IAMCS IAMCS


Navigation Menu
  • Home
  • Who We Are
    • People
      • Active IAMCS Director
      • IAMCS Staff
      • Past Executive Committee
      • Past Investigators
      • Past Applications Researchers
    • Mission & Scope
    • Computing Infrastructure
    • Media
  • Research
    • IAMCS Innovation Award
    • Computer Resources Available to IAMCS Investigators
    • Annual Research Themes
    • Published Books
    • Preprint Series
    • Information for IAMCS Investigators
    • Core Research Areas
      • Core 1: Forward Multi-scale Modeling and Simulation
      • Core 2: Deterministic & Statistical Methods in Inverse Problems
      • Core 3: Data Driven Computational Science & Visualizations
  • Outreach
  • Graduate Program
    • Former Graduate Students List
  • Postdoctoral Fellows
    • Former Postdoctoral Fellows List
  • IAMCS EVENTS
    • Workshop & Conferences
      • Affiliate Seminars
      • FY 2014
        • Arid Zone Hydrology under Climate Change Scenarios for the 21st Century Workshop
        • Advances in Data Science: Theory, Methods and Computation
        • Workshop On Fractional Differential Equations
      • FY 2015
        • Computational Fluid Dynamics at TAMU
        • Inverse Problems and Spectral Theory
        • Spatial Statistics Workshop
      • FY 2016
        • Contemporary Mathematical Challenges in the Life Sciences
        • 2016 Finite Element Rodeo
        • Advances and Challenges in Measurement Error Problems and other Complex Data
      • FY 2017
        • Conference on Advances in Big Data Modeling, Computation and Analytics
      • FY 2019
        • Quantum Computation and Information Workshop
        • The 2nd Quantum Computation and Information Workshop
        • Workshop on Point Process Models
        • Bioinformatics and Cancer Symposium
      • FY 2020
        • Advances in Data Science: THEORY, METHODS AND COMPUTATION
        • Computational Methods for New Directions in Inverse Problems
        • Novel Medical Imaging Workshop
      • FY 2021
        • 3rd Annual Bioinformatics Symposium
      • FY 2022
        • 4th Annual Bioinformatics Symposium
      • FY 2023
        • 5th Annual Bioinformatics Symposium
        • Conference on Advances in Data Science – Theory, Methods, and Computation
    • Seminars
      • Numerical Analysis Seminar
  • IAMCS Gallery
    • 5th Annual Spring Symposium Gallery
    • 4th Annual Spring Symposium Gallery
    • 3rd Annual Spring Symposium Gallery
  • Contact
Home » Preprint Series
Tue04

Explicit Estimating Equations for Semiparametric Generalized Linear Latent Variable Models

IAMCS – 2009-086 – “Explicit Estimating Equations for Semiparametric Generalized Linear Latent Variable Models” By: Y. Ma and M. Genton Click here to download

Tue04

Analysis of a Cartesian PML Approximation to Acoustic Scattering Problems in R2

IAMCS – 2009-084 – “Analysis of a Cartesian PML Approximation to Acoustic Scattering Problems in R2” By: S. Kim and J. Pasciak Click here to download

Tue04

Analysis of a Finite PML Approximation to the Three Dimensional Elastic Wave Scattering Problem

IAMCS – 2009-083 – “Analysis of a Finite PML Approximation to the Three Dimensional Elastic Wave Scattering Problem” By: J. Bramble, J. Pasciak, and D. Trenev Click here to download

Tue04

Multiscale Finite Element and Domain Decomposition Methods for High-contrast Problems using Local Spectral Basis Functions

IAMCS – 2009-082 – “Multiscale Finite Element and Domain Decomposition Methods for High-contrast Problems using Local Spectral Basis Functions” By:  Y. Efendiev, J. Galvis, and X. Wu Click here to download

Tue04

A New Method for Evaluating the Productivity Index of Nonlinear Flows

IAMCS – 2009-080 – “A New Method for Evaluating the Productivity Index of Nonlinear Flows” By: E. Aulisa, A. Ibragimov, and J. Walton Click here to download

Tue04

E±cient Semiparametric Marginal Estimation for the Partially Linear Additive Model for Longitudinal/Clustered Data

IAMCS – 2009-079 – “Efficient Semiparametric Marginal Estimation for the Partially Linear Additive Model for Longitudinal/Clustered Data” By: R. Carroll, A. Maity, E. Mammen, and K. Yu Click here to download

« Next
Next Entries »

  • About
  • Policies
  • Accessability
  • Texas A&M University
  • Contact Us