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International Journal of Software Engineering and Knowledge Engineering (IJSEKE)
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Volume: 18, Issue: 1(2008) pp. 1-23     DOI: 10.1142/S0218194008003532
Abstract | Full Text (PDF, 376KB) | References
Title: SOFTWARE EFFORT ESTIMATION BY ANALOGY USING ATTRIBUTE SELECTION BASED ON ROUGH SET ANALYSIS
Author(s):
JINGZHOU LI
Correspondence: J.-Z. Li, Department of Computer Science, University of Calgary, 2500 University Dr., NW Calgary, AB, Canada T2N1N4.

Software Engineering Decision Support Laboratory, University of Calgary, Calgary AB, T2N1N4, Canada

GUENTHER RUHE
Software Engineering Decision Support Laboratory, University of Calgary, Calgary AB, T2N1N4, Canada
History:
Received 25 March 2006
Accepted 21 November 2006
Abstract:
Estimation by analogy (EBA) predicts effort for a new project by learning from the performance of former projects. This is done by aggregating effort information of similar projects from a given historical data set that contains projects, or objects in general, and attributes describing the objects. While this has been successful in general, existing research results have shown that a carefully selected subset, as well as weighting, of the attributes may improve the performance of the estimation methods.

In order to improve the estimation accuracy of our former proposed EBA method AQUA, which supports data sets that have non-quantitative and missing values, an attribute weighting method using rough set analysis is proposed in this paper. AQUA is thus extended to AQUA+ by incorporating the proposed attribute weighting and selection method. Better prediction accuracy was obtained by AQUA+ compared to AQUA for five data sets. The proposed method for attribute weighting and selection is effective in that (1) it supports data sets that have non-quantitative and missing values; (2) it supports attribute selection as well as weighting, which are not supported simultaneously by other attribute selection methods; and (3) it helps AQUA+ to produce better performance.
Keywords:
Effort estimation by analogy; feature selection; attribute weighting; rough sets; learning; heuristics

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