Graduate Courses |
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601. Statistical Analysis. (3-2). Credit 4.For students in engineering, physical and mathematical sciences. Introduction to probability, probability distributions and statistical inference; hypotheses testing; introduction to methods of analysis such as tests of independence, regression, analysis of variance with some consideration of planned experimentation. Prerequisite: MATH 152 or 172. |
604. Special Problems in Statistical Computations and Analysis. (3-0). Credit 3.Computer algorithms for programming; statistical analysis, efficient uses of existing statistical computer programs, generation of random numbers and statistical variables, programming of simulation studies, selected topics in statistical analysis not covered in STAT 601. Prerequisite: STAT 601 or concurrent enrollment in STAT 610 and 641. |
605. Advanced Topics in Computational Statistics. (3-0). Credit 3.Algorithms in constrained and unconstrained optimization; time series analysis; multivariate analysis; use and development of modern graphical exploratory data analysis; methods for interfacing programs with existing computer environments. Prerequisite: STAT 612. |
607. Sampling. (3-0). Credit 3.Planning, execution and
analysis of sampling from finite populations; simple, stratified,
multistage and systematic sampling; ratio estimates. Prerequisite: STAT
601 or 652 or concurrent enrollment in STAT 641. Syllabus
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608. Regression Analysis. (3-0). Credit 3. Multiple,
curvilinear, nonlinear, robust, logistic and principal components
regression analysis; regression diagnostics, transformations, analysis
of covariance. Prerequisite: STAT 601 or 641. Syllabus
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610. Theory of Statistics – Distribution Theory. (3-0). Credit 3.Brief introduction to probability theory; distributions and expectations of random variables, transformations of random variables and order statistics; generating functions and basic limit concepts. Prerequisite: MATH 409 or concurrent enrollment in MATH 409. |
614. Statistical Applications in Probability. (3-0). Credit 3.Probability measures; Lebesque-Stieltjes integration, sigma fields, random variables, expectation, moment inequalities, independence, convergence of random variables and sample moments, characteristics functions, convergence of distributions, the central limit theorem and the delta method. Prerequisite: STAT 610 or its equivalent. |
620. Statistical Large Sample Theory. (3-0). Credit 3.Transformations of statistics; statistical functionals including influence curves and M, L and R estimators; u-statistics; asymptotic properties of estimators; asymptotic properties of tests; order of stochastic convergence; Edgeworth expansions and the bootstrap. Prerequisites: STAT 614. |
623. Statistical Methods for Chemistry. (3-0). Credit 3.Chemometrics topics of process optimization, precision and accuracy; curve fitting; chi-squared tests; multivariate calibration; errors in calibration standards; statistics of instrumentation. Prerequisite: STAT 601, 641 or 652 or approval of instructor. |
626. Methods in Time Series Analysis. (3-0). Credit 3.Introduction to statistical time series analysis; autocorrelation and spectral characteristics of univariate, autoregressive, moving average models; identification, estimation and forecasting. Prerequisite: STAT 601 or 642 or approval of instructor. |
627. Nonparametric Function Estimation. (3-0). Credit 3.Nonparametric function estimation; kernel, local polynomials, Fourier series and spline methods; automated smoothing methods including cross-validation; large sample distributional properties of estimators; recent advances in function estimation. Prerequisite: STAT 611. |
630. Overview of Mathematical Statistics. (3-0). Credit 3.Basic probability theory including distributions of random variables and expectations. Introduction to the theory of statistical inference from the likelihood point of view including maximum likelihood estimation, confidence intervals, and likelihood ratio tests. Introduction to Bayesian methods. Prerequisites: MATH 221, 251, and 253. Syllabus Textbook |
636. Methods in Multivariate Analysis. (3-0). Credit 3.Multivariate extensions of the chi-square and t-tests, discrimination and classification procedures; applications to diagnostic problems in biological, medical, anthropological and social research; multivariate analysis of variance, principal component and factor analysis, canonical correlations. Prerequisites: MATH 423 and STAT 653 or approval of instructor. Cross-listed with INFO 657. Syllabus Textbook |
641. The Methods of Statistics I. (3-0). Credit 3.An application of the various disciplines in statistics to data analysis, introduction to statistical software; demonstration of interplay between probability models and statistical inference. Prerequisite: Concurrent enrollment in STAT 610 or approval of instructor. Syllabus Textbook |
642. The Methods of Statistics II. (3-0). Credit 3.Design and analysis of experiments; scientific method; graphical displays; analysis of nonconventional designs and experiments involving categorical data. Prerequisite: STAT 641. Syllabus |
652. Statistics in Research II. (3-0). Credit 3.Continuation of STAT 651. Concepts of experimental design, individual treatment comparisons, randomized blocks and factorial experiments, multiple regression, Chi-squared tests and a brief introduction to covariance, non-parametric methods and sample surveys. Prerequisite: STAT 651. |
653. Statistics in Research III. (3-0). Credit 3.Advanced topics in ANOVA; analysis of covariance; and regression analysis including analysis of messy data; non-linear regression; logistic and weighted regression; diagnostics and model building; emphasis on concepts; computing and interpretation. Prerequisite; STAT 652 Syllabus |
657. Advanced Programming Using SAS. (3-0). Credit 3.Programming with SAS/IML, programming in SAS Data step, advanced use of various SAS procedures. Prerequisites: STAT 604 and 642. Syllabus |
659. Applied Categorical Data Analysis. (3-0). Credit 3.Introduction to analysis and interpretation of categorical data using ANOVA/regression analogs; includes contingency tables, loglinear models, logistic regression; use of computer software such as SAS, GLIM, SPSSX. Prerequisite: STAT 601, 641 or 652 or equivalent. Syllabus Textbook |
661. Statistical Genetics I. (3-0). Credit 3.Basic concepts in human genetics, sampling designs, gene frequency estimation, Hardy-Weinberg equilibrium, linkage disequilibrium, association and transmission disequilibrium test studies, linkage and pedigree analysis, segregation analysis, polygenic models, DNA sequence analysis. Prerequisites: STAT 610 and 611. |
665. Statistical Applications of Wavelets. (3-0). Credit 3.This is a course on the use of wavelet methods in statistics. The course introduces wavelet theory, provides an overview of wavelet-based statistical methods. Topics include smoothing of noisy signals, estimation of function data and representation of stochastic processes. Some emphasis is given to Bayesian procedures. Prerequisite: STAT 611 or approval by the instructor. |
667. Statistics for Advanced Placement Teachers. (3-0). Credit 3.Review of the fundamental concepts and techniques of statistics; topics included in Advanced Placement Statistics; exploring data, planning surveys and experiments, exploring models, statistical inference. Prerequisite: Approval of instructor. |
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