model using evolutionary connectionist approach based on...
Various classification techniques have been explored by the distinct researchers previously for the ...
Predicting parts of the software programs that are more defects prone could ease up the software tes...
The artificial neural network (ANN) is a mathematical model capable of representing any non-linear r...
Classification techniques is a popular approach to predict software defects and it involves categori...
Functional complexity of a software module can be measured in terms of static complexity metrics of ...
Early fault detection for software reduces the cost of developments. Fault level can be predicted th...
The software development life cycle generally includes analysis, design, implementation, test and re...
Software Fault Prediction (SFP) is found to be vital to predict the fault-proneness of software modu...
Abstract-- Fault prediction in software systems is crucial for any software organization to produce ...
Measuring the performance, reliability or quality of a software simply describes the sequence of act...
Abstract-- Predicting faults early in the software life cycle can be used to improve software proces...
Bio-inspired (and meta-heuristic) algorithms are successfully employed in different domains and the ...
In recent past, the use of bio-inspired algorithms got a significant attention in software fault pre...
Software fault prediction is the significant process of identifying the errors or defects or faults ...
An adaptive software reliability prediction model using evolutionary connectionist approach based on...
Various classification techniques have been explored by the distinct researchers previously for the ...
Predicting parts of the software programs that are more defects prone could ease up the software tes...
The artificial neural network (ANN) is a mathematical model capable of representing any non-linear r...
Classification techniques is a popular approach to predict software defects and it involves categori...
Functional complexity of a software module can be measured in terms of static complexity metrics of ...