DocumentCode
596219
Title
A Heuristic Rule Reduction Approach to Software Fault-proneness Prediction
Author
Monden, Akito ; Keung, Jacky ; Morisaki, Shuji ; Kamei, Yasutaka ; Matsumoto, Kaname
Author_Institution
Grad. Sch. of Inf. Sci., Nara Inst. of Sci. & Technol., Ikoma, Japan
Volume
1
fYear
2012
fDate
4-7 Dec. 2012
Firstpage
838
Lastpage
847
Abstract
Background: Association rules are more comprehensive and understandable than fault-prone module predictors (such as logistic regression model, random forest and support vector machine). One of the challenges is that there are usually too many similar rules to be extracted by the rule mining. Aim: This paper proposes a rule reduction technique that can eliminate complex (long) and/or similar rules without sacrificing the prediction performance as much as possible. Method: The notion of the method is to removing long and similar rules unless their confidence level as a heuristic is high enough than shorter rules. For example, it starts with selecting rules with shortest length (length=1), and then it continues through the 2nd shortest rules selection (length=2) based on the current confidence level, this process is repeated on the selection for longer rules until no rules are worth included. Result: An empirical experiment has been conducted with the Mylyn and Eclipse PDE datasets. The result of the Mylyn dataset showed the proposed method was able to reduce the number of rules from 1347 down to 13, while the delta of the prediction performance was only. 015 (from. 757 down to. 742) in terms of the F1 prediction criteria. In the experiment with Eclipsed PDE dataset, the proposed method reduced the number of rules from 398 to 12, while the prediction performance even improved (from. 426 to. 441.) Conclusion: The novel technique introduced resolves the rule explosion problem in association rule mining for software proneness prediction, which is significant and provides better understanding of the causes of faulty modules.
Keywords
data mining; software fault tolerance; Eclipse PDE dataset; Mylyn dataset; association rule mining; fault-prone module predictor; heuristic rule reduction approach; logistic regression model; random forest; rule reduction technique; software fault-proneness prediction; support vector machine; Association rules; Educational institutions; Explosions; Measurement; Predictive models; Software; association rule mining; data mining; defect prediction; empirical study; software quality;
fLanguage
English
Publisher
ieee
Conference_Titel
Software Engineering Conference (APSEC), 2012 19th Asia-Pacific
Conference_Location
Hong Kong
ISSN
1530-1362
Print_ISBN
978-1-4673-4930-7
Type
conf
DOI
10.1109/APSEC.2012.103
Filename
6462753
Link To Document