The duration of software development projects has become a competitive issue: only 39% of them are finished on time relative to the duration planned originally. The techniques for predicting project duration are most often based on expert judgment and mathematical models, such as statistical regression or machine learning. The contribution of this study is to investigate whether or not the duration prediction accuracy obtained with a multilayer feedforward neural network model, also called a multilayer perceptron (MLP), and with a radial basis function neural network (RBFNN) model is statistically better than that obtained by a multiple linear regression (MLR) model when functional size and the maximum size of the team of developers are use...
Recurrent neural networks have been used for time-series prediction with good results. In this disse...
Multilayer Perceptron Network (MLP) has a better prediction Multilayer Perceptron Network (MLP) has ...
This thesis proposes a convolutional long short-term memory neural network model for predicting limi...
The duration of software development projects has become a competitive issue: only 39% of them are f...
Context: In the software engineering field, only 20 percent of software projects finish on time rela...
To get a better prediction of costs, schedule, and the risks of a software project, it is necessary ...
The software project effort estimation is an important aspect of software engineering practices. The...
Software development effort estimation (SDEE) is one of the main tasks in software project managemen...
Machine learning techniques have been applied in the software engineering field and their models cou...
An important factor for planning, budgeting and bidding a software project is prediction of the deve...
Context: Productivity management of software developers is a challenge in Information and Communicat...
The value of neural network modelling techniques in performing complicated pattern recognition and n...
Software development effort prediction is considered in several international software processes as ...
The prediction of software development effort has been focused mostly on the accuracy comparison of ...
Abstract: Software measurements provide developers and software managers with information on various...
Recurrent neural networks have been used for time-series prediction with good results. In this disse...
Multilayer Perceptron Network (MLP) has a better prediction Multilayer Perceptron Network (MLP) has ...
This thesis proposes a convolutional long short-term memory neural network model for predicting limi...
The duration of software development projects has become a competitive issue: only 39% of them are f...
Context: In the software engineering field, only 20 percent of software projects finish on time rela...
To get a better prediction of costs, schedule, and the risks of a software project, it is necessary ...
The software project effort estimation is an important aspect of software engineering practices. The...
Software development effort estimation (SDEE) is one of the main tasks in software project managemen...
Machine learning techniques have been applied in the software engineering field and their models cou...
An important factor for planning, budgeting and bidding a software project is prediction of the deve...
Context: Productivity management of software developers is a challenge in Information and Communicat...
The value of neural network modelling techniques in performing complicated pattern recognition and n...
Software development effort prediction is considered in several international software processes as ...
The prediction of software development effort has been focused mostly on the accuracy comparison of ...
Abstract: Software measurements provide developers and software managers with information on various...
Recurrent neural networks have been used for time-series prediction with good results. In this disse...
Multilayer Perceptron Network (MLP) has a better prediction Multilayer Perceptron Network (MLP) has ...
This thesis proposes a convolutional long short-term memory neural network model for predicting limi...