Software development effort estimation is a critical activity of the project management process. In this study, machine learning algorithms were investigated in conjunction with feature transformation, feature selection, andparameter tuning techniques to estimate the development effort accurately and a new model was proposed as part of an expert system. We preferred the most general-purpose algorithms, applied parameter optimization technique (Grid-Search), feature transformation techniques (binning and one-hot-encoding), and feature selection algorithm (principal component analysis). All the models were trained on the ISBSG datasets and implemented by using the scikit-learnpackage in the Python language. The proposed model uses a multilaye...
Evaluating software development effort remains a complex issue drawing in extensive research conside...
The software project effort estimation is an important aspect of software engineering practices. The...
Feature selection algorithms select the best and relevant set of features of the datasets which lead...
The prediction of effort estimation is a vital factor in the success of any software development pro...
Machine learning (ML) techniques have been widely investigated for building prediction models, able ...
A predictive model is required to be accurate and comprehensible in order to inspire confidence in a...
Software development effort estimation is the process of predicting the effort required to develop o...
Nowadays the significant trend of the effort estimation is in demand. It needs more data to be colle...
Background: Software Development Effort Estimation is a process that focuses on estimating the requi...
Software development effort estimation (SDEE) is one of the main tasks in software project managemen...
Accurate and reliable software development effort estimation (SDEE) is one of the main concerns for ...
Software project effort estimation is one of the important aspects of software engineering. Research...
Context: Bio-inspired feature selection algorithms got the attention of the researchers in the domai...
Software effort estimation accuracy is a key factor in effective planning, controlling, and deliveri...
The project management process has been used in the area of Software Engineering to support project ...
Evaluating software development effort remains a complex issue drawing in extensive research conside...
The software project effort estimation is an important aspect of software engineering practices. The...
Feature selection algorithms select the best and relevant set of features of the datasets which lead...
The prediction of effort estimation is a vital factor in the success of any software development pro...
Machine learning (ML) techniques have been widely investigated for building prediction models, able ...
A predictive model is required to be accurate and comprehensible in order to inspire confidence in a...
Software development effort estimation is the process of predicting the effort required to develop o...
Nowadays the significant trend of the effort estimation is in demand. It needs more data to be colle...
Background: Software Development Effort Estimation is a process that focuses on estimating the requi...
Software development effort estimation (SDEE) is one of the main tasks in software project managemen...
Accurate and reliable software development effort estimation (SDEE) is one of the main concerns for ...
Software project effort estimation is one of the important aspects of software engineering. Research...
Context: Bio-inspired feature selection algorithms got the attention of the researchers in the domai...
Software effort estimation accuracy is a key factor in effective planning, controlling, and deliveri...
The project management process has been used in the area of Software Engineering to support project ...
Evaluating software development effort remains a complex issue drawing in extensive research conside...
The software project effort estimation is an important aspect of software engineering practices. The...
Feature selection algorithms select the best and relevant set of features of the datasets which lead...