Colloquium, Department of Mathematics and Statistics
Colloquium, Department of Mathematics and Statistics
Colloquium Lectures
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Duan Chen

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Short Course in Applied Quantile Regression: October 12 and October 19, 2018

August 28, 2018 by Duan Chen
Categories: Spring 2022
Lecturer: Dr.  Yonggang Yao, SAS Institute Inc.
Time and location: 2:00-4:45 pm, Friday 141 (Please note this NEW location)

Course Description: If you ever worry about the validity of the common variance or other parametric distribution assumptions for your data analysis, quantile regression might be a relief for you because quantile regression is a distribution-agnostic methodology. Whereas generalized linear regression models the conditional means via link functions, quantile regression enables you to more fully explore your data by modeling conditional quantiles, tail distributions, or the entire conditional distributions. Quantile regression is particularly useful when your data are heterogeneous and when you cannot assume a parametric distribution for the response. This tutorial provides an overview and a set of intuitive examples of the quantile regression methodology.  From the basic concepts and comparison to linear regression to more advanced applications and research topics, this tutorial demonstrates the benefits and potentials of using quantile regression methods and introduces computing tools for quantile model fitting, quantile predictions, conditional distribution estimation, conditional percentage estimation, and other inferences and hypothesis testing.  The attendees are assumed to be familiar with basic probability distributions, linear algebra, and linear regression.

The first lecture covers:

  1. Benefits and basics
  2. a) Motivation
  3. b) Comparison to linear regression
  4. Single-level quantile regression
  5. a) Computation software
  6. b) Parameter estimates and quantile predictions
  7. c) Interpretation, inferences, and hypothesis testing
  8. Quantile process regression
  9. a) Functional parameter estimates
  10. b) Conditional distribution estimation
  11. c) Conditional percentages versus unconditional percentages

The second lecture covers:

  1. Model selection
  2. a) Selection methods
  3. b) Model fitness criteria
  4. c) Model selection for quantile process regression
  5. Extended applications
  6. a) Trimmed mean regression
  7. b) Censored data analysis
  8. c) Counterfactual analysis
  9. d) Quantile factorization machine for recommendation system
  10. e) Values at risk
  11. f) Extreme value analysis
  12. g) More research area
  13. Summary

ComputingSoftware:  Neither personal computer nor pre-installed software are required in classroom. This short course will present SAS outputs for relevant example programs.  You are welcome to try the programs on SAS 9.22 or later release including the free SAS University Edition.

Short Biography:   Dr. Yonggang Yao is a principal research statistician at SAS Institute Inc. He joined SAS in 2008 after obtaining his PhD in statistics from The Ohio State University. Dr. Yao has developed several SAS quantile-regression procedures for standard and distributed computing environments including PROC QUANTSELECT and PROC HPQUANTSELECT. He is also the key supporting developer for two other SAS procedures: PROC QUANTREG for quantile regression and PROC ROBUSTREG for robust regression. Dr. Yao has taught tutorials on quantile regression at SAS Global Forums, the Joint Statistical Meetings, and for the ASA traveling courses.

Registration: To ensure your seat and order a hard copy of the lecture notes, please email Professor Yanqing Sun at yasun@uncc.eduby using email subject “Lecture Registration for Applied Quantile Regression” or “Lecture Registration and Ordering Notes for Applied Quantile Regression”. There is a $20 fee for each hard copy of the lecture notes (cash or check).

Parking:         Visitor parking is available inEast Deck 1.

 

 

Wednesday, August 29, 4:00PM-5:00 PM, Fretwell 315

August 21, 2018 by Duan Chen
Categories: Spring 2022
Professor: Valery, Romanovski, Center for Applied Mathematics and Theoretical Physics, University of Maribor
Title: Some problems in the theory of polynomial ordinary differential equations
Abstract: In addition to their theoretical interest systems of ordinary differential
equations whose right hand sides are polynomials have wide practical application. In this talk we will describe significant problems that arise in studying the behavior of solutions of polynomial differential equations and techniques of analysis that are used to attack them.

 

Friday, September 28, Conference room, 11:00am

August 13, 2018 by Duan Chen
Categories: Spring 2022
Professor: Min Ru, Professor, Department of Mathematics, University of Houston, USA
Title: Results related to F.T.A. in number theory, complex analysis and geometry
plications
Abstract: The fundamental theorem of algebra (F.T.A.) states that for every complex polynomial P, the equation P(z)=0 always has d solutions on the complex plane, counting multiplicities, where d is the degree of P.

In this talk, I’ll discuss the results related to F.T.A. in number theory, complex analysis and geometry. In particular, I’ll describe the integer solutions of the Fermat’s equation (Faltings’ theorem), and related Diophantine equations (Diophantine approximation); the Little Picard theorem in complex analysis (viewed as a generalization of F.T. A.)
and overall so-called Nevanlinna theory;  how the Nevanlinna theory is related to Diophantine approximation. Finally, I’ll discuss the study of Gauss map of minimal surfaces as part of application of the Nevanlinna theory.

 

Friday, March 23, 11:00AM-12:00 noon, Conference Room

March 13, 2018 by Duan Chen
Categories: Spring 2022
Dr. Daniel Massatt,  University of Minnesota
Title:Electronic Structure of Relaxed Incommensurate 2D Heterostructures

Abstract: 2D materials have extensive potential application in optics and electronics due to their unique mechanical and electric properties. How to numerically simulate electronic properties is well understood for periodic atomistic lattices, but has been unknown for materials that are stacked with misalignment that breaks the periodicity of the ensemble, i.e., incommensurate materials.  The previous approach has been to artificially strain the layers to be able to use the theory and computational methods for periodic systems.

We show how to rigorously define the electronic density of states (DOS) for two-dimensional incommensurate layered structures, where Fourier-Bloch theory does not apply, and efficiently approximate it using a novel configuration space representation and locality technique. We have also been able to apply our configuration space approach to obtain mechanical relaxation patterns using a continuum elasticity model coupled with a stacking energy model. We combine these two models together to form an electronic structure calculation for an incommensurate system with atomistic relaxation.

 

Tuesday, April 03, 11:00AM-1:00 PM, Conference room

February 25, 2018 by Duan Chen
Categories: Spring 2022
Professor: Daniel Onofrei, Department of Mathematics, University of Houston
Title:Active manipulation of scalar wave fields and applications
Abstract: In this talk we will describe our recent results about the characterization of continuous boundary data (i.e., pressure or normal velocity) on active single sources or arrays for the approximation of different prescribed scalar wave field patterns in given exterior (bounded or unbounded) regions of space. We will present the theoretical ideas behind our results as well as numerical simulations with applications in scattering cancellation, field synthesis and inverse source problems.

 

Wednesday, March 21, 3:25PM, Conference room

February 25, 2018 by Duan Chen
Categories: Spring 2022
Professor: Leonid Koralov, Department of Mathematics, University of Maryland
Title:  Large Time Behavior of Randomly Perturbed Dynamical Systems
 Abstract:  We will discuss several asymptotic problems for randomly perturbed flows

(and related problems for  Markov chains with rare transitions). One class of flows (with regions where a strong flow creates a trapping mechanism) leads to a new class of elliptic and parabolic boundary value problems with
non-standard boundary conditions. The same boundary value problems appear as a limiting object when studying the
asymptotic behavior of diffusion processes with pockets of large diffusivity.
 We will also discuss how large-deviation techniques can be used
to study the asymptotic behavior of solutions to quasi-linear parabolic equations with a small parameter at the
second order term and the long time behavior of the corresponding diffusion processes.

 

Friday, March 16, 11:00AM, Fretwell 315

February 25, 2018 by Duan Chen
Categories: Spring 2022
Professor: Yi Sun, Department of Mathematics, University of South Carolina
Title: Kinetic Monte Carlo Simulations of Multicellular Aggregate Self-Assembly in Biofabrication
 Abstract:  We present a 3D lattice model to study self-assembly of multicellular aggregates by using kinetic Monte Carlo (KMC) simulations. This model is developed to describe and predict the time evolution of postprinting structure formation during tissue or organ maturation in a novel biofabrication technology–bioprinting. Here we simulate the self-assembly and the cell sorting processes within the aggregates of different geometries, which can involve a large number of cells of multiple types.

 

Friday, Jan 19, 11:00AM-12:00Noon, Fretwell 315

January 12, 2018 by Duan Chen
Categories: Spring 2022
Dr. Donald Richards, Department of Statistics, Penn State University
Title:Distance Correlation: A New Tool for Detecting Association and Measuring
Correlation Between Data Sets

Abstract: The difficulties of detecting association, measuring correlation, and establishing cause and effect have fascinated mankind since time immemorial. Democritus, the Greek philosopher, underscored well the importance and the difficulty of proving causality when he wrote, “I would rather discover one cause than gain the kingdom of Persia.’’

To address the difficulties of relating cause and effect, statisticians have developed many inferential techniques. Perhaps the most well-known method stems from Karl Pearson’s coefficient of correlation, introduced in the late 19th century.

I will introduce in this lecture the recently-devised distance correlation coefficient and describe its advantages over the Pearson and other classical measures of correlation. We will review an application of the distance correlation coefficient to data drawn from large astrophysical databases, where it is desired to classify galaxies according to various types. Further, the lecture will analyze data arising in the on-going national discussion of the relationship between state-by-state homicide rates and the stringency of state laws governing firearm ownership.

The lecture will also describe a remarkable singular integral which lies at the core of the theory of the distance correlation coefficient. We will describe generalizations of this singular integral to truncated Maclaurin expansions of the cosine function and to the theory of spherical functions on symmetric cones.

Tuesday, January 9th, 11:00AM-12:00 noon, Conference room

January 07, 2018 by Duan Chen
Categories: Spring 2022
Professor:Jae Woo JEONG, Department of Mathematics, Miami University
Title:Numerical Methods for Biharmonic Equations on non-convex Domains
Abstract: Several methods constructing C1-continuous basis functions have been introduced for the numerical solutions of fourth-order partial differential equations. However, implementing these C1-continuous basis functions for biharmonic equations is complicated or may encounter some difficulties. In the framework of IGA (IsoGeometric Analysis), it is relatively easy to construct highly regular spline basis functions to deal with high order PDEs through a single patch approach. Whenever physical domains are non convex polygons, it is desirable to use IGA for PDEs on non-convex domains with multi-patches. In this case, it is not easy to make patchwise smooth B-spline functions global smooth functions.In this talk, we propose two new approaches constructing C1-continuous basis functions for biharmonic equation on non-convex domain: (i) Firstly, by modifying Bezier polynomials or B-spline functions, we construct hierarchical global C1-continuous basis functions whose imple- mentation is as simple as that of conventional FEM (Finite Element Methods). (ii) Secondly, by taking advantages of proper use of the control point, weights, and NURBS (Non-Uniform Rational B-Spline), we construct one-patch C1-continuous geometric map onto an irregular physical domain and associated C1-continuous basis functions. Hence, we can avoid the difficulties aris- ing multi patch approaches. Both of the proposed methods can be easily extended to construct highly smooth basis functions for the numerical solutions of higher order partial differential equations.

Friday, Jan 12, 11:00AM-12:00Noon, Fretwell 315

January 04, 2018 by Duan Chen
Categories: Spring 2022
Dr. Roman Kazinnik, Data Scientist at Brighthouse Financial
Title:Deep learning and mathematical perspectives: historical developments and modern challenges
Abstract:  Artificial Intelligence (AI) is often viewed as a massive parallel optimization problem, and has gained its popularity presumably due to the recent wide availability of parallel computing power.  On one hand, AI departs from fundamental mathematical conceptions: it doesn’t prescribe any PDE when solving inverse problems, and AI learning algorithms do not care about dense representations in functional space. However, there is a great deal of mathematical principles that are in widely implemented by modern AI. 

In this talk I am going to cover some of these techniques and principles that are deployed by AI, and familiar to the applied mathematicians. I will also show how a lack of rigorous underlying model presents, perhaps, one of the major challenges in deploying modern AI methodologies. I consider building such rigorous underlying modeling principles as one of the most interesting modern challenges applied mathematicians can find in AI.

 

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