Dissertation Bibliography

[1] M. Aitkin, S. Finch, N. Mendell, and H. Thode, A new test for the presence of a normal mixture distribution based on the posterior Bayes factor, Statistics and Computing, 6 (1996), pp. 121-125.
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[2] J. Behboodian, On the modes of a mixture of two normal distributions, Technometrics, 12 (1970), pp. 131-139.
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[3] D. Böhning, P. Schlattmann, and B. Lindsay, Computer-assisted analysis of mixtures (C.A.MAN): Statistical algorithms, Biometrics, 48 (1992), pp. 283-303.
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[4] R. Cassie, Some uses of probability paper in the analysis of size frequency distribution, Australian Journal of Marine and Freshwater Research, 5 (1954), pp. 513-522.
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[5] S. L. Crawford, M. H. DeGroot, J. B. Kadane, and M. J. Small, Modeling lake-chemistry distributions: Approximate Bayesian methods for estimating a finite-mixture model, Technometrics, 34 (1992), pp. 441-453.
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[6] D. L. Donoho, One-sided inference about functionals of a density, The Annals of Statistics, 16 (1988), pp. 1390-1420.
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[7] S. Dudoit, J. Fridlyand, and T. P. Speed, Comparison of discrimination methods for the classification of tumors using gene expression data, Journal of the American Statistical Association, 97 (2002), pp. 77-87.
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[8] B. Efron and R. Tibshirani, An introduction to the bootstrap, Chapman & Hall Ltd, 1993.
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[9] M. B. Eisen, P. T. Spellman, P. O. Brown, and D. Botstein, Cluster analysis and display of genome-wide expression patterns, PNAS, 95 (1998), pp. 14863-14868.
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[10] I. Eisenberger, Genesis of bimodal distributions, Technometrics, 6 (1964), pp. 357-363.
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[11] E. B. Fowlkes, Some methods for studying the mixture of two normal (lognormal) distributions, Journal of the American Statistical Association, 74 (1979), pp. 561-575.
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[12] W. D. Furman and B. G. Lindsay, Testing for the number of components in a mixture of normal distributions using moment estimators, Computational Statistics and Data Analysis, 17 (1994), pp. 473-492.
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[13] G. Getz, E. Levine, and E. Domany, Coupled two-way clustering analysis of gene microarray data, PNAS, 97 (2000), pp. 12079-12084.
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[14] J. K. Ghosh and P. K. Sen, On the asymptotic performance of the log likelihood ratio statistic for the mixture model and related results, in Proceedings of the Berkeley conference in honor of Jerzy Neyman and Jack Kiefer (Vol. 2), 1985, pp. 789-806.
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[15] B. Goffinet, P. Loisel, and B. Laurent, Testing in normal mixture models when the proportions are known, Biometrika, 79 (1992), pp. 842-846.
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[16] C. Gu, Reply to comments on ``Model indexing and smoothing parameter selection in nonparametric function estimation'', Statistica Sinica, 8 (1998), pp. 638-646.
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[17] P. Hall and I. Johnstone, Empirical functionals and efficient smoothing parameter selection (Disc: p509-531), Journal of the Royal Statistical Society, Series B, Methodological, 54 (1992), pp. 475-509.
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[18] J. Harding, The use of probability paper for the graphical analysis of polymodal frequency distributions., Journal of Marine Biollogical Association, 28 (1948), pp. 141-153.
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[19] J. J. Heckman, R. Robb, and J. R. Walker, Testing the mixture of exponentials hypothesis and estimating the mixing distribution by the method of moments, Journal of the American Statistical Association, 85 (1990), pp. 582-589.
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[20] F. d. Helguero, Sui massimi delle curve dimorfiche,, Biometrika, 3 (1904), pp. 85-98.
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[21] W. Hoeffding, A class of statistics with asymptotically normal distribution, Annals of Mathematical Statistics, 19 (1948), pp. 293-325.
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[22] I. Kakiuchi, Unimodality conditions of the distribution of a mixture of two distributions, Kobe University Mathematics Seminar Notes, 9 (1981), pp. 315-32w5.
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[23] W. C. M. Kallenberg, J. Oosterhoff, and B. F. Schriever, The number of classes in chi-squared goodness-of-fit tests, Journal of the American Statistical Association, 80 (1985), pp. 959-968.
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[24] J. H. B. Kemperman, Mixtures with a limited number of modal intervals, The Annals of Statistics, 19 (1991), pp. 2120-2144.
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[25] M. K. Kerr, C. A. Afshari, L. Bennett, P. Bushel, J. Martinez, N. J. Walker, and G. A. Churchill, Statistical analysis of a gene expression microarray experiment with replication, Statistica Sinica, 12 (2002), pp. 203-217.
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[26] S. C. Kou and B. Efron, Smoothers and the Cp, generalized maximum likelihood, and extended exponential criteria: A geometric approach, Journal of the American Statistical Association, 97 (2002), pp. 766-782.
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[27] B. G. Leroux, Consistent estimation of a mixing distribution, The Annals of Statistics, 20 (1992), pp. 1350-1360.
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[28] L. I.-K. Lin, A concordance correlation coefficient to evaluate reproducibility, Biometrics, 45 (1989), pp. 255-268.
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[29] B. Lindsay and M. Markatou, Statistical distancse: A global framework for inference. Book Manuscript, 2003.
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[30] B. G. Lindsay, Mixture models: Theory, geometry and applications, Institute of Mathematical Statistics, 1995.
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[31] B. G. Lindsay and K. Roeder, Residual diagnostics for mixture models, Journal of the American Statistical Association, 87 (1992), pp. 785-794.
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[32] G. McLachlan and D. Peel, Finite Mixture Models, John Wiley and Sons Inc., 2000.
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[33] G. J. McLachlan, On bootstrapping the likelihood ratio test statistic for the number of components in a normal mixture, Applied Statistics, 36 (1987), pp. 318-324.
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[34] D. Philips and A. Smith, Bayesian model comparison via jump diffusions, In Markov chain Monte Carlo in practice, Gilks, W. R., Richardson, S. and Spiegelhalter, D. J. (EdS). London: Chapman & Hall Ltd , (1996), pp. 115-130.
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[35] A. Raftery, Hypothesis testing and model selection, In Markov chain Monte Carlo in practice, Gilks, W. R., Richardson, S. and Spiegelhalter, D. J. (EdS). London: Chapman & Hall Ltd , (1996), pp. 115-130.
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[36] S. Richardson and P. J. Green, On Bayesian analysis of mixtures with an unknown number of components (Disc: p758-792) (Corr: 1998V60 p661), Journal of the Royal Statistical Society, Series B, Methodological, 59 (1997), pp. 731-758.
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[37] F. Riesz and B. Sz.-Nagy, Functional Analysis, Dover, 1990.
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[38] C. A. Robertson and J. G. Fryer, Some descriptive properties of normal mixtures, Skandinavisk Aktuarietidskrift, 69 (1969), pp. 137-146.
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[39] K. Roeder, Density estimation with confidence sets exemplified by superclusters and voids in the galaxies, Journal of the American Statistical Association, 85 (1990), pp. 617-624.
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[40] height 2pt depth -1.6pt width 23pt, A graphical technique for determining the number of components in a mixture of normals, Journal of the American Statistical Association, 89 (1994), pp. 487-495.
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[41] F. W. Satterthwaite, Synthesis of variance, Psychometrika, 6 (1941), pp. 309-316.
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[42] height 2pt depth -1.6pt width 23pt, An approximate distribution of estimates of variance components, Biometrics Bull., 2 (1946), pp. 110-114.
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[43] M. F. Schilling, A. E. Watkins, and W. Watkins, Is human height bimodal?, The American Statistician, 56 (2002), pp. 223-229.
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[44] R. J. Serfling, Approximation theorems of mathematical statistics, John Wiley & Sons, 1980.
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[45] L. Simar, Maximum likelihood estimation of a compound Poisson process, The Annals of Statistics, 4 (1976), pp. 1200-1209.
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[46] P. Thyrion, Contribution a l'etude du bonus pour non sinsitre en assurance automobile, Astin Bulletin, (1960).
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[47] R. Tibshirani, T. Hastie, B. Narasimhan, M. Eisen, G. Sherlock, P. Brown, and D. Botstein, Exploratory screening of genes and clusters from microarray experiments, Statistica Sinica, 12 (2002), pp. 47-59.
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[48] R. Tibshirani, G. Walther, and T. Hastie, Estimating the number of clusters in a data set via the gap statistic, Journal of the Royal Statistical Society, Series B, Methodological, 63 (2001), pp. 411-423.
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[49] D. M. Titterington, A. F. M. Smith, and U. E. Makov, Statistical analysis of finite mixture distributions, John Wiley & Sons, 1985.
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[50] N. Vlassis and A. Likas, A kurtosis-based dynamic approach to gaussian mixture modeling, IEEE Trans. Systems, Man, and Cybernetics, Part A, 29 (1999), pp. 393-399.
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[51] N. A. Vlassis, G. Papakonstantinou, and P. Tsanakas, Mixture density estimation based on maximum likelihood and sequential test statistics, Neural Processing Letters, 9 (1999), pp. 63-76.
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[52] R. von Mises, On the assymptotic theory of differentiable statistical functions, Annals of Mathematical Statistics, (1947), pp. 309-348.
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[53] L. Wasserman, Asymptotic inference for mixture models using data-dependent priors, Journal of the Royal Statistical Society, Series B, Methodological, 62 (2000), pp. 159-180.
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[54] S. R. Wilson, Sound and exploratory data analysis, in COMPSTAT 1982, Proceedings in Computational Statistics, 1982, pp. 447-450.
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[55] D.-S. Yoo and W. E. Stark, Stochastic degrees of freedom in a wide-sense stationary uncorrelated scattering channel, tech. rep., The University of Michigan, 2003.
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[56] K. Yosida, Functional Analysis, Springer-Verlag, 1980.
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