Effective effort estimation in project planning is vital, because it helps organizations to build product plans which they can stick to, have shorter turn-around time and better cost discipline. In this thesis, a series of supervised machine learning models were studied, analyzed and implemented to solve the problem of predicting effort estimate in Agile Scrum. The main approaches used were, Term Frequency - inverse document frequency (TF-idf), fastText, Neural Networks (Recurrent Neural Network (RNN), Long Short Term Memory (LSTM)) and Bidirectional Encoder Representations from Transformers (BERT). The models were fitted with two publicly available datasets. The fastText (with pre-trained model) significantly performed better in predicting...
Background: In Agile Software Development (ASD) planning is valued more than the resulting plans. Pl...
Effort estimation practice in Agile is a critical component of the methodology to help cross-functio...
Machine learning (ML) techniques have been widely investigated for building prediction models, able ...
AbstractNow-a-days agile software development process has become famous in industries and substituti...
This cross-discipline project tests a state-of-the-art neural network model on a problem with high i...
Agile Software development has become famous in industries and replacing the traditional methods of ...
In current scenario of software industry culture, an important and crucial task under project manage...
In the last decade, several studies have proposed the use of automated techniques to estimate the ef...
This scientific article explores the application of machine learning methods for estimating project ...
Nowadays the significant trend of the effort estimation is in demand. It needs more data to be colle...
The project management process has been used in the area of Software Engineering to support project ...
Every competitive IT industry cannot avoid underestimating their projects’ effort, cost, and time. S...
This dissertation takes a new approach to software development effort estimation from the perspectiv...
The software project effort estimation is an important aspect of software engineering practices. The...
A predictive model is required to be accurate and comprehensible in order to inspire confidence in a...
Background: In Agile Software Development (ASD) planning is valued more than the resulting plans. Pl...
Effort estimation practice in Agile is a critical component of the methodology to help cross-functio...
Machine learning (ML) techniques have been widely investigated for building prediction models, able ...
AbstractNow-a-days agile software development process has become famous in industries and substituti...
This cross-discipline project tests a state-of-the-art neural network model on a problem with high i...
Agile Software development has become famous in industries and replacing the traditional methods of ...
In current scenario of software industry culture, an important and crucial task under project manage...
In the last decade, several studies have proposed the use of automated techniques to estimate the ef...
This scientific article explores the application of machine learning methods for estimating project ...
Nowadays the significant trend of the effort estimation is in demand. It needs more data to be colle...
The project management process has been used in the area of Software Engineering to support project ...
Every competitive IT industry cannot avoid underestimating their projects’ effort, cost, and time. S...
This dissertation takes a new approach to software development effort estimation from the perspectiv...
The software project effort estimation is an important aspect of software engineering practices. The...
A predictive model is required to be accurate and comprehensible in order to inspire confidence in a...
Background: In Agile Software Development (ASD) planning is valued more than the resulting plans. Pl...
Effort estimation practice in Agile is a critical component of the methodology to help cross-functio...
Machine learning (ML) techniques have been widely investigated for building prediction models, able ...