- Series
- Applied and Computational Mathematics Seminar
- Time
- Monday, February 22, 2010 - 1:00pm for 1 hour (actually 50 minutes)
- Location
- Skiles 255
- Speaker
- Heasoon Park – CSE, Georgia Institute of Technology – http://www.cc.gatech.edu/~hpark/
- Organizer
- Sung Ha Kang
Nonnegative Matrix
Factorization (NMF) has attracted much attention during the past
decade as a dimension reduction method in machine learning and data
analysis. NMF provides a lower rank approximation of a nonnegative
high dimensional matrix by factors whose elements are also
nonnegative. Numerous success stories were reported in application
areas including text clustering, computer vision, and cancer class
discovery.
In
this talk, we present novel algorithms for NMF and NTF (nonnegative
tensor factorization) based on the alternating non-negativity
constrained least squares (ANLS) framework. Our new algorithm for NMF
is built upon the block principal pivoting method for the
non-negativity constrained least squares problem that overcomes some
limitations of the classical active set method. The proposed NMF
algorithm can naturally be extended to obtain highly efficient NTF
algorithm for PARAFAC (PARAllel FACtor) model. Our algorithms
inherit the convergence theory of the ANLS framework and can easily
be extended to other NMF formulations such as sparse NMF and NTF with
L1 norm constraints. Comparisons of algorithms using various data
sets show that the proposed new algorithms outperform existing ones
in computational speed as well as the solution quality.
This
is a joint work with Jingu Kim and Krishnakumar Balabusramanian.