DocumentCode :
1255982
Title :
Data Mining Techniques for Software Effort Estimation: A Comparative Study
Author :
Dejaeger, Karel ; Verbeke, Wouter ; Martens, David ; Baesens, Bart
Author_Institution :
Dept. of Decision Sci. & Inf. Manage., Katholieke Univ. Leuven, Leuven, Belgium
Volume :
38
Issue :
2
fYear :
2012
Firstpage :
375
Lastpage :
397
Abstract :
A predictive model is required to be accurate and comprehensible in order to inspire confidence in a business setting. Both aspects have been assessed in a software effort estimation setting by previous studies. However, no univocal conclusion as to which technique is the most suited has been reached. This study addresses this issue by reporting on the results of a large scale benchmarking study. Different types of techniques are under consideration, including techniques inducing tree/rule-based models like M5 and CART, linear models such as various types of linear regression, nonlinear models (MARS, multilayered perceptron neural networks, radial basis function networks, and least squares support vector machines), and estimation techniques that do not explicitly induce a model (e.g., a case-based reasoning approach). Furthermore, the aspect of feature subset selection by using a generic backward input selection wrapper is investigated. The results are subjected to rigorous statistical testing and indicate that ordinary least squares regression in combination with a logarithmic transformation performs best. Another key finding is that by selecting a subset of highly predictive attributes such as project size, development, and environment related attributes, typically a significant increase in estimation accuracy can be obtained.
Keywords :
data mining; program testing; regression analysis; software cost estimation; CART; M5; data mining techniques; estimation techniques; feature subset selection; generic backward input selection wrapper; linear regression; logarithmic transformation; nonlinear models; ordinary least squares regression; predictive model; rigorous statistical testing; rule-based models; software effort estimation; Artificial neural networks; Cognition; Data mining; Data models; Estimation; Regression tree analysis; Software; Data mining; regression.; software effort estimation;
fLanguage :
English
Journal_Title :
Software Engineering, IEEE Transactions on
Publisher :
ieee
ISSN :
0098-5589
Type :
jour
DOI :
10.1109/TSE.2011.55
Filename :
5928350
Link To Document :
بازگشت