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Front. Inform. Technol. Electron. Eng.  2010, Vol. 11 Issue (2): 130-138    DOI: 10.1631/jzus.C0910084
    
Multi-instance learning for software quality estimation in object-oriented systems: a case study
Peng HUANG*, Jie ZHU
Department of Electronic Engineering, Shanghai Jiao Tong University, Shanghai 200240, China
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Abstract  We investigate a problem of object-oriented (OO) software quality estimation from a multi-instance (MI) perspective. In detail, each set of classes that have an inheritance relation, named ‘class hierarchy’, is regarded as a bag, while each class in the set is regarded as an instance. The learning task in this study is to estimate the label of unseen bags, i.e., the fault-proneness of untested class hierarchies. A fault-prone class hierarchy contains at least one fault-prone (negative) class, while a non-fault-prone (positive) one has no negative class. Based on the modification records (MRs) of the previous project releases and OO software metrics, the fault-proneness of an untested class hierarchy can be predicted. Several selected MI learning algorithms were evaluated on five datasets collected from an industrial software project. Among the MI learning algorithms investigated in the experiments, the kernel method using a dedicated MI-kernel was better than the others in accurately and correctly predicting the fault-proneness of the class hierarchies. In addition, when compared to a supervised support vector machine (SVM) algorithm, the MI-kernel method still had a competitive performance with much less cost.

Key wordsObject-oriented (OO) software      Multi-instance (MI) learning      Software quality estimation      Kernel methods     
Received: 11 February 2009      Published: 01 January 2010
CLC:  TN914  
  TN915  
  TP311  
Cite this article:

Peng HUANG, Jie ZHU. Multi-instance learning for software quality estimation in object-oriented systems: a case study. Front. Inform. Technol. Electron. Eng., 2010, 11(2): 130-138.

URL:

http://www.zjujournals.com/xueshu/fitee/10.1631/jzus.C0910084     OR     http://www.zjujournals.com/xueshu/fitee/Y2010/V11/I2/130


Multi-instance learning for software quality estimation in object-oriented systems: a case study

We investigate a problem of object-oriented (OO) software quality estimation from a multi-instance (MI) perspective. In detail, each set of classes that have an inheritance relation, named ‘class hierarchy’, is regarded as a bag, while each class in the set is regarded as an instance. The learning task in this study is to estimate the label of unseen bags, i.e., the fault-proneness of untested class hierarchies. A fault-prone class hierarchy contains at least one fault-prone (negative) class, while a non-fault-prone (positive) one has no negative class. Based on the modification records (MRs) of the previous project releases and OO software metrics, the fault-proneness of an untested class hierarchy can be predicted. Several selected MI learning algorithms were evaluated on five datasets collected from an industrial software project. Among the MI learning algorithms investigated in the experiments, the kernel method using a dedicated MI-kernel was better than the others in accurately and correctly predicting the fault-proneness of the class hierarchies. In addition, when compared to a supervised support vector machine (SVM) algorithm, the MI-kernel method still had a competitive performance with much less cost.

关键词: Object-oriented (OO) software,  Multi-instance (MI) learning,  Software quality estimation,  Kernel methods 
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