This paper proposes a novel method to generate synthetic project cases and add them to a fit dataset for the purpose of improving the performance of analogy-based software effort estimation. The proposed method extends conventional over-sampling method, which is a preprocessing procedure for n-group classification problems, which makes it suitable for any imbalanced dataset to be used in analogy-based system. We experimentally evaluated the effect of the over-sampling method to improve the performance of the analogy-based software effort estimation by using the Desharnais dataset. Results show significant improvement to the estimation accuracy by using our approach
Software effort estimation is an essential feature of software engineering for effective planning, c...
Accurate effort estimation of software development plays an important role to predict how much effor...
Software development effort is one of the most important metrics that must be correctly estimated in...
This thesis proposes a novel approach, called Analogy-X to extend and improve the classical data-int...
Background: There are too many design options for software effort estimators. How can we best explor...
In this paper a systematic review is conducted to investigate the structure, components, techniques,...
Abstract—Despite the predictive performance of Analogy-Based Estimation (ABE) in generating better e...
Context: Software effort estimation at early stage is a crucial task for project bedding and feasibi...
Software effort estimation by analogy is a viable alternative method to other estimation techniques,...
Software effort estimation (SEE) usually suffers from data scarcity problem due to the expensive or ...
Software effort estimation by analogy is a viable alternative method to other estimation techniques,...
Since software development environments, methods and tools are changing rapidly, the importance of a...
Abstract. Estimation of a software project effort, based on project analogies, is a promising method...
Accurate project effort prediction is an important goal for the software engineering community. To ...
Software effort estimates is an important part of software development work and provides essential i...
Software effort estimation is an essential feature of software engineering for effective planning, c...
Accurate effort estimation of software development plays an important role to predict how much effor...
Software development effort is one of the most important metrics that must be correctly estimated in...
This thesis proposes a novel approach, called Analogy-X to extend and improve the classical data-int...
Background: There are too many design options for software effort estimators. How can we best explor...
In this paper a systematic review is conducted to investigate the structure, components, techniques,...
Abstract—Despite the predictive performance of Analogy-Based Estimation (ABE) in generating better e...
Context: Software effort estimation at early stage is a crucial task for project bedding and feasibi...
Software effort estimation by analogy is a viable alternative method to other estimation techniques,...
Software effort estimation (SEE) usually suffers from data scarcity problem due to the expensive or ...
Software effort estimation by analogy is a viable alternative method to other estimation techniques,...
Since software development environments, methods and tools are changing rapidly, the importance of a...
Abstract. Estimation of a software project effort, based on project analogies, is a promising method...
Accurate project effort prediction is an important goal for the software engineering community. To ...
Software effort estimates is an important part of software development work and provides essential i...
Software effort estimation is an essential feature of software engineering for effective planning, c...
Accurate effort estimation of software development plays an important role to predict how much effor...
Software development effort is one of the most important metrics that must be correctly estimated in...