Context: Bio-inspired feature selection algorithms got the attention of the researchers in the domain of Software Development Effort Estimations (SDEE) because they can improve the prediction accuracy of existing estimation techniques, such as machine learning methods. Objective: This paper aims to analyze different feature selection algorithms and assess the role they can play to increase the accuracy of software development effort predictions. Method: We have performed an empirical study considering commonly used bio-inspired feature selection algorithms in the domain of SDEE, i.e., Genetic Algorithm (GA), Particle Swarm Optimization, Ant Colony Optimization, Tabu Search, Harmony Search (HS), and Firefly algorithm, and four traditional no...
Abstract. The use of optimization techniques has been recently proposed to build models for software...
The idea of exploiting Genetic Programming (GP) to estimate software development effort is based on ...
In recent years, many researchers and practitioners have explored the possibility of estimating effo...
Context: Bio-inspired feature selection algorithms got the attention of the researchers in the domai...
Feature selection algorithms select the best and relevant set of features of the datasets which lead...
Feature selection algorithms are used to extract the most relevant features from a dataset and filte...
In recent past, the use of bio-inspired algorithms got a significant attention in software fault pre...
Abstract Background Several prediction models have been proposed in the literature using different t...
Accurate and reliable software development effort estimation (SDEE) is one of the main concerns for ...
The complexity of providing accurate software effort prediction models is well known in the softwar...
The idea of exploiting search-based methods to estimate development effort is based on the observati...
A predictive model is required to be accurate and comprehensible in order to inspire confidence in a...
Software development effort estimation is a critical activity of the project management process. In ...
Abstract. The use of optimization techniques has been recently proposed to build models for software...
The idea of exploiting Genetic Programming (GP) to estimate software development effort is based on ...
In recent years, many researchers and practitioners have explored the possibility of estimating effo...
Context: Bio-inspired feature selection algorithms got the attention of the researchers in the domai...
Feature selection algorithms select the best and relevant set of features of the datasets which lead...
Feature selection algorithms are used to extract the most relevant features from a dataset and filte...
In recent past, the use of bio-inspired algorithms got a significant attention in software fault pre...
Abstract Background Several prediction models have been proposed in the literature using different t...
Accurate and reliable software development effort estimation (SDEE) is one of the main concerns for ...
The complexity of providing accurate software effort prediction models is well known in the softwar...
The idea of exploiting search-based methods to estimate development effort is based on the observati...
A predictive model is required to be accurate and comprehensible in order to inspire confidence in a...
Software development effort estimation is a critical activity of the project management process. In ...
Abstract. The use of optimization techniques has been recently proposed to build models for software...
The idea of exploiting Genetic Programming (GP) to estimate software development effort is based on ...
In recent years, many researchers and practitioners have explored the possibility of estimating effo...