The idea of exploiting Genetic Programming (GP) to estimate software development effort is based on the observation that the effort estimation problem can be formulated as an optimization problem. Indeed, among the possible models, we have to identify the one providing the most accurate estimates. To this end a suitable measure to evaluate and compare different models is needed. However, in the context of effort estimation there does not exist a unique measure that allows us to compare different models but several different criteria (e.g., MMRE, Pred(25), MdMRE) have been proposed. Aiming at getting an insight on the effects of using different measures as fitness function, in this paper we analyzed the performance of GP using each of the fi...
Reliable and accurate estimation of software has always been a matter of concern for industry and ac...
Abstract Background Several prediction models have been proposed in the literature using different t...
Abstract — This paper looks at the statistics used to compare variations to the genetic programming ...
The idea of exploiting Genetic Programming (GP) to estimate software development effort is based on ...
The idea of exploiting search-based methods to estimate development effort is based on the observati...
Statistical regression and neural networks have frequently been used to estimate the development eff...
Statistical and genetic programming techniques have been used to predict the software development ef...
Statistical and genetic programming techniques have been used to predict the software development ef...
Abstract—Context: The use of search-based methods has been recently proposed for software developmen...
This paper investigates the utilization of Genetic Programming (GP) as a method to facilitate better...
Feature selection algorithms select the best and relevant set of features of the datasets which lead...
During the recent years, numerous endeavours have been made in the area of software development effo...
Effort estimation is an important and challenging issue in software engineering. Software developers...
Reliable and accurate estimation of software has always been a matter of concern for industry and ac...
AbstractThe estimation of software effort is an essential and crucial activity for the software deve...
Reliable and accurate estimation of software has always been a matter of concern for industry and ac...
Abstract Background Several prediction models have been proposed in the literature using different t...
Abstract — This paper looks at the statistics used to compare variations to the genetic programming ...
The idea of exploiting Genetic Programming (GP) to estimate software development effort is based on ...
The idea of exploiting search-based methods to estimate development effort is based on the observati...
Statistical regression and neural networks have frequently been used to estimate the development eff...
Statistical and genetic programming techniques have been used to predict the software development ef...
Statistical and genetic programming techniques have been used to predict the software development ef...
Abstract—Context: The use of search-based methods has been recently proposed for software developmen...
This paper investigates the utilization of Genetic Programming (GP) as a method to facilitate better...
Feature selection algorithms select the best and relevant set of features of the datasets which lead...
During the recent years, numerous endeavours have been made in the area of software development effo...
Effort estimation is an important and challenging issue in software engineering. Software developers...
Reliable and accurate estimation of software has always been a matter of concern for industry and ac...
AbstractThe estimation of software effort is an essential and crucial activity for the software deve...
Reliable and accurate estimation of software has always been a matter of concern for industry and ac...
Abstract Background Several prediction models have been proposed in the literature using different t...
Abstract — This paper looks at the statistics used to compare variations to the genetic programming ...