7 Missing Data in Software Engineering Barnard, J. & Rubin, DB, Small sample degrees of freedom with multiple imputation,
Biometrika 86(4), 948–955.
Chidamber, SR Kemerer, CF, A metrics suite
for object oriented design,
IEEE Trans. Software Eng.
20(6), Fleming, TH Harrington, D. (1984), Nonparametric estimation of the survival distribution in censored data,
Communications in Statistics – Theory and Methods 20 13, 2469–2486.
Goldenson, DR, Gopal, A. & Mukhopadhyay, T. (1999), Determinants of success in software measurement programs, in
Sixth International Symposium on Software Metrics, IEEE Computer Society Press, Los Alamitos, CA, pp. Graves, TL Mockus, A. (1998), Inferring change effort from configuration management databases, in
Metrics 98: Fifth International Symposium on Software Metrics, Bethesda, MD, pp. Graves, TL, Karr, AF, Marron, J. S. & Siy, HP, Predicting fault incidence using software change history,
IEEE Transactions on Software Engineering,
26(7), 653–661.
Halstead, M. H. (1977),
Elements of Software Science, Elsevier North-Holland, New York.
Herbsleb, JD Grinter, R. (1998), Conceptual simplicity meets organizational complexity Case study of a corporate metrics program, in
20th International Conference on Software Engineering, IEEE Computer Society Press, Los Alamitos, CA, pp. 271–280.
Herbsleb, JD, Krishnan, M, Mockus, A, Siy,
HP Tucker, GT,
Lessons from Ten Years of Software Factory Experience, Technical Report, Bell Laboratories.
Jönsson, P. & Wohlin, C. (2004), An evaluation of k-nearest neighbour imputation using likert data, in
Proceedings of the 10th International Symposium on Software Metrics, pp. 108–118.
Kaplan, E. & Meyer, P. (1958), Non-parametric estimation from incomplete observations,
Journal of the American Statistical Association, Kim, J. & Curry, J. (1977), The treatment of missing data in multivariate analysis,
Social Methods and Research 6, Little, R. J. AA test of missing completely at random for multivariate
data with missing values,
Journal of the American Statistical Association 83(404), Little, R. & Hyonggin, A. (2003), Robust likelihood-based analysis of multivariate data with missing values, Technical Report Working Paper 5, The University of Michigan Department of
Biostatistics Working Paper Series. http://www.bepress.com/umichbiostat/paper5
Little, R. J. A. & Rubin, DB,
Statistical Analysis with Missing Data, Wiley Series in Probability and Mathematical Statistics, Wiley, New York.
Little, R. J. A. & Rubin, DB, The analysis of social science data with missing values,
Sociological Methods and Research 18(2), 292–326.
McCabe, TA complexity measure,
IEEE Transactions on Software Engineering 2(4),
308–320.
Mockus, A. (2006), Empirical estimates of software availability
of deployed systems, in
2006 International Symposium on Empirical Software Engineering, ACM Press, Rio de Janeiro, Brazil, pp. 222–231.
Mockus, A. (2007), Software support tools and experimental work, in V. Basili et al., eds,
Empirical Software Engineering Issues: LNCS 4336, Springer, pp. 91–99.
Mockus, A. & Votta, LG, Identifying reasons for software changes using historic databases, Technical Report BL, Bell Laboratories.
Myrtveit, I, Stensrud, E. & Olsson, U. (2001), Analyzing data sets with missing data an empirical evaluation of imputation methods and likelihood-based methods
IEEE Transactions on Software Engineering 27(11), 1999–1013.
Novo, A. (2002), Analysis of multivariate normal datasets with missing values, Ported to R by Alvaro A. Novo. Original by J.L. Schafer.
R Development Core Team (2005),
R: A Language and Environment for Statistical Computing, R Foundation for Statistical Computing, Vienna, Austria. ISBN 3-900051-07-0. http://www.R- project.org
Roth, PL, Missing data a conceptual review for applied psychologist,
Personnel Psychology 47, 537–560.
200 A. Mockus
Rubin, DB,
Multiple Imputation for Nonresponse in Surveys, Wiley, New York.
Schafer, J. L. (1997),
Analysis of Incomplete Data, Monograph on Statistics and Applied Probability, Chapman & Hall, London.
Schafer, J. S. (1999), Software for multiple imputation. http://www.stat.psu.edu/
Schafer, J. L. & Olsen, M. K. (1998), Multiple imputation for multivariate missing data problems,
Multivariate Behavioural Research 33(4), Strike, K, Emam, K. E. & Madhavji, N. (2001), Software cost estimation
with incomplete data,
IEEE Transactions on Software Engineering 27(10), Swanson, E. B. (1976), The dimensions of maintenance, in
Proceedings of the 2nd Conference on Software Engineering, San Francisco, pp. 492–497.
Twala, B, Cartwright, M. & Shepperd, M. (2006), Ensemble of missing data techniques to improve software prediction accuracy, in
ICSE’06, ACM, Shanghai, China, pp. 909–912.
Weisberg, S. (1985),
Applied Linear Regression, 2nd Edition, Wiley,
New York, USA.