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JSS
2007

A new imputation method for small software project data sets

13 years 4 months ago
A new imputation method for small software project data sets
Effort prediction is a very important issue for software project management. Historical project data sets are frequently used to support such prediction. But missing data are often contained in these data sets and this makes prediction more difficult. One common practice is to ignore the cases with missing data, but this makes the originally small software project database even smaller and can further decrease the accuracy of prediction. The alternative is missing data imputation. There are many imputation methods. Software data sets are frequently characterised by their small size but unfortunately sophisticated imputation methods prefer larger data sets. For this reason we explore using simple methods to impute missing data in small project effort data sets. We propose a class mean imputation (CMI) method based on the k-NN hot deck imputation method (MINI) to impute both continuous and nominal missing data in small data sets. We use an incremental approach to increase the variance...
Qinbao Song, Martin J. Shepperd
Added 16 Dec 2010
Updated 16 Dec 2010
Type Journal
Year 2007
Where JSS
Authors Qinbao Song, Martin J. Shepperd
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