A Software Quality Prediction Model Without Training Data Set


The KIPS Transactions:PartD, Vol. 10, No. 4, pp. 689-696, Aug. 2003
10.3745/KIPSTD.2003.10.4.689,   PDF Download:

Abstract

Criticality prediction models that determine whether a design entity is fault-prone or non fault-prone are used for identifying trouble spots of software system in analysis or design phases. Many criticality prediction models for identifying fault-prone modules using complexity metrics have been suggested. But most of them need training data set. Unfortunately very few organizations have their own training data. To solve this problem, this paper builds a new prediction model, KSM, based on Kohonen SOM neural networks. KSM is implemented and compared with a well-known prediction model, BackPropagation neural network Model (BPM), considering internal characteristics, utilization cost and accuracy of prediction. As a result, this paper shows that KSM has comparative performance with BPM.


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Cite this article
[IEEE Style]
H. U. Seog, "A Software Quality Prediction Model Without Training Data Set," The KIPS Transactions:PartD, vol. 10, no. 4, pp. 689-696, 2003. DOI: 10.3745/KIPSTD.2003.10.4.689.

[ACM Style]
Hong Ui Seog. 2003. A Software Quality Prediction Model Without Training Data Set. The KIPS Transactions:PartD, 10, 4, (2003), 689-696. DOI: 10.3745/KIPSTD.2003.10.4.689.