Spelling suggestions: "subject:"missing observations (estatistics)"" "subject:"missing observations (cstatistics)""
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Model Selection and Multivariate Inference Using Data Multiply Imputed for Disclosure Limitation and NonresponseKinney, Satkartar K. January 2007 (has links)
Thesis (Ph. D.)--Duke University, 2007.
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Analysis of 2x2 tables of counts with both completely and partially cross-classified data /Gaboury, Isabelle, January 1900 (has links)
Thesis (M. Sc.)--Carleton University, 2001. / Includes bibliographical references (p. 108-110). Also available in electronic format on the Internet.
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Seven methods of handling missing data using samples from a national data baseWitta, Eleanor Lea 06 June 2008 (has links)
The effectiveness of seven methods of handling missing data was investigated in a factorial design using random samples selected from the National Education Longitudinal Study of 1988 (NELS-88). Methods evaluated were listwise deletion, pairwise deletion, mean substitution, Buck's procedure, mean regression, one iteration regression, and iterative regression. Factors controlled were number of variables (4 and 8), average intercorrelation (0.2 and 0.4), sample size (200 and 2000), and proportion of incomplete cases (10%, 20%, and 40%). The pattern of missing values was determined by the pattern existing in the variables selected from NELS-88 data base.
Covariance matrices resulting from the use of each missing data method were compared to the 'true' covariance matrix using multi-sample analysis in LISREL 7. Variable means were compared to the 'true' means using the MANOVA procedure in SPSS/PC+. Statistically significant differences (p≤.05) were detected in both comparisons.
The most surprising result of this study was the effectiveness (p>.05) of pairwise deletion whenever the sample size was large thus supporting the contention that the error term disappears as sample size approaches infinity (Glasser, 1964). Listwise deletion was also effective (p>.05) whenever there were four variables or the sample size was small. Almost as surprising was the relative ineffectiveness (p<.05) of the regression methods. This is explained by the difference in proportion of incomplete cases versus the proportion of missing values, and by the distribution of the missing values within the incomplete cases. / Ph. D.
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A study on some missing value estimation algorithms for DNA microarraydataTai, Ching-wan., 戴青雲. January 2006 (has links)
published_or_final_version / abstract / Mathematics / Master / Master of Philosophy
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A Monte-Carlo comparison of methods in analyzing structural equation models with incomplete data.January 1991 (has links)
by Siu-fung Chan. / Thesis (M.Phil.)--Chinese University of Hong Kong, 1991. / Bibliography: leaves 38-41. / Chapter Chapter 1 --- Introduction --- p.1 / Chapter Chapter 2 --- Analysis of the Structural Equation Model with Continuous Data --- p.6 / Chapter §2.1 --- The Model --- p.6 / Chapter §2.2 --- Mehtods of Handling Incomplete Data --- p.8 / Chapter §2.3 --- Design of the Monte-Carlo Study --- p.12 / Chapter §2.4 --- Results of the Monte-Carlo Study --- p.15 / Chapter Chapter 3 --- Analysis of the Structural Equation Model with Polytomous Data --- p.24 / Chapter §3.1 --- The Model --- p.24 / Chapter §3.2 --- Methods of Handling Incomplete Data --- p.25 / Chapter §3.3 --- Design of the Monte-Carlo Study --- p.27 / Chapter §3.4 --- Results of the Monte-Carlo Study --- p.31 / Chapter Chapter 4 --- Summary and Discussion --- p.36 / References --- p.38 / Tables --- p.42 / Figures --- p.78
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Baseline free approach for the semiparametric transformation models with missing covariates.January 2003 (has links)
Leung Man-Kit. / Thesis (M.Phil.)--Chinese University of Hong Kong, 2003. / Includes bibliographical references (leaves 37-41). / Abstracts in English and Chinese. / Chapter 1 --- Introduction --- p.1 / Chapter 1.1 --- Basic concepts of survival data --- p.3 / Chapter 1.2 --- Missing Complete at Random (MCAR) --- p.8 / Chapter 1.3 --- Missing at Random (MAR) --- p.9 / Chapter 2 --- The maximaization of the marginal likelihood --- p.11 / Chapter 2.1 --- Survival function --- p.11 / Chapter 2.2 --- Missing covariate pattern --- p.13 / Chapter 2.3 --- Set of survival time with rank restrictions --- p.13 / Chapter 2.4 --- Marginal likelihood --- p.14 / Chapter 2.5 --- Score function --- p.15 / Chapter 3 --- The MCMC stochastic approximation approach --- p.17 / Chapter 4 --- Simulations Studies --- p.22 / Chapter 4.1 --- MCAR : Simulation 1 --- p.23 / Chapter 4.2 --- MCAR : Simulation 2 --- p.24 / Chapter 4.3 --- MAR : Simulation 3 --- p.26 / Chapter 4.4 --- MAR : Simulation 4 --- p.27 / Chapter 5 --- Example --- p.30 / Chapter 6 --- Discussion --- p.33 / Appendix --- p.35 / Bibliography --- p.37
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Neural network imputation : a new fashion or a good toolAmer, Safaa R. 07 June 2004 (has links)
Most statistical surveys and data collection studies encounter missing data. A common
solution to this problem is to discard observations with missing data while reporting
the percentage of missing observations in different output tables. Imputation is a tool
used to fill in the missing values. This dissertation introduces the missing data
problem as well as traditional imputation methods (e.g. hot deck, mean imputation,
regression, Markov Chain Monte Carlo, Expectation-Maximization, etc.). The use of
artificial neural networks (ANN), a data mining technique, is proposed as an effective
imputation procedure. During ANN imputation, computational effort is minimized
while accounting for sample design and imputation uncertainty. The mechanism and
use of ANN in imputation for complex survey designs is investigated.
Imputation methods are not all equally good, and none are universally good. However,
simulation results and applications in this dissertation show that regression, Markov
chain Monte Carlo, and ANN yield comparable results. Artificial neural networks
could be considered as implicit models that take into account the sample design
without making strong parametric assumptions. Artificial neural networks make few
assumptions about the data, are asymptotically good and robust to multicollinearity
and outliers. Overall, ANN could be time and resources efficient for an experienced
user compared to other conventional imputation techniques. / Graduation date: 2005
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Multiple comparisons using multiple imputation under a two-way mixed effects interaction modelKosler, Joseph Stephen, January 2006 (has links)
Thesis (Ph. D.)--Ohio State University, 2006. / Title from first page of PDF file. Includes bibliographical references (p. 233-237).
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Meta-analytic methods of pooling correlation matrices for structural equation modeling under different patterns of missing dataFurlow, Carolyn Florence 28 August 2008 (has links)
Not available / text
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Contributions to imputation for missing survey data /Haziza, David, January 1900 (has links)
Thesis (Ph.D.) - Carleton University, 2005. / Includes bibliographical references (p. 252-258). Also available in electronic format on the Internet.
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