Model tree based adaption strategy for software effort estimation by analogy
Mohammad Azzeh

TL;DR
This paper introduces a Model Tree based adaptation strategy for analogy-based software effort estimation, effectively handling complex datasets with categorical attributes and reducing user interaction.
Contribution
The paper proposes a novel Model Tree based adaptation method that improves estimation accuracy and efficiency over traditional linear and nonlinear techniques.
Findings
Outperforms linear and nonlinear adaptation methods in accuracy.
Effectively handles datasets with many categorical attributes.
Reduces user interaction and enhances model learning efficiency.
Abstract
Background: Adaptation technique is a crucial task for analogy based estimation. Current adaptation techniques often use linear size or linear similarity adjustment mechanisms which are often not suitable for datasets that have complex structure with many categorical attributes. Furthermore, the use of nonlinear adaptation technique such as neural network and genetic algorithms needs many user interactions and parameters optimization for configuring them (such as network model, number of neurons, activation functions, training functions, mutation, selection, crossover, ... etc.). Aims: In response to the abovementioned challenges, the present paper proposes a new adaptation strategy using Model Tree based attribute distance to adjust estimation by analogy and derive new estimates. Using Model Tree has an advantage to deal with categorical attributes, minimize user interaction and…
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Taxonomy
TopicsSoftware Engineering Research · Machine Learning and Data Classification · Software Reliability and Analysis Research
