Statistics Courses (STAT)
Related Catalog Entry: School of Information Technology and Engineering / Statistics
Related Mason Website: School of Information Technology and Engineering (http://ite.gmu.edu/)
250 Introductory Statistics I (3:3:0).Prerequisite: High school algebra.
An elementary introduction to statistics. Topics include descriptive statistics,
probability, estimation and hypothesis testing for means and proportions, correlation
and regression. Students use statistical software for assignments. f,s,sum
344 Probability and Statistics for Engineers and Scientists I (3:3:0).
Prerequisite: MATH 213. An introduction to probability and statistics with applications
to computer science, engineering, operations research, and information technology.
Basic concepts of probability, random variables and expectation, Poisson process,
bivariate distributions, sums of independent random variables, correlation and least
squares estimation, central limit theorem, sampling distributions, maximum likelihood
and unbiased estimators, confidence interval construction, and hypothesis testing.
350 Introductory Statistics II (3:3:0).Prerequisite: STAT 250. An emphasis
on applications. Topics include analysis of variance, multiple regression, and nonparametric
inference. A statistical computer package is used for data analysis.
354 Probability and Statistics for Engineers and Scientists II (3:3:0).
Prerequisite: STAT 344. A continuation of STAT 344. Multivariate probability distributions,
variable transformations, regression, analysis of variance, contingency tables, and
nonparametric methods. Applications to quality control, acceptance sampling, and
reliability.
362 Introduction to Computer Statistical Packages (3:3:0).Prerequisite:
STAT 250 or equivalent. The use of computer packages in the statistical analysis
of data. Topics include data entry, checking, and manipulation, as well as the use
of computer statistical packages for regression and analysis of variance. f,s
455 Experimental Design (3:3:0).Prerequisite: STAT 350, 354, or DESC 353.
Principles of analysis of variance and experimental design. Topics include computation
and interpretation of analysis of variance; multiple comparisons; orthogonal contrasts;
design of experiments including factorial, hierarchical, and split plot designs;
principles of blocking and confounding in 2**n experiments; estimation of variance
components. Optional topics may include analysis of covariance, partial hierarchical
designs, or incomplete block designs. Computer statistical packages are used to perform
computations.
457 Applied Nonparametric Statistics (3:3:0).Prerequisites: STAT 350,
STAT 354, DESC 353, or equivalent.An introduction to nonparametric methods with
applications to the decision and information sciences and operations analysis. Topics
covered are testing and estimation for one- and two-sample problems, independent
and paired samples, location and dispersion problems, one- and two-way layouts, tests
for independence, regression, and discussion of efficiency.
463 Introduction to Exploratory Data Analysis (3:3:0).Prerequisite: STAT
250 or equivalent. An introduction to modern exploratory data analysis techniques.
Topics include graphical techniques, such as box plots, parallel coordinate plots,
and other graphical devices, re-expression and transformation of data, order statistics,
influence and leverage, and dimensionality reduction methods such as projection pursuit.
474 Introduction to Survey Sampling (3:3:0).Prerequisite: 300-level course
in probability or statistics. An introduction to the design and analysis of sample
surveys. Sample designs covered include simple random sampling; systematic sampling;
stratified, cluster, and multistage sampling. Analytical methods include sample size
determination, ratio and regression estimation, imputation for missing data, and
nonsampling error adjustment. Practical problems encountered in conducting a survey
are discussed. Methods are applied to case studies of actual surveys. Class project
may be required. The course is recommended for students of decision, information,
and social sciences, and mathematics. f
498 Independent Study in Statistics (1-3:0:0).Prerequisite: 60 undergraduate
credits; must be arranged with instructor and approved by the department chair before
registering. A directed self-study of special topics of current interest in statistics.
May be repeated for a maximum of six credits if topics are substantially different.
499 Special Topics in Statistics (3:3:0).Prerequisites: 60 undergraduate
credits and permission of instructor; specific prerequisites vary with the nature
of the topic. Topics of special interest to undergraduates. May be repeated for a
maximum of six credits if the topics are substantially different.
510 Statistical Foundations for Technical Decision Making (3:3:0).Prerequisite:
MATH 108 or equivalent, or permission of instructor. The use of statistical methods
as scientific tools in the analysis of practical problems. Topics include descriptive
statistics, probability theory; distributions; sampling, inference: estimation and
hypothesis testing; linear regression and correlation; and the analysis of variance.
Credits are not applicable toward the M.S. in Operations Research and Management
Science or in Statistical Science.
512 The Use of Computer Statistical Packages (3:3:0).Prerequisites: CS
103 or equivalent and a course in statistics, or permission of instructor. An introduction
to use of computer packages in the statistical analysis of data. Techniques common
to use of all statistical packages, including data checking, cleaning, manipulation,
and transformation, are emphasized. Both simple and complex statistical analyses
are covered. Techniques are illustrated by concentrating on one of the major statistical
packages such as SAS or SPSS. Other packages are discussed and compared. Students
are expected to perform computer statistical analyses of data relevant to their respective
fields of study. [Credits are not applicable toward the credit requirements for the
M.S. in Mathematics, Computer Science, Operations Research and Management Science,
or Statistical Science, but may be applicable toward a degree in some other fields.]
530 Mathematical Methods for Statistics and Engineering (3:3:0).Prerequisite:
MATH 108 or 113. Calculus, linear algebra, and probability results required for the
pursuit of an advanced degree in statistics or a related field.f
544 Applied Probability (3:3:0).Prerequisite: STAT 344 or equivalent,
or permission of instructor. A course in probability with applications in computer
science, engineering, operations research, and statistics. Random variables and expectation,
conditional expectation, random vectors, special distributions, limit theorems and
simulation are covered. f,s
554 Applied Statistics (3:3:0).Prerequisite: STAT 344 or equivalent, or
permission of instructor. Application of basic statistical techniques. Focus is on
the problem (data analysis) rather than on the theory. Topics include one and two
sample tests and confidence intervals for means and medians, descriptive statistics,
goodness-of-fit tests, one- and two-way ANOVA, simultaneous inference, testing variances,
regression analysis, and categorical data analysis. Normal theory is introduced first
with discussion of what happens when assumptions break down. Alternative robust and
nonparametric techniques are presented. f,s
574 Survey Sampling I (3:3:0).Prerequisite: STAT 354 or STAT 554. Design
and implementation of sample surveys. The course covers components of a survey; probability
sampling designs to include simple random, systematic, Bernoulli, proportional to
size, stratified, cluster and two-stage sampling; and ratio and regression estimators.
Practical problems encountered in conducting a survey are discussed. Methods are
applied to case studies of actual surveys. A class project may be required.f
634 Case Studies in Data Analysis (3:3:0).Prerequisite: STAT 554 or permission
of instructor. An examination of a wide variety of case studies illustrating data-driven
model building and statistical analysis. With each case study, various methods of
data management, data presentation, statistical analysis, and report writing are
compared.
652 Statistical Inference (3:3:0).Prerequisite: STAT 544 or ECE 528 or
equivalent. The fundamental principles of estimation and hypothesis testing. Topics
include limiting distributions and stochastic convergence, sufficient statistics,
exponential families, statistical decision theory and optimality for point estimation,
Bayesian methods, maximum likelihood, asymptotic results, interval estimation, optimal
tests of statistical hypotheses, and likelihood ratio tests.s
655 Analysis of Variance (3:3:0).Prerequisite: STAT 554 or permission
of instructor. Single and multifactor analysis of variance, planning sample sizes,
introduction to the design of experiments, random block and Latin square designs,
and analysis of covariance.af
656 Regression Analysis (3:3:0).Prerequisites: STAT 554 and matrix algebra.
Simple and multiple linear regression, polynomial regression, general linear models,
subset selection, step-wise regression, and model selection. Also covered are multicollinearity,
diagnostics, and model building. Both the theory and practice of regression analysis
are covered. s
657 Nonparametric Statistics (3:3:0).Prerequisite: STAT 554 or 652 or
equivalent. Distribution-free procedures for making inferences about one or more
samples. Tests for lack of independence, for association or trend, and for monotone
alternatives are included. Measures of association in bivariate samples and multiple
classifications are discussed. Both theory and applications are covered. Students
are introduced to appropriate statistical software. af
658 Time Series Analysis and Forecasting (3:3:0).Prerequisite: STAT 652
or 554 or equivalent. Modeling stationary and nonstationary processes, autoregressive,
moving average and mixed model processes, hidden periodicity models, properties of
models, autocovariance functions, autocorrelation functions, partial autocorrelation
functions, spectral density functions, identification of models, estimation of model
parameters, and forecasting techniques.
662 Multivariate Statistical Methods (3:3:0).Prerequisite: STAT 554 or
equivalent. The standard techniques of applied multivariate analysis. Topics include
review of matrices, T-square tests, principle components, multiple regression and
general linear models, analysis of variance and covariance, multivariate ANOVA, canonical
correlation, discriminant analysis, classification, factor analysis, clustering,
and multidimensional scaling. Computer implementation via a statistical package is
an integral part of the course. af
663/CSI 773 Statistical Graphics and Data Exploration (3:3:0).Prerequisite:
A 300-level course in statistics; STAT 554 strongly recommended. Exploratory data
analysis provides a reliable alternative to classical statistical techniques that
are designed to be the best possible when stringent assumptions apply. Topics covered
include graphical techniques such as scatter plots, box plots, parallel coordinate
plots and other graphical devices, re-expression and transformation of data, influence
and leverage, and dimensionality reduction methods such as projection pursuit. f
664/SYST 664 Bayesian Inference and Decision Analysis (3:3:0).Prerequisite:
STAT 544 or 554 or equivalent, or permission of instructor. The fundamentals of Bayesian
decision theory and its application in statistical inference and decision analysis.
Topics include prior distributions and Bayes theorem, proper scoring rules, conjugate
priors, approximate posterior distributions, multiattribute utility theory, influence
diagrams and Bayesian networks, measuring utilities, and probability distributions.
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665 Categorical Data Analysis (3:3:0).Prerequisite: STAT 554 or equivalent.
Analysis of cross-classified categorical data in two and higher dimensions. A familiarity
with the basic test for two-way contingency tables and elementary regression and
analysis of variance as presented in STAT 554 is presumed. Topics include measures
of association, logistic regression, linear response models, loglinear models, repeated
measurements data, and analysis of incomplete tables. A computer statistical package
is used extensively for data analysis. as
673 Statistical Methods for Longitudinal Data Analysis (3:3:0).Prerequisite:
STAT 674 or permission of instructor. Principles of the design and analysis of longitudinal
studies. Topics include retrospective and prospective studies, repeated periodic
and continuous surveys, rotating of panel surveys, management of a longitudinal database,
estimation of the level and change of population means, and proportions and totals
over time. Techniques include the classical minimum variance unbiased estimators,
time series analysis, and model-based multivariate analysis. Case studies such as
the Current Population Survey and the National Crime Survey are presented. Af
674 Survey Sampling II (3:3:0).Prerequisites: STAT 554 and 574. A continuation
of STAT 574. Regression estimators for complex sampling designs, domain estimation,
two-phase sampling, weighting adjustments for nonresponse, imputation, nonresponse
models, measurement error models, introduction to variance estimation. Applications
to case studies of actual surveys are made. s
677/OR 677/SYST 677 Statistical Process Control (3:3:0).Prerequisite:
STAT 554, 610, or equivalent. See OR 677.
678/OR 675 Reliability Analysis (3:3:0).Prerequisite: STAT 554 or equivalent.
An introduction to component and system reliability, their relationship, and problems
of inference. Topics include component lifetime distributions and hazard functions,
parameter estimation and hypothesis testing, life testing, accelerated life testing,
system structural functions, and system maintainability.
679 Topics in Survey Design and Analysis (3:3:0).Prerequisite: STAT 674
or permission of instructor. A seminar format in which topics are presented according
to the interests of students and instructors. Topics may include use of administrative
records in analysis of survey data, adaptive sampling, capture-recapture sampling
to estimate population size, telephone survey methods, establishment surveys, survey
errors and costs, imputation methods for item nonresponse, small area estimation,
technique of interpenetrating samples, variance estimation, model versus design-based
inference, randomized response for sensitive questions, multivariate analysis of
survey data, and spatial sampling.
682/OR 682/MATH 685/CSI 700 Computational Methods in Engineering and Statistics
(3:3:0).Prerequisites: MATH 203 and MATH 213 or equivalent, or permission of
instructor. Numerical methods have been developed to solve mathematical problems
that lack explicit closed-form solutions or have solutions that are not amenable
to computer calculations. Examples include solving differential equations or computing
probabilities. The course discusses numerical methods for such problems as regression,
analysis of variance, nonlinear equations, differential and difference equations,
and nonlinear optimization. Applications in statistics and engineering are emphasized.
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700 Multivariate Statistics and Data Analysis I (4:3:1).Prerequisites:
STAT 510 or equivalent. Coverage of regression (simple, multiple, multivariate),
two-sample tests of means, analysis of variance (ANOVA, ANCOVA, MANOVA, MANCOVA,
factorial designs, repeated measures), and factor analysis exploratory and confirmatory),
with an emphasis on applications in the health and biological science. Students will
be instructed in how to intelligently apply multivariate statistical methods to data,
to carry out the necessary computations using statistical software, and to correctly
interpret the results and make accurate statements about their findings. Cannot be
used to satisfy the requirements of the M.S. in Statistical Science degree.
701 Multivariate Statistics and Data Analysis II (3:0:0).Prerequisites:
STAT 700, HSCI 800 or equivalent. Coverage of discriminate analysis, canonical correlation
analysis, structural analysis (LISREL and path analysis), confirmatory factor analysis,
and other selected topics (e.g., principal component analysis, cluster analysis,
multidimensional scaling, classification trees, etc., depending upon the interests
of the class), with an emphasis on applications in the health and biological sciences.
Students will be instructed in how to intelligently apply multivariate statistical
methods to data, to carry out the necessary computations using statistical software,
and to correctly interpret the results and make accurate statements about their findings.
Cannot be used to satisfy the requirements of the M.S. in Statistical Science degree.
751/CSI 771 Computational Statistics (3:3:0).Prerequisites: STAT 544,
554, and 652. A study of the basic computational-intensive statistical methods and
related methods that would not be feasible without modern computational resources.
The course covers nonparametric density estimation including kernel methods, orthogonal
series methods and multivariate methods, recursive methods, cross-validation, nonparametric
regression, penalized smoothing splines, the jackknife and bootstrapping, computational
aspects of exploratory methods including the grand tour, projection pursuit, alternating
conditional expectations, and inverse regression methods.
757/OR 757 Software Reliability (3:3:0).Prerequisite: OR 542 or equivalent;
OR 645 or STAT 544. A statistical approach to software reliability engineering: probability
models and statistical methods for understanding, measuring, predicting, and controlling
the reliability of software. Topics include reliability estimation, controlled experiments
and case studies, reliability growth models, evaluation and limitations of reliability
estimation techniques, and models for fault-tolerant software.
774 Statistical Inference for Survey Sampling (3:3:0).Prerequisite: STAT
674. Variance estimation using resampling methods such as balanced half-samples,
jackknife and bootstrap methods, inference for percentiles, model-based inference
under superpopulations, and Bayesian methods. af
789 Advanced Topics in Statistics (1-6:1-6:0).Prerequisite: Permission
of instructor. Topics in statistics not covered in the regular statistics sequence.
May be repeated for credit.
798 Master's Essay (3:0:0).Prerequisites: Nine graduate credits
and permission of instructor. A project chosen and completed under the guidance of
a graduate faculty member, that results in an acceptable technical report.
799 Master's Thesis (1-6:0:0).Prerequisites: Nine graduate credits
and permission of instructor. A project chosen and completed under the guidance of
a graduate faculty member, that results in an acceptable technical report and oral
defense.
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