School of Mathematics and Statistics
HP 4302
613-520-2155
http://carleton.ca/math/
This section presents the requirements for programs in:
- M.Sc. Mathematics with Concentration in Mathematics
- M.Sc. Mathematics and Statistics with Specialization in Bioinformatics
- M.Sc. Mathematics with Concentration in Statistics
- M.Sc. Mathematics and Statistics with Collaborative Specialization in Biostatistics
- Ph.D. Mathematics and Statistics
Program Requirements
Students must complete the requirements for the concentration in Mathematics or the concentration in Statistics. The M.Sc. in Mathematics and Statistics: Specialization in Bioinformatics is part of the M.Sc. in Mathematics and Statistics with Concentration in Mathematics. The M.Sc. in Mathematics and Statistics: Specialization in Biostatistics is part of the M.Sc. in Mathematics and Statistics with Concentration in Statistics.
- 2.0 credits in course work and 2.0 credits in a thesis, or
- 3.0 credits in course work and 1.0 credit in a research project, or
- 4.0 credits in course work.
M.Sc. Mathematics
with Concentration in Mathematics (4.0 credits)
Requirements - Thesis Option (4.0 credits) | ||
1. 2.0 credits in course work | 2.0 | |
2. 2.0 credits from: | 2.0 | |
MATH 5909 [2.0] | M.Sc. Thesis in Mathematics | |
Total Credits | 4.0 |
Requirements - Research Project option (4.0 credits) | ||
1. 3.0 credits in course work | 3.0 | |
2. 1.0 credit from: | 1.0 | |
MATH 5910 [1.0] | M.Sc. Project in Mathematics | |
Total Credits | 4.0 |
Requirements - Course work option (4.0 credits) | ||
1. 4.0 credits in courses | 4.0 | |
Total Credits | 4.0 |
Notes:
- Students must receive approval for course selection from their supervisor before registering in courses.
- More than one half of the total required credits must be completed in the Concentration in Mathematics.
- All master's students should normally participate in a seminar or research talks under the guidance of their supervisors.
- A maximum of 1.0 credit taken outside of the School of Mathematics and Statistics at Carleton University or the Department of Mathematics and Statistics at the University of Ottawa may be allowed for credit, subject to the approval of the School.
M.Sc. Mathematics and Statistics
with Specialization in Bioinformatics (4.5 credits)
Requirements: | ||
1. 1.0 credit in: | 1.0 | |
BIOL 5515 [0.5] | Bioinformatics | |
BIOL 5517 [0.5] | Bioinformatics Seminar | |
2. 1.5 credits in coursework | 1.5 | |
3. 2.0 credits in: | 2.0 | |
MATH 5909 [2.0] | M.Sc. Thesis in Mathematics (on an approved bioinformatics topic) | |
Total Credits | 4.5 |
- Students must receive approval for course selection from their supervisor before registering in courses.
- All master's students should normally participate in a seminar or research talks under the guidance of their supervisors.
M.Sc. Mathematics
with Concentration in Statistics (4.0 credits)
Requirements - Thesis Option (4.0 credits) | ||
1. 2.0 credits in course work | 2.0 | |
2. 2.0 credits in: | 2.0 | |
STAT 5909 [2.0] | M.Sc. Thesis in Statistics | |
Total Credits | 4.0 |
Requirements - Research Project option (4.0 credits) | ||
1. 3.0 credits in course work | 3.0 | |
2. 1.0 credit in: | 1.0 | |
STAT 5910 [1.0] | M.Sc. Project in Statistics | |
Total Credits | 4.0 |
Requirements - Course work option (4.0 credits) | ||
1. 4.0 credits in courses | 4.0 | |
Total Credits | 4.0 |
Notes:
- Students must receive approval for course selection from their supervisor before registering in courses.
- More than one half of the total required credits must be completed in the Concentration in Statistics.
- All master's students should normally participate in a seminar or research talks under the guidance of their supervisors.
- A maximum of 1.0 credit taken outside of the School of Mathematics and Statistics at Carleton University or the Department of Mathematics and Statistics at the University of Ottawa may be allowed for credit, subject to the approval of the School.
M.Sc. Mathematics and Statistics
with Collaborative Specialization in Biostatistics (6.0 credits)
The M.Sc. in Mathematics and Statistics: Specialization in Biostatistics is part of the M.Sc. in Mathematics and Statistics with Concentration in Statistics and has two completion options.
Requirements - Thesis option (6.0 credits) | ||
1. 3.5 credits in course work | 3.5 | |
2. 0.5 credit in: | 0.5 | |
STAT 5902 [0.5] | Seminar in Biostatistics | |
3. 2.0 credits in Thesis | 2.0 | |
Total Credits | 6.0 |
Requirements - Coursework option (5.0 credits) | ||
1. 4.5 credits in courses | 4.5 | |
2. 0.5 credit in: | 0.5 | |
STAT 5902 [0.5] | Seminar in Biostatistics | |
Total Credits | 5.0 |
Unless prior approval by the Director of the collaborative program has been obtained, students in the M.Sc. Mathematics program should take EPIJ 5240, EPIJ 5241, EPIJ 6178, EPIJ 6278, STAT 5600 (MAT 5375) or STAT 5610 (MAT 5375), and STAT 5501 (MAT 5191) or STAT 5602 (MAT 5317). The remaining courses should be in Mathematics and Statistics at the graduate level.
Course Selection
Concentration in Mathematics
Mathematics | ||
All MATH courses are eligible for the Concentration in Mathematics. | ||
Statistics | ||
In addition, the following STAT courses may be used toward the Concentration in Mathematics: | ||
STAT 5501 [0.5] | Mathematical Statistics II | |
STAT 5504 [0.5] | Stochastic Processes and Time Series Analysis | |
STAT 5508 [0.5] | Topics in Stochastic Processes | |
STAT 5600 [0.5] | Mathematical Statistics I | |
STAT 5601 [0.5] | Stochastic Optimization | |
STAT 5604 [0.5] | Stochastic Analysis | |
STAT 5701 [0.5] | Stochastic Models | |
STAT 5704 [0.5] | Network Performance | |
STAT 5708 [0.5] | Probability Theory I | |
STAT 5709 [0.5] | Probability Theory II |
Concentration in Statistics
Statistics | ||
All STAT courses are eligible for the Concentration in Statistics | ||
Mathematics | ||
In addition, the following MATH courses may be used toward the Concentration in Statistics: | ||
MATH 5900 [0.5] | Seminar | |
MATH 5901 [0.5] | Directed Studies | |
MATH 5906 [0.5] | Research Internship |
Undergraduate Courses
With the exception of students in the coursework option, all courses must be taken at the graduate level. Students in the coursework option may take up to 1.0 credit of undergraduate courses at the 4000 level from the following list: | ||
MATH 4002 [0.5] | Fourier Analysis (Honours) | |
MATH 4105 [0.5] | Rings and Modules (Honours) | |
MATH 4107 [0.5] | Commutative Algebra (Honours) | |
MATH 4109 [0.5] | Fields and Coding Theory (Honours) | |
MATH 4207 [0.5] | Foundations of Geometry (Honours) | |
MATH 4208 [0.5] | Introduction to Differentiable Manifolds (Honours) | |
MATH 4700 [0.5] | Partial Differential Equations (Honours) | |
MATH 4703 [0.5] | Dynamical Systems (Honours) | |
MATH 4801 [0.5] | Topics in Combinatorics (Honours) | |
MATH 4802 [0.5] | Introduction to Mathematical Logic (Honours) | |
MATH 4803 [0.5] | Computable Functions (Honours) | |
MATH 4806 [0.5] | Numerical Linear Algebra (Honours) | |
MATH 4808 [0.5] | Graph Theory and Algorithms (Honours) | |
MATH 4811 [0.5] | Combinatorial Design Theory (Honours) | |
STAT 4501 [0.5] | Probability Theory (Honours) (may be used toward the Concentration in Mathematics) | |
STAT 4502 [0.5] | Survey Sampling (Honours) | |
STAT 4504 [0.5] | Statistical Design and Analysis of Experiments (Honours) | |
STAT 4506 [0.5] | Nonparametric Statistics (Honours) | |
STAT 4555 [0.5] | Monte Carlo Simulation (Honours) (may be used toward the Concentration in Mathematics) | |
STAT 4601 [0.5] | Data Mining I (Honours) | |
STAT 4603 [0.5] | Time Series and Forecasting (Honours) | |
STAT 4604 [0.5] | Statistical Computing (Honours) | |
All MATH courses are eligible for the Concentration in Mathematics. | ||
All STAT courses are eligible for the Concentration in Statistics. |
Ph.D. Mathematics and Statistics (10.0 credits)
Requirements: | ||
1. 3.0 credits in courses | 3.0 | |
2. 7.0 credits in: | 7.0 | |
MATH 6909 [7.0] | Ph.D. Thesis (including a final oral examination on the thesis subject) | |
3. All candidates must take comprehensive examinations. See note on Comprehensive Examinations below. | ||
4. Language requirement. Determined by the candidate's advisory committee and normally requires the ability to read mathematical literature in a language considered useful for his/her research or career, and other than the candidate's principal language of study | ||
Total Credits | 10.0 |
Comprehensive Examinations
Students specializing in mathematics or probability undertake a comprehensive examination in the following areas:
- The candidate's general area of specialization at the Ph.D. level
- Examinations on two topics chosen from applied analysis, discrete applied mathematics, algebra, analysis, probability, topology, and statistics.
Students specializing in statistics must write an examination in the following areas:
- Mathematical statistics which includes multivariate analysis
- An examination in probability, and
- An examination in either (i) applied statistics or (ii) analysis.
In all cases, the examination must be completed successfully within twenty months of initial registration in the Ph.D. program in the case of full-time students, and within thirty-eight months of initial registration in the case of part-time students.
All Ph.D. candidates are also required to undertake a final oral examination on the subject of their thesis.
Epidemiology - Joint (EPIJ) Courses
Epidemiology
Epidemiology II
Vital and Health Statistics
Clinical Trials
Advanced Clinical Trials
Mathematics (MATH) Courses
Commutative Algebra
Prime spectrum of a commutative ring (as a topological space); localization of rings and modules; tensor product of modules and algebras; Hilbert’s Nullstellensatz and consequences for finitely generated algebras; Krull dimension of a ring; integral dependence, going-up, going-down; Noether Normalization Lemma and dimension theory.
Algebraic Geometry
Brief overview of commutative algebra, Hilbert’s Nullstellensatz, algebraic sets, and Zariski topology. Affine and projective varieties over algebraically closed fields. Regular functions and rational maps. Additional topics.
Banach Algebras
Commutative Banach algebras; the space of maximal ideals; representation of Banach algebras as function algebras and as operator algebras; the spectrum of an element. Special types of Banach algebras: for example, regular algebras with involution, applications.
Complex Analysis
Complex differentiation and integration, harmonic functions, maximum modulus principle, Runge's theorem, conformal mapping, entire and meromorphic functions, analytic continuation.
Real Analysis I (Measure Theory and Integration)
General measure and integral, Lebesgue measure and integration on R, Fubini's theorem, Lebesgue-Radon-Nikodym theorem, absolute continuity and differentiation, LP-spaces. Selected topics such as Daniell-Stone theory.
Real Analysis II (Functional Analysis)
Banach and Hilbert spaces, bounded linear operators, dual spaces. Topics selected from: weak-topologies, Alaoglu's theorem, compact operators, differential calculus in Banach spaces, Riesz representation theorems.
Also offered at the undergraduate level, with different requirements, as MATH 4003, for which additional credit is precluded.
Introduction to Hilbert Space
Geometry of Hilbert Space, spectral theory of linear operators in Hilbert Space.
Group Representations and Applications
An introduction to group representations and character theory, with selected applications.
Rings and Modules
Generalizations of the Wedderburn-Artin theorem and applications, homological algebra.
Lie Algebras
Basic concepts: ideals, homomorphisms, nilpotent, solvable, semi-simple. Representations, universal enveloping algebra. Semi-simple Lie algebras: structure theory, classification, and representation theory.
Group Theory
Fundamental principles as applied to abelian, nilpotent, solvable, free, and finite groups; representations.
Algebra I
Groups, Sylow subgroups, finitely generated abelian groups. Rings, field of fractions, principal ideal domains, modules. Polynomial algebra, Euclidean algorithm, unique factorization.
Homological Algebra and Category Theory
Axioms of set theory, categories, functors, natural transformations; free, projective, injective and flat modules; tensor products and homology functors, derived functors; dimension theory.
Algebra II
Field theory, algebraic and transcendental extensions, finite fields, Galois groups. Modules over principal ideal domains, decomposition of a linear transformation, Jordan normal form.
Topics in Geometry
Various axiom systems of geometry. Detailed examinations of at least one modern approach to foundations, with emphasis upon the connections with group theory.
Homology Theory
The Eilenberg-Steenrod axioms and their consequences, singular homology theory, applications to topology and algebra.
Topology I
Topological spaces, product and identification topologies, countability and separation axioms, compactness, connectedness, homotopy, fundamental group, net and filter convergence.
Topology II
Covering spaces, homology via the Eilenberg-Steenrod Axioms, applications, construction of a homology functor.
Also offered at the undergraduate level, with different requirements, as MATH 4206, for which additional credit is precluded.
Foundations of Geometry
A study of at least one modern axiom system of Euclidean and non-Euclidean geometry, embedding of hyperbolic and Euclidean geometries in the projective plane, groups of motions, models of non-Euclidean geometry.
Differentiable Manifolds
A study of differentiable manifolds from the point of view of either differential topology or differential geometry. Topics such as smooth mappings, transversality, intersection theory, vector fields on manifolds, Gaussian curvature, Riemannian manifolds, differential forms, tensors, and connections are included.
Mathematical Cryptography
Analysis of cryptographic methods used in authentication and data protection, with particular attention to the underlying mathematics, e.g. Algebraic Geometry, Number Theory, and Finite Fields. Advanced topics on Public-Key Cryptography: RSA and integer factorization, Diffie-Hellman, discrete logarithms, elliptic curves. Topics in current research.
Mathematical Logic
A basic graduate course in mathematical logic. Propositional and predicate logic, proof theory, Gentzen's Cut-Elimination, completeness, compactness, Henkin models, model theory, arithmetic and undecidability. Special topics (time permitting) depending on interests of instructor and audience.
Analytic Number Theory
Dirichlet series, characters, Zeta-functions, prime number theorem, Dirichlet's theorem on primes in arithmetic progressions, binary quadratic forms.
Algebraic Number Theory
Algebraic number fields, bases, algebraic integers, integral bases, arithmetic in algebraic number fields, ideal theory, class number.
Topics in Applied Mathematics
Ordinary Differential Equations
Linear systems, fundamental solution. Nonlinear systems, existence and uniqueness, flow. Equilibria, periodic solutions, stability. Invariant manifolds and hyperbolic theory. One or two specialized topics taken from, but not limited to: perturbation and asymptotic methods, normal forms and bifurcations, global dynamics.
Partial Differential Equations
First-order equations, characteristics method, classification of second-order equations, separation of variables, Green's functions. Lp and Sobolev spaces, distributions, variational formulation and weak solutions, Lax-Milgram theorem, Galerkin approximation. Parabolic PDEs. Wave equations, hyperbolic systems, nonlinear PDEs, reactiondiffusion equations, infinite-dimensional dynamical systems, regularity.
Topics in Partial Differential Equations
Theory of distributions, initial-value problems based on two-dimensional wave equations, Laplace transform, Fourier integral transform, diffusion problems, Helmholtz equation with application to boundary and initial-value problems in cylindrical and spherical coordinates.
Also offered at the undergraduate level, with different requirements, as MATH 4701, for which additional credit is precluded.
Asymptotic Methods of Applied Mathematics
Asymptotic series: properties, matching, application to differential equations. Asymptotic expansion of integrals: elementary methods, methods of Laplace, Stationary Phase and Steepest Descent, Watson's Lemma, Riemann-Lebesgue Lemma. Perturbation methods: regular and singular perturbation for differential equations, multiple scale analysis, boundary layer theory, WKB theory.
Theory of Automata
Algebraic structure of sequential machines, de-composition of machines; finite automata, formal languages; complexity.
Game Theory
Two-person zero-sum games; infinite games; multi-stage games; differential games; utility theory; two-person general-sum games; bargaining problem; n-person games; games with a continuum of players.
Topics in Combinatorial Mathematics
Courses in special topics related to Combinatorial Mathematics, not covered by other graduate courses.
Linear Optimization
Linear programming problems; simplex method, upper bounded variables, free variables; duality; postoptimality analysis; linear programs having special structures; integer programming problems; unimodularity; knapsack problem.
Nonlinear Optimization
Methods for unconstrained and constrained optimization problems; Kuhn-Tucker conditions; penalty functions; duality; quadratic programming; geometric programming; separable programming; integer nonlinear programming; pseudo-Boolean programming; dynamic programming.
Topics in Operations Research
Topics in Algorithm Design
Numerical Analysis
Error analysis for fixed and floating point arithmetic; systems of linear equations; eigen-value problems; sparse matrices; interpolation and approximation, including Fourier approximation; numerical solution of ordinary and partial differential equations.
Formal Language and Syntax Analysis
Computability, unsolvable and NP-hard problems. Formal languages, classes of language automata. Principles of compiler design, syntax analysis, parsing (top-down, bottom-up), ambiguity, operator precedence, automatic construction of efficient parsers, LR, LR(O), LR(k), SLR, LL(k). Syntax directed translation.
Combinatorial Optimization I
Network flow theory and related material. Topics will include shortest paths, minimum spanning trees, maximum flows, minimum cost flows. Optimal matching in bipartite graphs.
Combinatorial Optimization II
Topics include optimal matching in non-bipartite graphs, Euler tours and the Chinese Postman problem. Other extensions of network flows: dynamic flows, multicommodity flows, and flows with gains, bottleneck problems. Matroid optimization. Enumerative and heuristic algorithms for the Traveling Salesman and other "hard" problems.
Discrete Applied Mathematics I: Graph Theory
Paths and cycles, trees, connectivity, Euler tours and Hamilton cycles, edge colouring, independent sets and cliques, vertex colouring, planar graphs, directed graphs. Selected topics from one or more of the following areas: algebraic graph theory, topological graph theory, random graphs.
Discrete Applied Mathematics II: Combinatorial Enumeration
Ordinary and exponential generating functions, product formulas, permutations, rooted trees, cycle index, WZ method. Lagrange inversions, singularity analysis of generating functions and asymptotics. Selected topics from one or more of the following areas: random graphs, random combinatorial structures, hypergeometric functions.
Quantum Computing
Space of quantum bits; entanglement. Observables in quantum mechanics. Density matrix and Schmidt decomposition. Quantum cryptography. Classical and quantum logic gates. Quantum Fourier transform. Shor's quantum algorithm for factorization of integers.
Mathematical Aspects of Wavelets and Digital Signal Processing
Lossless compression methods. Discrete Fourier transform and Fourier-based compression methods. JPEG and MPEG. Wavelet analysis. Digital filters and discrete wavelet transform. Daubechies wavelets. Wavelet compression.
Seminar
Directed Studies
Research Internship
This course affords students the opportunity to undertake research in mathematics as a cooperative project with governmental or industrial sponsors. The grade will be based upon the mathematical content and upon oral and written presentation of results.
M.Sc. Thesis in Mathematics
M.Sc. Project in Mathematics
Project in mathematics supervised by a professor approved by the graduate director resulting in a major report (approximately 30-40 pages), together with a short presentation on the report. Graded by the supervisor and another professor appointed by the graduate director.
Research Participation
Harmonic Analysis on Groups
Transformation groups; Haar measure; unitary representations of locally compact groups; completeness and compact groups; character theory; decomposition.
Topics in Analysis
Topics in Algebra
Lie Groups
Matrix groups: one-parameter groups, exponential map, Campbell-Hausdorff formula, Lie algebra of a matrix group, integration on matrix groups. Abstract Lie groups.
Topics in Topology
Topics in Probability
Topics in Mathematical Logic
Mathematical Foundations of Computer Science
Foundations of functional languages, lambda calculi (typed, polymorphically typed, untyped), Curry-Howard Isomorphism, proofs-as-programs, normalization and rewriting theory, operational semantics, type assignment, introduction to denotational semantics of programs, fixed-point programming.
Seminar
Directed Studies
Ph.D. Thesis
Statistics (STAT) Courses
Multivariate Normal Theory
Multivariate normal distribution properties, characterization, estimation of means, and covariance matrix. Regression approach to distribution theory of statistics; multivariate tests; correlations; classification of observations; Wilks' criteria.
Mathematical Statistics II
Confidence intervals and pivotals; Bayesian intervals; optimal tests and Neyman-Pearson theory; likelihood ratio and score tests; significance tests; goodness-of-fit-tests; large sample theory and applications to maximum likelihood and robust estimation.
Also offered at the undergraduate level, with different requirements, as STAT 4507, for which additional credit is precluded.
Sampling Theory and Methods
Unequal probability sampling with and without replacement; unified theory for standard errors; prediction approach; ratio and regression estimation; stratification and optimal designs; multistage cluster sampling; double sampling; domains of study; post-stratification; nonresponse; measurement errors; related topics.
Linear Models
Theory of non full rank linear models; estimable functions, best linear unbiased estimators, hypotheses testing, confidence regions; multi-way classifications; analysis of covariance; variance component models; maximum likelihood estimation, Minque, Anova methods; miscellaneous topics.
Stochastic Processes and Time Series Analysis
Stationary stochastic processes, inference for stochastic processes, applications to time series and spatial series analysis.
Design of Experiments
Overview of linear model theory; orthogonality; randomized block and split plot designs; latin square designs; randomization theory; incomplete block designs; factorial experiments: confounding and fractional replication; response surface methodology. Miscellaneous topics.
Robust Statistical Inference
Tests for location, scale, and regression parameters; derivation of rank tests; distribution theory of linear rank statistics and their efficiency. Robust estimation of location, scale and regression parameters; Huber's M-estimators, Rank-methods, L-estimators. Influence function. Adaptive procedures.
Advanced Statistical Inference
Pure significance test; uniformly most powerful unbiased and invariant tests; asymptotic comparison of tests; confidence intervals; large-sample theory of likelihood ratio and chi-square tests; likelihood inference; Bayesian inference; fiducial and structural methods; resampling methods.
Topics in Stochastic Processes
Course contents will vary, but will include topics drawn from Markov processes. Brownian motion, stochastic differential equations, martingales, Markov random fields, random measures, and infinite particle systems, advanced topics in modeling, population models.
Multivariate Analysis
Multivariate methods of data analysis, including principal components, cluster analysis, factor analysis, canonical correlation, MANOVA, profile analysis, discriminant analysis, path analysis.
Nonparametric Statistics
Order statistics; projections; U-statistics; L-estimators; rank, sign, and permutation test statistics; nonparametric tests of goodness-of-fit, homogeneity, symmetry, and independence; nonparametric density estimation; nonparametric regression analysis: kernel estimators, orthogonal series estimators, smoothing splines; high-dimensional inference problems and false discovery.
Also offered at the undergraduate level, with different requirements, as STAT 4506, for which additional credit is precluded.
Lectures three hours a week.
Mathematical Statistics I
Statistical decision theory; likelihood functions; sufficiency; factorization theorem; exponential families; UMVU estimators; Fisher's information; Cramer-Rao lower bound; maximum likelihood, moment estimation; invariant and robust point estimation; asymptotic properties; Bayesian point estimation.
Stochastic Optimization
Topics chosen from stochastic dynamic programming, Markov decision processes, search theory, optimal stopping.
Analysis of Categorical Data
Analysis of one-way and two-way tables of nominal data; multi-dimensional contingency tables, log-linear models; tests of symmetry, marginal homogeneity in square tables; incomplete tables; tables with ordered categories; fixed margins, logistic models with binary response; measures of association and agreement.
Reliability and Survival Analysis
Types of censored data; nonparametric estimation of survival function; graphical procedures for model identification; parametric models and maximum likelihood estimation; exponential and Weibull regression models; nonparametric hazard function models and associate statistical inference; rank tests with censored data applications.
Stochastic Analysis
Brownian motion, continuous martingales, and stochastic integration.
Introduction to Mathematical Statistics
Limit theorems. Sampling distributions. Parametric estimation. Concepts of sufficiency and efficiency. Neyman-Pearson paradigm, likelihood ratio tests. Parametric and non-parametric methods for two- sample comparisons. Notions of experimental design, categorical data analysis, the general linear model, decision theory and Bayesian inference.
Stochastic Models
Markov systems, stochastic networks, queuing networks, spatial processes, approximation methods in stochastic processes and queuing theory. Applications to the modeling and analysis of computer-communications systems and other distributed networks.
Modern Applied and Computational Statistics
Resampling and computer intensive methods: bootstrap, jackknife with applications to bias estimation, variance estimation, confidence intervals, and regression analysis. Smoothing methods in curve estimation; statistical classification and pattern recognition: error counting methods, optimal classifiers, bootstrap estimates of the bias of the misclassification error.
Data Mining
Visualization and knowledge discovery in massive datasets; unsupervised learning: clustering algorithms; dimension reduction; supervised learning: pattern recognition, smoothing techniques, classification. Computer software will be used.
Network Performance
Advanced techniques in performance evaluation of large complex networks. Topics may include classical queueing theory and simulation analysis; models of packet networks; loss and delay systems; blocking probabilities.
Probability Theory I
Probability spaces, random variables, expected values as integrals, joint distributions, independence and product measures, cumulative distribution functions and extensions of probability measures, Borel-Cantelli lemmas, convergence concepts, independent identically distributed sequences of random variables.
Probability Theory II
Laws of large numbers, characteristic functions, central limit theorem, conditional probabilities and expectations, basic properties and convergence theorems for martingales, introduction to Brownian motion.
Directed Studies
Seminar in Biostatistics
Students work in teams on the analysis of experimental data or experimental plans. The participation of experimenters in these teams is encouraged. Student teams present their results in the seminar, and prepare a brief written report on their work.
Statistical Internship
This project-oriented course allows students to undertake statistical research and data analysis projects as a cooperative project with governmental or industrial sponsors. Practical data analysis and consulting skills will be emphasized. The grade will be based upon oral and written presentation of results.
M.Sc. Thesis in Statistics
M.Sc. Project in Statistics
Project in statistics supervised by a professor approved by the graduate director resulting in a major report (approximately 30-40 pages), together with a short presentation on the report. Graded by the supervisor and another professor appointed by the graduate director.
Topics in Probability and Statistics
Summer session: some of the courses listed in this Calendar are offered during the summer. Hours and scheduling for summer session courses will differ significantly from those reported in the fall/winter Calendar. To determine the scheduling and hours for summer session classes, consult the class schedule at central.carleton.ca
Not all courses listed are offered in a given year. For an up-to-date statement of course offerings for the current session and to determine the term of offering, consult the class schedule at central.carleton.ca
Admission
The normal requirement for admission to the master's program is an Honours bachelor's degree in mathematics, statistics or the equivalent, with B+ or higher in the honours subject and B- or higher overall.
Applicants holding a general (three-year) degree with an overall GPA of at least B+ may be admitted to a qualifying-year program. Subsequent admission to the regular master's program depends on performance during the qualifying-year program and will be decided no later than one year after admission to the qualifying-year program. Details are outlined in the General Regulations section of this Calendar.
Admission
The normal requirement for admission to the Ph.D. program is a master's degree in mathematics, or the equivalent, with at least B+ standing. Details are outlined in the General Regulations section of this Calendar.