AF:Small:RUI:New directions in Fourier analysis, noise sensitivity, and learning theory

Information

  • NSF Award
  • 1117079
Owner
  • Award Id
    1117079
  • Award Effective Date
    6/1/2011 - 13 years ago
  • Award Expiration Date
    5/31/2015 - 9 years ago
  • Award Amount
    $ 231,480.00
  • Award Instrument
    Standard Grant

AF:Small:RUI:New directions in Fourier analysis, noise sensitivity, and learning theory

One of the major concerns that practitioners have about theoretical machine learning is the focus on distributions where the attributes are independent: in other words, knowing one attribute gives no information about any others. As an example, while it is plausible that height and eye color are independent, it is much less believable that height and weight are independent. Thus, the output given by any algorithm that is based on the assumption that the attributes of a person (such as height and weight) are independent cannot be trusted. The goal of this project is to extend what we know about the theory of such problems while removing some of the mathematically convenient assumptions such as independence. <br/><br/>The tools used focus on discrete Fourier analysis, but involve many other techniques from mathematics such as functional analysis and representation theory of finite groups. One recurring technique is the application of the "noise sensitivity" method, which quantifies the complexity of a function based on how similar the value of the function is on some input to the values of that input's neighbors. In many cases, the goal is to show that the Fourier spectrum of certain classes of functions is predictable; often, this predictability is a key component of algorithms for machine learning. <br/><br/>The broader goal of this project is to discover new connections between mathematics and computer science with a special focus on questions motivated by machine learning. Answers to the underlying questions would be useful to theoreticians and could lead to better applied machine learning algorithms. Also, the mathematical questions raised are interesting independently of the machine learning connection. The problems considered in this project will provide an invigorating research opportunity for undergraduate and Master's students.

  • Program Officer
    Balasubramanian Kalyanasundaram
  • Min Amd Letter Date
    6/3/2011 - 13 years ago
  • Max Amd Letter Date
    6/3/2011 - 13 years ago
  • ARRA Amount

Institutions

  • Name
    Duquesne University
  • City
    Pittsburgh
  • State
    PA
  • Country
    United States
  • Address
    Room 310 Administration Building
  • Postal Code
    152820001
  • Phone Number
    4123961537

Investigators

  • First Name
    Karl
  • Last Name
    Wimmer
  • Email Address
    wimmerk@duq.edu
  • Start Date
    6/3/2011 12:00:00 AM

Program Element

  • Text
    ALGORITHMIC FOUNDATIONS
  • Code
    7796

Program Reference

  • Text
    SMALL PROJECT
  • Code
    7923
  • Text
    ALGORITHMS
  • Code
    7926
  • Text
    RES IN UNDERGRAD INST-RESEARCH
  • Code
    9229