Fall 2024 - University of Houston
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Fall 2024

(Disclaimer: Be advised that some information on this page may not be current due to course scheduling changes. Please view either the UH Class Schedule page or your Class schedule in myUH for the most current/updated information.)

   (UNDER CONSTRUCTION- 04/26/24)


GRADUATE COURSES - FALL 2024

SENIOR UNDERGRADUATE COURSES

 

Course

 Section 

Course Title

  Course Day/Time  

Rm #

  Instructor   

 Math 4310-01   14844  Biostatistics  MWF, 10—11AM  S 102  D. Labate
 Math 4315-01  21252  Graph Theory with Applications  TTh, 2:30—4PM  S 116   K. Josic
 Math 4320-01  11469  Intro. To Stochastic Processes  TTh, 11:30AM—1PM  AH 301  W. Ott 
 Math 4322-02  15451  Intro. to Data Science and Machine Learning  TTh, 11:30AM—1PM  SEC 104  C. Poliak
 Math 4323-01  15420  Data Science and Statistical Learning  MWF, 10—11AM  SEC 104  W. Wang
 Math 4331-02  12754  Introduction to Real Analysis I  MWF, 9—10AM  SEC 201   A. Vershynina
 Math 4335-01  14029  Partial Differential Equations I  Asynchronous/On Campus Exams    Online  W. Fitzgibbon
 Math 4339-02  14959  Multivariate Statistics  TTh, 1—2:30PM   SEC 201  C. Poliak
 Math 4364-01  13125  Intro. to Numerical Analysis in Scientific Computing   MW, 4—5:30PM   SEC 206  T. Pan
 Math 4364-02  15232  Intro. to Numerical Analysis in Scientific Computing  MWF, 10—11AM  CBB 214 TBD
 Math 4377-04  12756  Advanced Linear Algebra I  TTh, 10—11:30AM   AH 108  G. Heier
 Math 4388-01  12193  History of Mathematics  Asynchronous/On Campus Exams  N/A  S. Ji
 Math 4389-01  11873  Survey of Undergraduate Mathematics MWF, 11AM—Noon   S 114  V. Climenhaga 
 Math 4397-01  TBD  Intro to Mathematical Neuroscience   TBD

 

GRADUATE ONLINE COURSES

Course

 Section 

Course Title

 Course Day & Time 

 Instructor 

Math 5310-01  17219  History of Mathematics Asynchronous/On-campus Exams; Online   S. Ji
Math 5331-01 18216  Linear Algebra w/Applications Asynchronous/On-campus Exams; Online  G. Etgen
Math 5333-01 17217  Analysis Asynchronous/On-campus Exams; Online  S. Ji
Math 5382-01 15289  Probability Asynchronous/On-campus Exams; Online  A. Török

 

 

GRADUATE COURSES 

Course

Section

Course Title   

Course Day & Time

Rm #

Instructor

Math 6302-01 11470 Modern Algebra I  TTh, 1—2:30PM    
Math 6308-04 12757 Advanced Linear Algebra I  TTh, 11:30AM1PM  
Math 6312-02 12755 Introduction to Real Analysis  TTh, 1—2:30PM
Math 6320-01 11497 Theory of Functions of a Real Variable  MWF, 910AM 
Math 6322-01 17218 Function Complex Variable  WF, 12:30PM
Math 6326-01 18238 Partial Differential Equations  TTh, 1011:30AM
Math 6342-01 11498 Topology  TTh, 2:304PM
Math 6360-01 16277 Applicable Analysis  TTh, 1—2:30PM
Math 6366-01 11499 Optimization Theory  MW,  4—5:30PM
Math 6370-01 11500 Numerical Analysis  MWF, 1011AM
Math 6374-01 18218 Numerical Partial Differential Equations  MW, 12:30PM
Math 6382-02 14094 Probability  TTh, 2:304PM
Math 6397-01 Intro to Mathematical Neuroscience  TTh, 11:30AM1PM
Math 6397-02 Numerical Linear Algebra   TTh, 45:30PM
Math 6397-03 / Math 6397-04 Statistical Analysis Computation   TTh, 11:30AM1PM
Math 6397-05 Selected Topics in Math   MW, 5:308:30PM
Math 7320-01 21254 Functional Analysis  TTh, 10—11:30AM  
Math 7350-01 18221 Geometry of Manifolds  TTh, 12:30PM



MSDS Courses 

(MSDS Students Only)

Course

 Section 

Course Title

 Course Day & Time 

Rm #

 Instructor 

Math 6350-01 Statistical Learning and Data Mining  TBA, TBA (F2F)  J. Ryan
Math 6357-01 Linear Models & Design of Experiments  MW, 2:30—4PM (F2F)  W. Wang
Math 6358-02 Probability Models and Statistical Computing  F, 1—3PM (F2F)   C. Poliak
Math 6358-03 Probability Models and Statistical Computing  F, 1—3PM, Synchronous/On-campus Exams  C. Poliak
Math 6380-01 15069 Programming Foundation for Data Analytics  F, 3—5PM (F2F)  D. Shastri
Math 6380-02 16636 Programming Foundation for Data Analytics  F, 3—5PM, Synchronous/On-campus Exams   D. Shastri

SENIOR UNDERGRADUATE COURSES 

 
Math 4310 Biostatistics
Prerequisites: MATH 3339 and BIOL 3306
Text(s): "Biostatistics: A Foundation for Analysis in the Health Sciences, Edition (TBD), by Wayne W. Daniel, Chad L. Cross. ISBN: (TBD)
Description: Statistics for biological and biomedical data, exploratory methods, generalized linear models, analysis of variance, cross-sectional studies, and nonparametric methods. Students may not receive credit for both MATH 4310 and BIOL 4310.

 

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Math 4320 - Intro to Stochastic Processes
Prerequisites: MATH 3338
Text(s):
  • An Introduction to Stochastic Processes, by Edward P. C. Kao, Dover 2019, Duxbury Press, 1997; ISBN 9780486837925
  • An Introduction to Probability with Mathematica, by Edward P. C. Kao, World Scientific, May 2022; ISBN: 9789811246784
Description:

Catalog Description: We study the theory and applications of stochastic processes. Topics include discrete-time and continuous-time Markov chains, Poisson process, branching process, Brownian motion. Considerable emphasis will be given to applications and examples.

Instructor's description: This course provides a overview of stochastic processes. We cover Poisson processes, discrete-time and continuous-time Markov chains, renewal processes, diffusion process and its variants, marttingales. We also study Markov chain Monte Carlo methods, and regenerative processes. In addition to covering basic theories, we also explore applications in various areas such as mathematical finance.

Syllabus can be found here: https://www.math.uh.edu/~edkao/MyWeb/doc/math4320_fall2022_syllabus.pdf

 

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Math 4322 - Introduction to Data Science and Machine Learning
Prerequisites: MATH 3339
Text(s):

While lecture notes will serve as the main source of material for the course, the following book constitutes a great reference:
”An Introduction to Statistical Learning (with applications in R)” by James, Witten et al. ISBN: 978-1461471370
”Neural Networks with R” by G. Ciaburro. ISBN: 978-1788397872

Description:

Course will deal with theory and applications for such statistical learning techniques as linear and logistic regression, classification and regression trees, random forests, neural networks. Other topics might include: fit quality assessment, model validation, resampling methods. R Statistical programming will be used throughout the course.

Learning Objectives: By the end of the course a successful student should:

• Have a solid conceptual grasp on the described statistical learning methods.
• Be able to correctly identify the appropriate techniques to deal with particular data sets.
• Have a working knowledge of R programming software in order to apply those techniques and subse- quently assess the quality of fitted models.
• Demonstrate the ability to clearly communicate the results of applying selected statistical learning methods to the data.

Software: Make sure to download R and RStudio (which can’t be installed without R) before the course starts. Use the link https://www.rstudio.com/products/rstudio/download/ to download it from the mirror appropriate for your platform. Let me know via email in case you encounter difficulties.

Course Outline:
Introduction: What is Statistical Learning?

Supervised and unsupervised learning. Regression and classification.
Linear and Logistic Regression. Continuous response: simple and multiple linear regression. Binary response: logistic regression. Assessing quality of fit.
Model Validation. Validation set approach. Cross-validation.
Tree-based Models. Decision and regression trees: splitting algorithm, tree pruning. Random forests: bootstrap, bagging, random splitting.
Neural Networks. Single-layer perceptron: neuron model, learning weights. Multi-Layer Perceptron: backpropagation, multi-class discrimination

 

 
Math 4323 - Introduction to Data Science and Machine Learning
Prerequisites: MATH 3339
Text(s):

Intro to Statistical Learning. ISBN: 9781461471370

Description: Theory and applications for such statistical learning techniques as maximal marginal classifiers, support vector machines, K-means and hierarchical clustering. Other topics might include: algorithm performance evaluation, cluster validation, data scaling, resampling methods. R Statistical programming will be used throughout the course.

 

 

 

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Math 4331 - Introduction to Real Analysis I
Prerequisites: MATH 3333. In depth knowledge of Math 3325 and Math 3333 is required.
Text(s): Real Analysis, by N. L. Carothers; Cambridge University Press (2000), ISBN 978-0521497565
Description:

This first course in the sequence Math 4331-4332 provides a solid introduction to deeper properties of the real numbers, continuous functions, differentiability and integration needed for advanced study in mathematics, science and engineering. It is assumed that the student is familiar with the material of Math 3333, including an introduction to the real numbers, basic properties of continuous and differentiable functions on the real line, and an ability to do epsilon-delta proofs.

Topics: Open and closed sets, compact and connected sets, convergence of sequences, Cauchy sequences and completeness, properties of continuous functions, fixed points and the contraction mapping principle, differentiation and integration.

 

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Math 4335 - Partial Differential Equations I
Prerequisites:

MATH 3331 or equivalent, and three additional hours of 3000-4000 level Mathematics. Previous exposure to Partial Differential Equations (Math 3363) is recommended.

Text(s):

"Partial Differential Equations: An Introduction (second edition)," by Walter A. Strauss, published by Wiley, ISBN-13 978-0470-05456-7  

Description:

 

Description:Initial and boundary value problems, waves and diffusions, reflections, boundary values, Fourier series.

Instructor's Description: will cover the first 6 chapters of the textbook. See the departmental course description.

 

  

 

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Math 4339 - Multivariate Statistics
Prerequisites:

MATH 3349

Text(s):

- Applied Multivariate Statistical Analysis (6th Edition), Pearson. Richard A. Johnson, Dean W. Wichern. ISBN: 978-0131877153 (Required)

- Using R With Multivariate Statistics (1st Edition). Schumacker, R. E. SAGE Publications. ISBN: 978-1483377964 (recommended)

Description:

Course Description: Multivariate analysis is a set of techniques used for analysis of data sets that contain more than one variable, and the techniques are especially valuable when working with correlated variables. The techniques provide a method for information extraction, regression, or classification. This includes applications of data sets using statistical software.

Course Objectives:

  • Understand how to use R and R Markdown
  • Understand matrix algebra using R
  • Understand the geometry of a sample and random sampling
  • Understand the properties of multivariate normal distribution
  • Make inferences about a mean vector
  • Compare several multivariate means
  • Identify and interpret multivariate linear regression models

Course Topics:

  • Introduction to R Markdown, Review of R commands (Notes)
  • Introduction to Multivariate Analysis (Ch.1)
  • Matrix Algebra, R Matrix Commands (Ch.2)
  • Sample Geometry and Random Sampling (Ch.3)
  • Multivariate Normal Distribution (Ch.4)
  • MANOVA (Ch.6)
  • Multiple Regression (Ch.7)
  • Logistic Regression (Notes)
  • Classification (Ch.11)

 

 
 
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Math 4364-01 (13320) - Introduction to Numerical Analysis in Scientific Computing
Prerequisites:

MATH 3331 or MATH 3321 or equivalent, and three additional hours of 3000-4000 level Mathematics

*Ability to do computer assignments in FORTRAN, C, Matlab, Pascal, Mathematica or Maple.

Text(s): Numerical Analysis (9th edition), by R.L. Burden and J.D. Faires, Brooks-Cole Publishers, 9780538733519
Description:

This is an one semester course which introduces core areas of numerical analysis and scientific computing along with basic themes such as solving nonlinear equations, interpolation and splines fitting, curve fitting, numerical differentiation and integration, initial value problems of ordinary differential equations, direct methods for solving linear systems of equations, and finite-difference approximation to a two-points boundary value problem. This is an introductory course and will be a mix of mathematics and computing.

 

 
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Math 4364-02 (15767) - Introduction to Numerical Analysis in Scientific Computing
Prerequisites:

MATH 3331 or MATH 3321 or equivalent, and three additional hours of 3000-4000 level Mathematics 

*Ability to do computer assignments in FORTRAN, C, Matlab, Pascal, Mathematica or Maple.

Text(s): Instructor's notes
Description:

This is an one semester course which introduces core areas of numerical analysis and scientific computing along with basic themes such as solving nonlinear equations, interpolation and splines fitting, curve fitting, numerical differentiation and integration, initial value problems of ordinary differential equations, direct methods for solving linear systems of equations, and finite-difference approximation to a two-points boundary value problem. This is an introductory course and will be a mix of mathematics and computing.

 

 

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 Math 4366 - Numerical Linear Algebra - CANCELLED
Prerequisites:

MATH 2331, or equivalent, and six additional hours of 3000-4000 level Mathematics.

Text(s): Instructor will use his own notes.
Description:

Conditioning and stability of linear systems, matrix factorizations, direct and iterative methods for solving linear systesm, computing eigenvalues and eigenvectors, introduction to linear and nonlinear optimization 

 

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Math 4377  - Advanced Linear Algebra I 
Prerequisites: MATH 2331, or equivalent, and a minimum of three semester hours of 3000-4000 level Mathematics.
Text(s): Linear Algebra, 4th Edition, by S.H. Friedberg, A.J Insel, L.E. Spence,Prentice Hall, ISBN 0-13-008451-4
Description:

Catalog Description: Linear systems of equations, matrices, determinants, vector spaces and linear transformations, eigenvalues and eigenvectors.

Instructor's Description: The course covers the following topics: vector spaces, subspaces, linear combinations,systems of linear equations, linear dependence and linear independence, bases and dimension,linear transformations, null spaces, ranges, matrix rank, matrix inverse and invertibility,determinants and their properties, eigenvalues and eigenvectors, diagonalizability.


 
Math 4383 - Number Theory and Cryptography
Prerequisites:

MATH 3330 and MATH 3336

Text(s):

Refer to the instructor's syllabus

Description:

DescriptionDivisibility theory, primes and their distribution, theory of congruences and application in security, integer representations, Fermat’s Little Theorem and Euler’s Theorem, primitive roots, quadratic reciprocity, and introduction to cryptography

 
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Math 4388 - History of Mathematics
Prerequisites: MATH 3333
Text(s): No textbook is required. Instructor notes will be provided
Description: This course is designed to provide a college-level experience in history of mathematics. Students will understand some critical historical mathematics events, such as creation of classical Greek mathematics, and development of calculus; recognize notable mathematicians and the impact of their discoveries, such as Fermat, Descartes, Newton and Leibniz, Euler and Gauss; understand the development of certain mathematical topics, such as Pythagoras theorem, the real number theory and calculus.

Aims of the course: To help students
to understand the history of mathematics;
to attain an orientation in the history and philosophy of mathematics;
to gain an appreciation for our ancestor's effort and great contribution;
to gain an appreciation for the current state of mathematics;
to obtain inspiration for mathematical education,
and to obtain inspiration for further development of mathematics.

On-line course is taught through Blackboard Learn, visit http://www.uh.edu/webct/ for information on obtaining ID and password.

The course will be based on my notes.

Homework and Essays assignement are posted in Blackboard Learn. There are four submissions for homework and essays and each of them covers 10 lecture notes. The dates of submission will be announced.

All homework and essays, handwriting or typed, should be turned into PDF files and be submitted through Blackboard Learn. Late homework is not acceptable.

There is one final exam in multiple choice.

Grading: 35% homework, 45% projects, 20 % Final exam.

 

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 Math 4389 - Survey of Undergraduate Mathematics
Prerequisites: MATH 3331, MATH 3333, and three hours of 4000-level Mathematics.
Text(s): No textbook is required. Instructor notes will be provided
Description:  A review of some of the most important topics in the undergraduate mathematics curriculum.

 

 

Math 4397 (20652) - Intro to Computational Neurosciences
Prerequisites:

Math 4397 Prerequisites: MATH 3333. Instructor's prerequisites

Text(s):
  • TBD
Description: Information theory is the scientific study of the quantification, storage, and communication of digital information. It has been widely used in the communication and cryptography in our daily life. In last several decades, motivated by quantum computation, quantum information theory has been a rapid growing area studying how information can be processed, transmit and stored in quantum mechanics system.

The aim of this course is to give a minimal introduction to both classical and quantum information theory in a unified manner. We will start with some basics in Shannon’s classical information theory and then study their counterpart in quantum mechanics model. After that, we will focus on the quantum side and covers some selected topics such as entanglement, Bell’s inequality, Shor's algorithm, Quantum Teleportation and Superdense coding, etc.

 

Math 4397 (TBD)  - Selected Topics in Mathematics 
Prerequisites:  MATH 3333 or consent of instructor.
Text(s):  No textbook is required. Instructor notes will be provided
Description:  Selected topics in Mathematics

 


ONLINE GRADUATE COURSES

 

MATH 5310  - History of Mathematics
Prerequisites:

Graduate standing.

Text(s):

Instructor's notes

Description: Mathematics of the ancient world, classical Greek mathematics, the development of calculus, notable mathematicians and their accomplishments.

 

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MATH 5331  - Linear Algebra w/Applications
Prerequisites: Graduate standing.
Text(s):

Linear Algebra Using MATLAB, Selected material from the text Linear Algebra and Differential Equations Using Matlab by Martin Golubitsky and Michael Dellnitz)
The text will made available to enrolled students free of charge.

Software: Scientific Note Book (SNB) 5.5  (available through MacKichan Software, http://www.mackichan.com/)

Syllabus: Chapter 1 (1.1, 1.3, 1.4), Chapter 2 (2.1-2.5), Chapter 3 (3.1-3.8), Chapter 4 (4.1-4.4), Chapter 5 (5.1-5.2, 5.4-5-6), Chapter 6 (6.1-6.4), Chapter 7 (7.1-7.4), Chapter 8 (8.1)

Project: Applications of linear algebra to demographics. To be completed by the end of the semester as part of the final.

Description:

Solving Linear Systems of Equations, Linear Maps and Matrix Algebra, Determinants and Eigenvalues, Vector Spaces, Linear Maps, Orthogonality, Symmetric Matrices, Spectral Theorem.

Students will also learn how to use the computer algebra portion of SNB for completing the project. 

 

MATH 5333  - Analysis
Prerequisites: Graduate standing and two semesters of Calculus.
Text(s): Analysis with an Introduction to Proof | Edition: 5, Steven R. Lay, 9780321747471
Description: A survey of the concepts of limit, continuity, differentiation and integration for functions of one variable and functions of several variables; selected applications.

 

MATH 5382  - Probability
Prerequisites: Graduate standing. Instructor's prerequisite: Calculus 3 (multi-dimensional integrals), very minimal background in Probability. 
Text(s): Sheldon Ross, A First Course in Probability (10th Edition)
Description: This course is for students who would like to learn about Probability concepts; I’ll assume very minimal background in probability. Calculus 3 (multi-dimensional integrals) is the only prerequisite for this class. This class will emphasize practical aspects, such as analytical calculations related to conditional probability and computational aspects of probability. No measure-theoretical concepts will be covered in this class. This is class is intended for students who want to learn more practical concepts in probability. This class is particularly suitable for Master students and non-math majors.

 

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GRADUATE COURSES

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MATH 6302 - Modern Algebra I
Prerequisites: Graduate standing.
Text(s):

Required Text: Abstract Algebra by David S. Dummit and Richard M. Foote, ISBN: 9780471433347

This book is encyclopedic with good examples and it is one of the few books that includes material for all of the four main topics we will cover: groups, rings, field, and modules.  While some students find it difficult to learn solely from this book, it does provide a nice resource to be used in parallel with class notes or other sources.

Description: We will cover basic concepts from the theories of groups, rings, fields, and modules.  These topics form a basic foundation in Modern Algebra that every working mathematician should know.  The Math 6302--6303 sequence also prepares students for the department’s Algebra Preliminary Exam.

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MATH 6308 -  Advanced Linear Algebra I
Prerequisites:

Catalog Prerequisite: Graduate standing, MATH 2331 and a minimum of 3 semester hours transformations, eigenvalues and eigenvectors.

Instructor's Prerequisite: MATH 2331, or equivalent, and a minimum of three semester hours of 3000-4000 level Mathematics.

Text(s): Linear Algebra, Fourth Edition, by S.H. Friedberg, A.J Insel, L.E. Spence,Prentice Hall, ISBN 0-13-008451-4
Description:

Catalog Description: An expository paper or talk on a subject related to the course content is required.

Instructor's Description: The course covers the following topics: vector spaces, subspaces, linear combinations,systems of linear equations, linear dependence and linear independence, bases and dimension,linear transformations, null spaces, ranges, matrix rank, matrix inverse and invertibility,determinants and their properties, eigenvalues and eigenvectors, diagonalizability.

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MATH 6312  - Introduction to Real Analysis
Prerequisites:

Graduate standing and MATH 3334.

In depth knowledge of Math 3325 and Math 3333 is required.

Text(s): Real Analysis, by N. L. Carothers; Cambridge University Press (2000), ISBN 978-0521497565
Description:

This first course in the sequence Math 4331-4332 provides a solid introduction to deeper properties of the real numbers, continuous functions, differentiability and integration needed for advanced study in mathematics, science and engineering. It is assumed that the student is familiar with the material of Math 3333, including an introduction to the real numbers, basic properties of continuous and differentiable functions on the real line, and an ability to do epsilon-delta proofs.

Topics: Open and closed sets, compact and connected sets, convergence of sequences, Cauchy sequences and completeness, properties of continuous functions, fixed points and the contraction mapping principle, differentiation and integration.

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MATH 6320- Theory Functions of a Real Variable
Prerequisites: Graduate standing and Math 4332 (Introduction to real analysis).
Text(s): Real Analysis: Modern Techniques and Their Applications | Edition: 2, by: Gerald B. Folland, G. B. Folland. ISBN: 9780471317166
Description: Math 6320 / 6321 introduces students to modern real analysis. The core of the course will cover measure, Lebesgue integration, differentiation, absolute continuity, and L^p spaces. We will also study aspects of functional analysis, Radon measures, and Fourier analysis.

 

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MATH 6322- Function Complex Variable
Prerequisites: Graduate standing and MATH 4331
Text(s): TBD
Description: Geometry of the complex plane, mappings of the complex plane, integration, singularities, spaces of analytic functions, special function, analytic continuation, and Riemann surfaces.

  

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MATH 6326- Partial Differential Equations
Prerequisites: Graduate standing and MATH 4331
Text(s): • Robert McOwen, "Partial Differential Equations, Methods and Applications", 2nd Ed. (2004)

• Lawrence C. Evans, "Partial Differential Equations, Graduate studies in Mathematics 19.2 (1998)
Description:

Existence and uniqueness theory in partial differential equations; generalized solutions and convergence of approximate solutions to partial differential systems.

This course introduces four main types of partial differential equations: parabolic, elliptic, hyperbolic and transport equations. The focus is on existence and uniqueness theory. Maximum principles and regularity of solutions will be considered. Other concepts that will be explored include weak formulations and weak solutions, distribution theory, fundamental solutions. The course will touch on applications and a brief introduction to numerical methods: finite differences, finite volume, and finite elements.

 

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MATH 6342 - Topology
Prerequisites:

Catalog prerequisite: Graduate standing. MATH 4331.

Instructor's prerequisite: Graduate standing. MATH 4331 or consent of instructor

Text(s):

(Required) Topology, A First Course, J. R. Munkres, Second Edition, Prentice-Hall Publishers.

link to text

Description:

Catalog Description: Point-set topology: compactness, connectedness, quotient spaces, separation properties, Tychonoff’s theorem, the Urysohn lemma, Tietze’s theorem, and the characterization of separable metric spaces

Instructor's Description: Topology is a foundational pillar supporting the study of advanced mathematics. It is an elegant subject with deep links to algebra and analysis. We will study general topology as well as elements of algebraic topology (the fundamental group and homology theories).

Though traditionally viewed as a pure subject, algebraic topology has experienced a renaissance in recent years with the emergence of applied algebraic topology. To wit, SIAM has recently launched a new journal on applied algebra and geometry.


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MATH 6350  - Statistical Learning and Data Mining
Prerequisites: Graduate Standing and must be in the MSDS Program. Undergraduate Courses in basic Linear Algebra and basic descriptive Statistics
Text(s):

Recommended text: Reading assignments will be a set of selected chapters extracted from the following reference text:

  • Introduction to Statistical Learning w/Applications in R, by James , Witten, Hastie, Tibshirani (This book is freely available online). ISBN: 9781461471370
  • "Neural Networks with R” by G. Ciaburro. ISBN: 978-1788397872
Description:

Summary: A typical task of Machine Learning is to automatically classify observed "cases" or "individuals" into one of several "classes", on the basis of a fixed and possibly large number of features describing each "case". Machine Learning Algorithms (MLAs) implement computationally intensive algorithmic exploration of large set of observed cases. In supervised learning, adequate classification of cases is known for many training cases, and the MLA goal is to generate an accurate Automatic Classification of any new case. In unsupervised learning, no known classification of cases is provided, and the MLA goal is Automatic Clustering, which partitions the set of all cases into disjoint categories (discovered by the MLA).

Numerous MLAs have been developed and applied to images and faces identification, speech understanding, handwriting recognition, texts classification, stock prices anticipation, biomedical data in proteomics and genomics, Web traffic monitoring, etc.

This MSDSfall 2019 course will successively study :

1) Quick Review (Linear Algebra) : multi dimensional vectors, scalar products, matrices,  matrix eigenvectors and eigenvalues, matrix  diagonalization, positive definite matrices

2) Dimension Reduction for  Data Features : Principal Components Analysis (PCA)

3) Automatic Clustering of Data Sets by K-means algorithmics

3) Quick Reviev (Empirical Statistics) : Histograms, Quantiles, Means, Covariance Matrices

4) Computation of Data Features Discriminative Power

5) Automatic Classification by Support Vector Machines (SVMs)  

Emphasis will be on concrete algorithmic implementation and  testing on  actual data sets, as well as on  understanding importants  concepts.

 

 

 

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MATH 6357- Linear Models and Design of Experiments 
Prerequisites: Graduate Standing and must be in the MSDS Program. MATH 2433, MATH 3338, MATH 3339, and MATH 6308
Text(s):

Required Text: ”Neural Networks with R” by G. Ciaburro. ISBN: 9781788397872

Description: Linear models with L-S estimation, interpretation of parameters, inference, model diagnostics, one-way and two-way ANOVA models, completely randomized design and randomized complete block designs.

 

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MATH 6358- Probability Models and Statistical Computing 
Prerequisites: Graduate Standing and must be in the MSDS Program. MATH 3334, MATH 3338 and MATH 4378
Text(s):
  • Required: Probability with Applications in Engineering, Science, and Technology, by Matthew A. Carlton and Jay L. Devore, 2014.
  • Recommended: Introductory Statistics in R, Peter Dalgaard, 2nd ed., Springer, 2008
  • Recommended: Introduction to Probability Models by Sheldon Axler 11th edition
  • Lecture Notes
Description:

Course Description: Probability, independence, Markov property, Law of Large Numbers, major discrete and continuous distributions, joint distributions and conditional probability, models of convergence, and computational techniques based on the above.

Topics Covered: 

  • Probability spaces, random variables, axioms of probability.
  • Combinatorial analysis (sampling with, without replacement etc)
  • Independence and the Markov property. Markov chains- stochastic processes, Markov property, first step analysis, transition probability matrices. Longterm behavior of Markov chains: communicating classes, transience/recurrence, criteria for transience/recurrence, random walks on the integers.
  • Distribution of a random variable, distribution functions, probability density function. Independence.
  • Strong law of large numbers and the central limit theorem.
  • Major discrete distributions- Bernoulli, Binomial, Poisson, Geometric. Modeling with the major discrete distributions.
  • Important continuous distributions- Normal, Exponential. Beta and Gamma.
  • Jointly distributed random variables, joint distribution function, joint probability density function, marginal distribution.
  • Conditional probability- Bayes theorem. Discrete conditional distributions, continuous conditional distributions, conditional expectations and conditional probabilities. Applications of conditional probability.

 

Software Used:
  • Make sure to download R and RStudio (which can't be installed without R) before the course starts. Use the link RStudio download to download it from the mirror appropriate for your platform.
  • **New: Rstudio is in the cloud: RStudio.cloud.

  

 
                             MATH 6360 - Applicable Analysis
Prerequisites:

Graduate standing. 

 

Text(s):
No obligatory text. Part of the material will be collected from Ken Davidson and Alan Donsig, “Real Analysis with Applications: Theory in Practice”, Springer, 2009. Other sources on Applied Functional Analysis will complement the material.
Description:

This course covers topics in analysis that are motivated by applications.

  1. Review of metric spaces, completeness, characterization of compactness, extreme value theorem.
  2. Contraction mappings and fixed points. Applications of contractions mappings: integral equations, solutions to initial value problems. Local existence and uniqueness of solutions, stability.
  3. Lp spaces as metric completions. Extending the Riemann integral to Lp spaces. Banach spaces.
  4. Dual spaces. Uniform boundedness.
  5. Consequences of uniform boundedness for Fourier series and polynomial interpolation.
  6. Uniform convexity, best approximation property and duality for Lp-spaces. Bounded inverse, closed graph theorem.
  7. Hilbert spaces. Orthonormal bases and their characterization. Characterization of best approximation by orthogonal projection. Fourier series.
  8. Convergence in L2 and pointwise convergence. Weak convergence.
  9. Nonlinear best approximations and (approximate) sparsity.
  10. Relationships between weak and norm convergence. Weak compactness in Hilbert spaces. Linear and convex programming in Hilbert spaces.
  11. Operators and bilinear forms. The Lax-Milgram theorem.
  12. Linear inverse problems. Sparse recovery by norm minimization.
  13. The Hilbert-Schmidt norm and Hilbert-Schmidt operators. Compact self-adjoint operators. The spectral theorem for compact, self-adjoint operators.
  14. Diagonalizing normal operators. Solutions to Schrodinger's eigenvalue problem and compact integral operators.
    Introduction to the Calculus of Variations.
  15. Other topics in coordination with faculty.

 

 
MATH 6366 - Optimization Theory
Prerequisites:

Graduate standing and MATH 4331 and MATH 4377

Students are expected to have a good grounding in basic real analysis and linear algebra.

Text(s):

"Convex Optimization", Stephen Boyd, Lieven Vandenberghe, Cambridge University Press, ISBN: 9780521833783 (This text is available online. Speak to the instructor for more details)

Description: The focus is on key topics in optimization that are connected through the themes of convexity, Lagrange multipliers, and duality. The aim is to develop a analytical treatment of finite dimensional constrained optimization, duality, and saddle point theory, using a few of unifying principles that can be easily visualized and readily understood. The course is divided into three parts that deal with convex analysis, optimality conditions and duality, computational techniques. In Part I, the mathematical theory of convex sets and functions is developed, which allows an intuitive, geometrical approach to the subject of duality and saddle point theory. This theory is developed in detail in Part II and in parallel with other convex optimization topics. In Part III, a comprehensive and up-to-date description of the most effective algorithms is given along with convergence analysis.

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MATH 6370 - Numerical Analysis
Prerequisites: Graduate standing. Students should have knowledge in Calculus and Linear Algebra.
Text(s): Numerical Mathematics (Texts in Applied Mathematics), 2nd Ed., V.37, Springer, 2010. By A. Quarteroni, R. Sacco, F. Saleri. ISBN: 9783642071010
Description: The course introduces to the methods of scientific computing and their application in analysis, linear algebra, approximation theory, optimization and differential equations. The purpose of the course to provide mathematical foundations of numerical methods, analyse their basic properties (stability, accuracy, computational complexity) and discuss performance of particular algorithms. This first part of the two-semester course spans over the following topics: (i) Principles of Numerical Mathematics (Numerical well-posedness, condition number of a problem, numerical stability, complexity); (ii) Direct methods for solving linear algebraic systems; (iii) Iterative methods for solving linear algebraic systems; (iv) numerical methods for solving eigenvalue problems; (v) non-linear equations and systems, optimization.

 

 

MATH 6374 - Numerical Partial Differential Equations
Prerequisites: Graduate standing, and MATH 6371
Text(s): TBA
Description: Finite difference, finite element, collocation and spectral methods for solving linear and nonlinear elliptic, parabolic, and hyperbolic equations and systems with applications to specific problems.

 

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MATH 6380 - Programming Foundation for Data Analytics
Prerequisites:

Graduate Standing and must be in the MSDS Program.

Instructor prerequisites: The course is essentially self-contained. The necessary material from statistics and linear algebra is integrated into the course. Background in writing computer programs is preferred but not required.

Text(s):
  • "Python for Data Analysis: Data Wrangling with Pandas, NumPy, and IPython", by Wes McKinney, 2 edition, 2017, O'Reilly. (PD) Paper Book. ISBN 13: 9781491957660. Available for free on Safari through UH library.
  • "Python for Everybody (Exploring Data in Python3)",  by Dr. Charles Russell Severance, 2016, 1 edition, CreateSpace Independent Publishing Platform (PE) Paper Book. ISBN 13: 9781530051120
        Free online copy: https://books.trinket.io/pfe/index.html
Description:

Instructor's Description: The course provides essential foundations of Python programming language for developing powerful and reusable data analysis models. The students will get hands-on training on writing programs to facilitate discoveries from data. The topics include data import/export, data types, control statements, functions, basic data processing, and data visualization.


 

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MATH 6382- Probability and Statistics
Prerequisites: Graduate standing and MATH 3334, MATH 3338 and MATH 4378.
Text(s):

Recommended Texts :
- A First Look at Rigorous Probability Theory, by Jeffrey Rosenthal, 2000. ISBN: 9789812703705
- An Intermediate Course in Probability Theory, by Allan Gut, Springer 2009 (any edition)

Review of Undergraduate Probability:
- A First Course in Probability, 6th Edit. by Sheldon Ross, 2002, Prentice Hall. ISBN: 9780321794772

Complementary Texts for further reading:
- Probability: Theory and Examples, 3rd Ed., Richard Durrett, Duxbury Press. ISBN: 9787506283403
- An Introduction to Probability Theory and Its Applications, Vol 1,  by William Feller. ISBN: 9780471257080
- Probability, by Leo Breiman, 1968, Addison-Wesley. ISBN: 9780898712964

Description:

General Background (A).
(1) Combinatorial analysis and axioms of probability
(2) Elementary random variables theory: expectation, variance, moments, distribution
function, probability density functions, impact of change of variable on density functions
(3) Major discrete probability distributions: Bernoulli, Binomial, Poisson, Geometric
Major continuous probability distributions: Uniform, Normal, Exponential
(4) Basic Modelling Applications
(5) Conditional probability: Bayes formula, Independence, Conditional Expectation,
Conditional density function, Conditional Probability distribution, Independent identically distributed random variables
(6) Joint distributions, joint density functions, marginal distributions, marginal densities, covariances and correlation coefficients
(7) Moment generating functions, Characteristic functions,

Measure theory (B).
(1) Elementary measure theory : Boolean algebras, probability spaces , continuity of probabilities, Borel-Cantelli lemma, Chebychevs inequality,
(2) Convergence of random variables: Almost sure convergence, Convergence in distribution, Law of Large Numbers, Central Limit theorem

Markov chains and random walks (C).
Markov chain theory for finite or countable state spaces
(1) Markov property and Transition matrix, Irreducibility
(2) First hitting times, Transience, Recurrence ,
(3) Stationary distributions : existence theorems and computation
(4) Random walks on Z and Z2 as Markov chains; Gambler's ruin problem

 
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MATH 6397-01 (20629) - Intro to Computational Neurosciences
Prerequisites:

Graduate standing.

Text(s):

TBA

Description:

TBA

  

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Math 6397-02 (20631) - Numerical Linear Algebra
Prerequisites: Graduate standing. 
Text(s): TBA
Description:

TBA

 

MATH 6397-03 (20632) / 6397-04 (21040) - Statistic Analysis Computation
Prerequisites: Graduate standing.
Text(s):

TBA

Description:

TBA

 

MATH 6397-05 (25011) - Selected Topics in Math
Prerequisites: Graduate standing.
Text(s):

TBA

Description:

TBA

 

MATH 7320 - Functional Analysis
Prerequisites: Graduate standing. MATH 6320 or consent of instructor.
Text(s):

Walter Rudin, Functional Analysis, 2nd edition. McGraw Hill, 1991. (Instructor may suggest other tests or have their own typed notes)

Description:

Catalog descriptionLinear topological spaces, Banach and Hilbert spaces, duality, and spectral analysis.

Instructor's description: Topics covered in this first part of the course sequence include: Topological vector spaces; Completeness; Convexity; Spectral theory; etc. See Instructor's syllabus for more details.

 

MATH 7350 - Geometry of Manifolds
Prerequisites: Graduate standing. MATH 3431 and MATH 3333
Text(s):

TBA

Description:

Manifolds and tangent bundles, submanifolds and imbeddings, integral manifolds, triangulation of manifolds, connections and holonomy; Riemannian geometry, surface theory, Morse theory, and G-structures.