📖Introduction

The University of Northern British Columbia (UNBC) is a public research university located in Prince George, British Columbia, Canada. It is a smaller university, with a student population of around 4,000 undergraduate and graduate students, and is known for its strong focus on sustainability and the environment. UNBC offers a variety of programs in areas such as natural resources and environmental studies, health sciences, social sciences, business, and engineering. The university is also recognized for its research excellence, particularly in the areas of health, environment, and natural resources, and has a number of research institutes and centers focused on these areas.

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📚About the Program

Bachelor’s in Mathematics and Statistics at University of Northern British Columbia

The Department Mathematics and Statistics provides undergraduate and postgraduate instruction and training in pure mathematics, applied mathematics, and statistics. We offer a Bachelor of Science degree in Mathematics, as well as joint B.Sc. degrees in Mathematics and Physics, Economics and Mathematics, Chemistry and Mathematics, and Computer Science and Mathematics. The Department also offers a Masters of Science degree in Mathematics and Statistics. In addition, we have minors, one in Mathematics and one in Statistics. The Department of Mathematics and Statistics offers service courses to students in the biological sciences, health sciences, management, economics, social sciences, and other areas. Some sections of introductory calculus are taught using the Maple software, which provides exceptional computational power and high-quality graphical display. Introductory Statistics courses teach the use of Statistical analysis software to analyze data. An important feature of the mathematics degree program is the early emphasis on the development of abstract reasoning and the relation of the abstract to the concrete. The degree requirements have been chosen so as to provide students with a broad background in mathematics while still leaving them room to pursue their individual interests. The Department of Mathematics and Statistics prides itself of three UNBC Teaching Excellence Award winning faculty, seven nominations for teaching excellence awards, including two from outside British Columbia, and one from the Mathematical Association of America. Show less
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📖Program Curriculum

Select the Course Number to get further detail on the course. Select the desired Schedule Type to find available classes for the course.
MATH 100 - Calculus I
This course is an introduction to the calculus of one variable, primarily for majors and students in the sciences. Topics include functions of one variable; inverses; limits; continuity; the difference quotient and derivatives; rules for differentiation; differentiability; the mean value theorem; the differential; derivatives of trigonometric, logarithmic and exponential functions; l’Hôpital’s rule; higher derivatives; extrema; curve sketching; Newton’s method; antiderivatives; definite integrals; the fundamental theorem of calculus; integrals of elementary functions; area between curves; and applications of integration.
Please note: You must register separately in lecture and lab components.

Credits: 0.000 OR 3.000

Levels: Undergraduate
Schedule Types: Lecture, Self-Directed, Final Exam, Lec/Lab/Tut Combination, Laboratory, Tutorial
All Sections for this Course

MATH 101 - Calculus II
This course focuses on integral calculus for a single variable. The course covers the definition of the natural logarithm as an integral and the exponential function as its inverse, integration by parts, techniques of integration, volumes by slicing and shell techniques, improper integrals, numerical integration, and applications of integration (e.g., computing arc lengths, surface areas, moments and centres of mass), calculus of parametric curves and polar curves with special emphasis on applications of integration in computing areas and arc lengths in polar coordinates. It also covers sequences, numerical series, power series, and Taylor’s theorem.
Please note: You must register separately in lecture and lab components.

Credits: 0.000 OR 3.000

Levels: Undergraduate
Schedule Types: Lecture, Self-Directed, Final Exam, Lec/Lab/Tut Combination, Laboratory
All Sections for this Course

MATH 115 - Precalculus
This course examines algebraic manipulation, solutions of algebraic equations, functions, inverses, graphing, and analytic geometry.
Credits: 0.000 OR 3.000

Levels: Undergraduate
Schedule Types: Lecture, Final Exam, Lec/Lab/Tut Combination, Laboratory, Tutorial

MATH 150 - Finite Mathematics for Business and Economics
This course is offered primarily for students in programs offered by the School of Business and the Department of Economics. The course covers functions and graphs, linear systems of equations, matrix notation and properties, matrix inversion, linear programming, sets, counting and probability, and an introduction to actuarial mathematics.
Credits: 3.000

Levels: Undergraduate
Schedule Types: Lecture, Self-Directed, Final Exam, Audio/Video

Course Attributes:
MATH 150 Equivalent

MATH 152 - Calculus for Non-majors
This course covers limits, the derivative, techniques of differentiation, exponential functions and exponential growth, maxima and minima, curve sketching, first order linear differential equations, definite and indefinite integrals, partial derivatives, optimization of functions of several variables, Lagrange multipliers, with applications in the social and physical sciences. Applications may vary among sections, depending on students; disciplines. This course is not open to MATH or CPSC majors.
Credits: 3.000

Levels: Undergraduate
Schedule Types: Lecture, Final Exam, Audio/Video, Tutorial

MATH 190 - Math for Elementary Educators
This course develops an understanding of mathematical concepts and relationships used in the elementary school curriculum. The content focus is on numbers and number systems, patterns and relationships, shapes and space, and statistics and probability. Problem solving and deductive reasoning are stressed throughout the course. Students who have taken MATH 100, MATH 105, MATH 152 or equivalent require permission of the Chair.
Credits: 0.000 OR 4.000

Levels: Undergraduate
Schedule Types: Lecture, Self-Directed, Final Exam, Lec/Lab/Tut Combination, Laboratory

MATH 200 - Calculus III
The final course in the calculus sequence, with an emphasis on the calculus of vector-valued functions of several variables. Vectors in two- and three-dimensional space, dot and cross products, lines and planes in space, cylindrical and spherical co-ordinates, curves given parametrically, surfaces and curves in space, directional derivatives, the gradient, tangent vectors and tangent planes, the chain rule the topology of Euclidean space, optimization problems for functions of several variables, vector fields, line integrals, surface integrals, the theorems of Green, Gauss, and Stokes, potential functions, conservative fields.
Credits: 3.000

Levels: Undergraduate
Schedule Types: Lecture, Final Exam

MATH 202 - Multivariable Calculus I
This course focuses on functions of several variables, analytic geometry, and their utility. It starts with a review of area and arclength in polar coordinates, and lines and planes in space. The course covers cylindrical and spherical coordinates, quadric surfaces, vector-valued functions, and arclength and curvature of space curves. Topics in this course also include differentiation of functions of several variables, tangent planes and linear approximations, the chain rule, minima/maxima, and Lagrange multipliers. Lastly, the course covers double and triple integrals, applications, and change of variables in multiple integrals.
Credits: 3.000

Levels: Undergraduate
Schedule Types: Lecture, Final Exam

MATH 204 - Multivariable Calculus II
This course focuses on vector calculus and power series. The course consists of two major parts. The first part addresses Green’s theorem, Stokes’s formula and the divergence theorem (Gauss’s formula), including vector fields, line integrals, conservative vector fields, divergence and curl, parametric surfaces, and surface integrals of vector or scalar fields. Applications include computing the mass flow rate, the surface area of a parametric surface and the volume of a three-dimensional body via Stokes’s or Gauss’s formula. The other part of the course deals with power series, their convergence, and their use in approximating functions via Taylor’s theorem.
Credits: 3.000

Levels: Undergraduate
Schedule Types: Lecture, Final Exam

MATH 220 - Linear Algebra
This course covers systems of linear equations, matrix algebra, determinants, vector geometry, vector spaces, eigenvalues and diagonalization.
Credits: 3.000

Levels: Undergraduate
Schedule Types: Lecture, Final Exam

MATH 224 - Foundations of Modern Mathematics
This course develops the essential components of Zermelo-Fraenkel set theory and from these ideas constructs the standard number osystems. Topics include basic logic and methods of proof, axioms of set theory, mathematical induction, the natural numbers, the integers, and the rational, real, and complex number systems, epsilon-delta arguments, and rigourous development of the theorems of elementary calculus.
Credits: 3.000

Levels: Undergraduate
Schedule Types: Lecture, Final Exam

MATH 230 - Ordinary Differential Equations and Boundary Value Problems
This course introduces basic theory and application of ordinary differential equations and boundary value problems. Topics include: first order differential equations (separable, linear, homogeneous, Bernoulli and exact equations); linear second order and higher order equations (linear independent solutions, method of undetermined coefficients and variation of parameters); linear systems of ordinary differential equations; basic numerical methods (Euler and Runge-Kutta methods); and solutions to linear partial differential equations (heat, wave, Laplace’s equation) using separation of variables and Fourier series.
Credits: 3.000

Levels: Undergraduate
Schedule Types: Lecture, Final Exam, Tutorial

MATH 301 - Introduction to Complex Analysis
This course in an introduction to complex analysis. Topics include complex numbers and topology of the complex plane, theory of analytic functions, precise definition of limit and continuity, harmonic functions, contour integration, Cauchy's integral theorem and integral formula, bounds for analytic functions and applications. Taylor and Laurent expansions of analytic functions, zeros and singularities of analytic functions, and residue theory.
Credits: 3.000

Levels: Undergraduate
Schedule Types: Lecture, Final Exam

MATH 302 - Introductory Mathematical Analysis
This course develops the essential components of metric space topology and the related ideas of convergence including convergence of sequences and series of functions. Topics include open, closed, bounded and compacted sets in a metric space, the Bozano-Weierstrass and Heine-Borel Theorems, continuous and uniformly continuous functions, and uniform convergence.
Credits: 3.000

Levels: Undergraduate
Schedule Types: Lecture, Self-Directed, Final Exam

MATH 320 - Survey of Algebra
This course introduces the standard algebraic structures, their properties and applications. Topics include: equivalence relations, elementary group theory, finite groups, cyclic groups, permutation groups, group homomorphisms, group products, the fundamental theorem of finite Abelian groups, Sylow theorems, elementary ring theory, ring homomorphisms, ring products, and construction of new algebraic structures from known structures.
Credits: 3.000

Levels: Undergraduate
Schedule Types: Lecture, Final Exam

MATH 326 - Advanced Linear Algebra
Topics include abstract treatment of vector spaces, linear transformations, the Cayley-Hamilton theorem, inner product spaces, Gram-Schmidt orthogonalization, rational and Jordan canonical forms, and the spectral theorem.
Credits: 3.000

Levels: Undergraduate
Schedule Types: Lecture, Final Exam

MATH 335 - Introduction to Numerical Methods
This course introduces basic theory and application of numerical methods for solving fundamental computational problems in science and engineering. Topics include floating point numbers and error analysis; root finding; interpolation; numerical differentiation and integration; numerical methods for ordinary differential equations; and numerical methods for solving linear systems. This course involves programming and mathematical analysis of numerical methods.
Credits: 3.000

Levels: Undergraduate
Schedule Types: Lecture, Final Exam

MATH 336 - Intermediate Differential Equations
This course is a continuation of MATH 230-3 and is designed to increase the depth and breadth of students' knowledge pertaining to differential equations. Topics include existence and uniqueness theory for ordinary differential equations, series solutions of differential equations, linear system theory, phase plane analysis and stability, boundary value problems review of Fourier Series with additional applications to boundary value problems for the Heat Equation, Wave Equation and Laplace's Equation.
Credits: 3.000

Levels: Undergraduate
Schedule Types: Lecture, Self-Directed, Final Exam

MATH 402 - Topological and Normed Linear Spaces
This course focuses on the properties of topological spaces and normed linear spaces, especially Banach spaces. Topics include inner product spaces, topological spaces, compact and locally compact spaces, classical Banach spaces, linear functionals and dual spaces, topological vector spaces, and Hilbert space.
Credits: 3.000

Levels: Undergraduate
Schedule Types: Lecture, Final Exam

MATH 403 - Measure Theory and Integration
This course focuses on the development and properties of Lebesgue measure and the Lebesgue integral, with generalization to integration in abstract measurable spaces. Topics include outer measure, measurable sets and Lebesgue measure, measurable functions, differentiation of integrals, and the extension of these concepts to more general settings.
Credits: 3.000

Levels: Undergraduate
Schedule Types: Lecture, Final Exam

MATH 405 - Topology
This course considers open and closed sets, Hausdorff and other topologies, bases and sub-bases, continuous functions connectivity, product and quotient spaces, the Tychonoff and Urysohn lemmas, metrization, and compact spaces.
Credits: 3.000

Levels: Undergraduate
Schedule Types: Lecture, Final Exam

MATH 409 - Mathematical Methods in Physics
This course surveys of the methods and techniques involved in the formulation and solutions of physics problems. Topics include matrix algebra and group theory, eigenvalue problems, differential equations, functions of a complex variable, Green's functions, Fourier series, integral equations, calculus of variations, and tensor analysis.
Credits: 3.000

Levels: Undergraduate
Schedule Types: Lecture, Final Exam

MATH 420 - Structure of Groups and Rings
Advanced course in group theory and ring theory. Homomorphism theorems for groups, rings and R-modules, Sylow theorems, short exact sequences, chain conditions.
Credits: 3.000

Levels: Undergraduate
Schedule Types: Lecture, Final Exam

MATH 421 - Field Theory
Topics discussed will include: fields, field extensions, splitting fields, automorphism group, Galois Theory.
Credits: 3.000

Levels: Undergraduate
Schedule Types: Lecture, Final Exam

MATH 435 - Numerical Methods for Partial Differential Equations
This course introduces the theory and application of numerical methods for partial differential equations for science and engineering. Programming and mathematical analysis of numerical methods are emphasized. Topics include methods for solving linear and nonlinear systems (direct and iterative methods), initial value problems, and boundary value problems (finite difference, spectral, finite volume, and finite element methods).
Credits: 3.000

Levels: Undergraduate
Schedule Types: Lecture, Final Exam

MATH 436 - Partial Differential Equations 1
This is an introductory course on partial differential equations (PDE). The main focus is on PDE models of first and second order equations arising from various disciplines. The course introduces analytic techniques related to three classical types of PDE: elliptic, parabolic and hyperbolic. Topics include: method of characteristics; Sobolev spaces; distributional derivatives; variational methods; maximum principle; Harnack inequalities; and qualitative properties of solutions to certain models.
Credits: 3.000

Levels: Undergraduate
Schedule Types: Lecture, Final Exam

MATH 450 - Combinatorics
This course is an introduction to combinatorics. Topics include counting principles, principle of inclusion and exclusion, generating functions, graph theory and applications, combinatorial structures, combinatorial optimization and applications.
Credits: 3.000

Levels: Undergraduate
Schedule Types: Lecture, Final Exam

MATH 455 - Graphs and Algorithms
This course is an introduction to graphs and algorithms. Topics include: basic graph concepts, flows and connectivity, trees, matchings and factors, graph colouring, scheduling, planar graphs, and algorithms.
Credits: 3.000

Levels: Undergraduate
Schedule Types: Lecture, Final Exam

MATH 480 - Number Theory
This course is an introduction to Number Theory. Topics include: the integers, divisibility, Euclidean algorithm, primes, unique factorization, congruences, systems of linear congruences, Euler-Fermat Theorem, multiplicative functions, quadratic residues and reciprocity, nonlinear Diophantine equations.
Credits: 3.000

Levels: Undergraduate
Schedule Types: Lecture, Self-Directed, Final Exam

MATH 481 - Analytic Number Theory
This is a first course in analytic number theory. This course covers the following topics, with other topics as time permits: arithmetic functions and their average orders; prime counting functions; elementary theorems on the distribution of prime numbers; Dirichlet characters; Dirichlet theorem on primes in arithmetic progressions; Dirichlet series and Euler products; analytic properties of the Riemann zeta function and Dirichlet L-functions; the prime number theorem; and the prime number theorem in arithmetic progressions.
Credits: 3.000

Levels: Undergraduate
Schedule Types: Lecture, Final Exam

MATH 499 - Special Topics in Mathematics
The topic for this course will vary, depending on student interest and faculty availability.
Credits: 0.000 OR 3.000

Levels: Undergraduate
Schedule Types: Lecture, Self-Directed, Final Exam, Lec/Lab/Tut Combination, Laboratory

MATH 530 - Undergraduate Thesis
This undergraduate thesis allows students to examine and research a topic in the field of mathematics. Students must have completed at least 90 credit hours and be a Mathematics major. This thesis may be taken in one or two semesters. MATH 530 is normally taken over two semesters and requires that a student find an Undergraduate Thesis research supervisor. Therefore, students are encouraged to apply to potential supervisors well in advance of completing 90 credit hours. This course is taken for a total of 6 credit hours.
Credits: 3.000 TO 6.000

Levels: Undergraduate
Schedule Types: Undergrad Thesis

MATH 602 - Topological and Normed Linear Spaces
This course focuses on the properties of topological spaces and normed linear spaces, especially Banach spaces. Topics include inner product spaces, topological spaces, compact and locally compact spaces, Banach spaces, linear functionals and dual spaces, topological vector spaces, and Hilbert space.
Credits: 3.000

Levels: Graduate
Schedule Types: Lecture, Final Exam

MATH 603 - Measure Theory and Integration
This course focuses on the development and properties of Lebesgue measure and the Lebesgue integral, with generalization to integration in abstract measurable spaces. Topics include outer measure, measurable sets and Lebesgue measure, measurable functions, differentiation of integrals, and the extension of these concepts to more general settings
Credits: 3.000

Levels: Graduate
Schedule Types: Lecture, Final Exam

MATH 620 - Structure of Groups & Rings
Advanced course in group theory and ring theory. Homomorphism theorems for groups, rings and R-modules, Sylow theorems, short exact sequences, chain conditions.
Credits: 3.000

Levels: Graduate
Schedule Types: Lecture, Final Exam

MATH 621 - Field Theory
Topics discussed will include: fields, field extensions, splitting fields, automorphism group, Galois Theory.
Credits: 3.000

Levels: Graduate
Schedule Types: Lecture, Final Exam

MATH 635 - Numerical Methods for Partial Differential Equations
This advanced course introduces the theory and application of numerical methods for partial differential equations for science and engineering. Programming and mathematical analysis of numerical methods are emphasized. Topics include methods for solving linear and nonlinear systems (direct and iterative methods), initial value problems, and boundary value problems (finite difference, spectral, finite volume, and finite element methods).
Credits: 3.000

Levels: Graduate
Schedule Types: Lecture, Final Exam

MATH 636 - Partial Differential Equations 1
This is an advanced course in deterministic studies of partial differential equations (PDE). The main focus is on linear PDE models of first and second order arising from various disciplines. The course introduces analytic techniques related to three classical types of PDE: elliptic, parabolic and hyperbolic. Topics include: method of characteristics; Sobolev spaces; distributional derivatives; variational methods; maximum principle; Harnack inequalities; and qualitative properties of solutions to certain models.
Credits: 3.000

Levels: Graduate
Schedule Types: Lecture, Final Exam

MATH 650 - Combinatorics
This course is an introduction to Combinatorics. Topics include: counting principles, principle of inclusion and exclusion, generating functions, graph theory and applications, combinatorial structures, combinatorial optimization and application.
Credits: 3.000

Levels: Graduate
Schedule Types: Lecture, Self-Directed, Final Exam

MATH 655 - Graphs and Algorithms
Topics are chosen from basic graph concepts, flows and connectivity, trees, matchings and factors, graph colouring, scheduling, planar graphs, and algorithms.
Credits: 3.000

Levels: Graduate
Schedule Types: Lecture, Self-Directed, Final Exam

MATH 681 - Analytic Number Theory
This is an advanced course in analytic number theory. This course covers the following topics, with other topics as time permits: arithmetic functions and their average orders; prime counting functions; elementary theorems on the distribution of prime numbers; Dirichlet characters; Dirichlet theorem on primes in arithmetic progressions; Dirichlet series and Euler products; analytic properties of the Riemann zeta function and Dirichlet L-functions; the prime number theorem; and the prime number theorem in arithmetic progressions.
Credits: 3.000

Levels: Graduate
Schedule Types: Lecture, Final Exam

MATH 699 - Special Topics in Mathematics
The topics for this course will vary, depending on student interest and faculty availability.
Credits: 0.000 OR 3.000

Levels: Graduate
Schedule Types: Lecture, Self-Directed, Final Exam, Lec/Lab/Tut Combination, Laboratory, Seminar

MATH 700 - Topics in Functional Analysis
Topics may include operators on Hilbert spaces, Banach space theory, operator analysis.
Credits: 3.000

Levels: Graduate
Schedule Types: Lecture, Self-Directed

MATH 704 - Graduate Seminar in Mathematics
This course is comprised of weekly seminar sessions. Students will investigate and present ideas and results pertaining to current research in mathematics. The offerings may include presentations of current literature, research methodology, and topics related to students’ own research or project work. Students will participate in discussions and critique the work presented. MSc students are required to attend and participate in all seminar sessions to obtain credit for the course. This is a PASS/FAIL course. All MSc students must register in a seminar course twice during their program of studies. It is expected that all MSc students will attend the seminar each semester they are available.
Credits: 1.500

Levels: Graduate
Schedule Types: Seminar

MATH 705 - Complex Analysis
Analytic functions, Cauchy-Riemann equations, power series, Liouville theorem, maximum modulus principle, Cauchy's theorem, winding number, calculus of residues, meromorphic functions, conformal mappings, Riemann mapping theorem, analytic continuation.
Credits: 3.000

Levels: Graduate
Schedule Types: Lecture

MATH 720 - Topics in Algebra and Logic
Topics may include Universal Algebra, Recursion Theory, Model Theory.
Credits: 3.000

Levels: Graduate
Schedule Types: Lecture, Self-Directed, Final Exam

MATH 725 - Topics in Topology
Topics are chosen from topological spaces, Tychonoff Theorem, Tietze extension theorems, Urysohn lemma, compactification, homotopy theory, fundamental group, uniform spaces, and knot theory.
Credits: 3.000

Levels: Graduate
Schedule Types: Lecture, Self-Directed

MATH 731 - Topics in Applied Mathematics
Topics may include Operations Research, Discrete modelling, Biomathematics.
Credits: 3.000

Levels: Graduate
Schedule Types: Lecture

MATH 740 - Advanced Topics in Mathematics
This course permits specialized instruction in the discipline of Mathematics. Topics are chosen depending upon student interest and faculty availability, and topic headings vary from year to year and from section to section. With permission of the Chair, this course may be taken any number of times provided all the topics are distinct.
Credits: 1.000 TO 6.000

Levels: Graduate
Schedule Types: Lecture, Self-Directed

MATH 793 - Master of Science (Mathematics) Project
The MSc project requires the completion of an extended position paper, report, plan or program making a contribution to, or addressing a major issue in, a scientific field. The development of the project requires the application of original thought to the problem or issue under investigation. The non thesis project does not require the development of a research design or research methodology, and need not involve the collection or generation of an original data. This is a PASS/FAIL course.
Credits: 0.000 OR 6.000

Levels: Graduate
Schedule Types: Self-Directed, Masters Project

MATH 794 - Master of Science (Mathematics) Thesis
The MSc thesis documents a scientific contribution to the field of Mathematics. Students are expected to conduct original research involving a literature review, development of a research design and methodology, testing and analysis of data, and development of conclusions. Successful defence of the thesis is required for graduation in the Master of Science (Mathematics) thesis stream. This is a PASS/FAIL course.
Credits: 0.000 OR 12.000

Levels: Graduate
Schedule Types: Self-Directed, Masters Thesis

STAT 100 - Statistical Reasoning for Everyday Life
This course is an introduction to the role random chance plays in our life, and how to evaluate statistical evidence in support of the assessment of risk, decision-making or discovering new knowledge. Students gain a working knowledge of the framework of statistical reasoning and apply graphical techniques to assess variability. Students learn to assess the strength and validity of a statistical argument and learn to develop a statistical reasoning framework in simple situations. Example situations include lotteries, political polls, risk, incorporating prior knowledge and meeting your long-lost relative in an airport. This course requires no mathematical background and is accessible to students in any discipline.
Credits: 3.000

Levels: Undergraduate
Schedule Types: Lecture, Final Exam

STAT 240 - Basic Statistics
This course is an introduction to the basic principles of statistics and procedures for data analysis. Topics include gathering data, displaying and summarizing data, examining relationships between variables, probability models, sampling distributions, estimation and significance tests, inference for means and proportions in one and two sample situations, contingency tables, and simple linear regression. Students register in a computer lab corresponding to their area of interest.
Please note: You must register separately in lecture and lab/tutorial components if applicable.

Credits: 0.000 TO 3.000

Levels: Undergraduate
Schedule Types: Lecture, Final Exam, Lec/Lab/Tut Combination, Laboratory, World Wide Web
All Sections for this Course

STAT 271 - Statistical Reasoning for Engineers
This course is an introduction to statistical reasoning for engineers. Students gain a working knowledge of statistical reasoning, the probability and statistical theory underlying many common statistical techniques, and the application of these statistical techniques to real engineering problems. Students learn to critically assess the strength and validity of a statistical argument for many common engineering problems. Topics covered include basic probability, common statistical distributions used in engineering, fitting basic statistical models and assessing the fit of these models, and statistical inference including classical parametric and Monte Carlo techniques.
Credits: 0.000 OR 3.000

Levels: Undergraduate
Schedule Types: Lecture, Final Exam, Laboratory, Tutorial

STAT 371 - Probability and Statistics for Scientists and Engineers
This course is a calculus-based introduction to the theory and application of probability and statistics. The topics covered include concepts of probability, events, populations, probability theorems, the concept of a random variable, continuous and discrete random variables, joint probability distributions, distributions of functions of a random variable, moments, Chebyshev’s inequality, the de Moivre-Laplace theorem, the central limit theorem, sampling and statistical estimation theory, hypothesis testing, simple regression analysis, and an introduction to the design of experiments.
Credits: 3.000

Levels: Undergraduate
Schedule Types: Lecture, Self-Directed, Final Exam

STAT 372 - Mathematical Statistics
This course introduces the theory of statistical inference. Topics covered from likelihood theory are maximum likelihood estimation, sufficiency, and the likelihood ratio test. Topics covered from frequentist theory are point estimation, unbiasedness, consistency, efficiency, confidence intervals, and small sample and large sample hypothesis tests. Topics covered from Bayesian theory are risk, point estimation, and credible intervals.
Credits: 3.000

Levels: Undergraduate
Schedule Types: Lecture, Self-Directed, Final Exam

STAT 471 - Linear Models
This course discusses the estimation of parameters in the multiple linear regression model by the least-squares method. Topics covered include the statistical properties of the least-spares estimators, the Gauss-Markov theorem, estimates of residual and regression sums of squares, distribution theory under normality of the observations, assessment of normality, variance stabilizing transformations, examination of multicollinearity, variable selection methods, logistic regression for a binary response, log-linear models for count data, and generalized linear models.
Credits: 3.000

Levels: Undergraduate
Schedule Types: Lecture, Final Exam

STAT 472 - Survey Sampling Design and Analysis
This course discusses the planning and practice of sample surveys. Topics covered include simple random sampling, unequal probability sampling, stratified sampling, cluster sampling, multistage sampling, cost-effective design, analysis and control of sources of sampling and non-sampling error, ratio estimation, model-based regression estimation, resampling, and replication methods.
Credits: 3.000

Levels: Undergraduate
Schedule Types: Lecture, Final Exam

STAT 473 - Experimental Design and Analysis
This course discusses experimental designs and analyses. Topics covered include basic principles and guidelines for designing experiements, simple comparative designs, single factor, analysis of variance, block designs, factorial designs, response surface methods and designs, nested and split plot designs, and the analysis of covariance.
Credits: 3.000

Levels: Undergraduate
Schedule Types: Lecture, Final Exam

STAT 475 - Methods for Multivariate Data
This course discusses practical techniques for the analysis of multivariate data. Topics covered include estimation and hypothesis testing for multivariate means and variances; partial, multiple and canonical correlations; principal components analysis and factor analysis for data reduction; multivariate analysis of variance; discriminant analysis for classification; and cluster analysis.
Credits: 3.000

Levels: Undergraduate
Schedule Types: Lecture, Final Exam

STAT 499 - Special Topics in Statistics
The topic for this course varies, depending on student interest and faculty availability. The course may be taken any number of times provided that topics are distinct.
Credits: 1.000 TO 3.000

Levels: Undergraduate
Schedule Types: Lecture, Final Exam, Laboratory, Seminar

STAT 530 - Undergraduate Thesis
This undergraduate thesis allows students to examine and research a topic in the field of statistics. Students must have completed at least 90 credit hours and be a Mathematics major. This thesis may be taken in one or two semesters. STAT 530 is normally taken over two semesters and requires that a student find an Undergraduate Thesis research supervisor. Therefore, students are encouraged to apply to potential supervisors well in advance of completing 90 credit hours. This course is taken for a total of 6 credit hours.
Credits: 3.000 TO 6.000

Levels: Undergraduate
Schedule Types: Undergrad Thesis

STAT 671 - Linear Models
This course discusses the estimation of parameters in the multiple linear regression model by the least-squares method . Topics covered include the statistical properties of the least-squares estimators, the Gauss-Markov theorem, estimates of residual and regression sums of squares, distribution theory under normality of the observations, assessment of normality, variance stabilizing transformations, examination of multicollinearity, variable selection methods, logistic regression for a binary response, log-linear models for count data, and generalized linear models.
Credits: 3.000

Levels: Graduate
Schedule Types: Lecture, Final Exam

STAT 672 - Survey Sampling Design and Analysis
This course discusses the planning and practice of sample surveys. Topics covered include simple random sampling, unequal probability sampling, stratified sampling, cluster sampling, multistage sampling, cost-effective design, analysis and control of sources of sampling and non-sampling error, ratio estimation, model-based regression estimation, resampling, and replication methods.
Credits: 3.000

Levels: Graduate
Schedule Types: Lecture, Final Exam

STAT 673 - Experimental Design and Analysis
This course discusses experimental designs and analyses. Topics covered include basic principles and guidelines for designing experiments, simple comparative designs, single factor analysis of variance, block designs, factorial designs, response surface methods and designs, nested and split plot designs, and the analysis of covariance.
Credits: 3.000

Levels: Graduate
Schedule Types: Lecture, Final Exam

STAT 675 - Methods for Multivariate Data
This course discusses practical techniques for the analysis of multivariate data. Topics covered include estimation and hypothesis testing for multivariate means and variances; partial, multiple and canonical correlations; principal components analysis and factor analysis for data reduction; multivariate analysis of variance; discriminant analysis for classification; and cluster analysis.
Credits: 3.000

Levels: Graduate
Schedule Types: Lecture, Final Exam

STAT 699 - Special Topics in Statistics
The topic for this course varies, depending on student interest and faculty availability. This course may be taken any number of times provided all topics are distinct.
Credits: 1.000 TO 3.000

Levels: Graduate
Schedule Types: Lecture, Self-Directed, Final Exam, Laboratory, Seminar

STAT 704 - Seminar in Statistics
This course comprises seminar sessions relating to applications or the theory of statistics, or both. Students investigate and present ideas and results pertaining to current research. The offerings may include presentations of current literature, statistical methodology, and topics related to the student’s own research or project work or that of others. Students participate in discussions and critiques of their and others’ presentations. This is a PASS/FAIL course. This course may be repeated to a maximum of 3 credit hours. Student must attend and participate in all seminar session to obtain credit for the course.
Credits: 1.500 TO 3.000

Levels: Graduate
Schedule Types: Seminar

STAT 731 - Advanced Topics in Statistics
This course is intended to fulfill requirements for specialized instruction in the discipline of Statistics. Topics are chosen depending upon student interest and instructor availability, and topic headings vary from year to year and from section to section. This course may be taken any number of times provided all topics are distinct.
Credits: 1.000 TO 6.000

Levels: Graduate
Schedule Types: Lecture, Self-Directed, Final Exam, Laboratory, Seminar

STAT 793 - Master of Science (Mathematics) Project
The MSc project requires the completion of an extended position paper, report, plan or program making a contribution to, or addressing a major issue in, a scientific field. The development of the project requires the application of original thought to the problem or issue under investigation. The non thesis project does not require the development of a research design or research methodology, and need not involve the collection or generation of an original data. This is a PASS/FAIL course.
Credits: 0.000 OR 6.000

Levels: Graduate
Schedule Types: Self-Directed, Masters Project

STAT 794 - Master of Science (Mathematics) Thesis
The MSc thesis documents a scientific contribution to the field of Statistics. Students are expected to conduct original research involving a literature review, development of a research design and methodology, testing and analysis of data, and development of conclusions. Successful defence of the thesis is required for graduation in the Master of Science (Mathematics) thesis stream. This is a PASS/FAIL course.
Credits: 0.000 OR 12.000

Levels: Graduate
Schedule Types: Self-Directed, Masters Thesis

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🏫About University of Northern British Columbia

The University of Northern British Columbia (UNBC) is a public research university located in Prince George, British Columbia, Canada. It was founded in 1990 and has since established itself as a respected institution for teaching and research. UNBC offers a range of undergraduate and graduate programs across its four faculties: Arts, Social Sciences and Humanities; Health Sciences; Science and Management. The university is known for its small class sizes, personalized attention from faculty members, and its focus on experiential learning. UNBC has a strong commitment to sustainability and environmental stewardship, and many of its programs reflect this focus. The university has a close-knit community, with numerous opportunities for students to get involved in research and other activities both on and off campus.

💰 Fees

Application Fee:

883 RMB

Tuition fee:

23,818 CAD per year

95,272 CAD in total

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