Cornell University
Library
Cornell UniversityLibrary

eCommons

Help
Log In(current)
  1. Home
  2. Cornell University Graduate School
  3. Cornell Theses and Dissertations
  4. Complex-Valued Group Lasso For Tensor Autoregressive Models

Complex-Valued Group Lasso For Tensor Autoregressive Models

File(s)
yyh5.pdf (1.46 MB)
Permanent Link(s)
https://hdl.handle.net/1813/43737
Collections
Cornell Theses and Dissertations
Author
Hu, Yang
Abstract

I will introduce a group lasso algorithm for complex variables and demonstrate its application to a novel time series model called tensor autoregression (T-AR). T-AR utilizes the t-product tensor operation on 3-dimensional tensors and models time series exhibiting seasonality and geometric trend. The tensor structure of T-AR enables historical information from a selection of lag durations to simultaneously affect the prediction of a single series. I will first introduce the topic of tensor computations and motivate the t-product and T-SVD manipulations. Then, I will derive the T-AR model from the t-product definition and discuss its properties and interpretation. Next, I will adapt a group lasso algorithm to complex-valued problems and derive the fast algorithm for lag selection in T-AR. Finally, I will conclude with simulation results.

Date Issued
2016-02-01
Committee Chair
Wells,Martin Timothy
Committee Member
Van Loan,Charles Francis
Degree Discipline
Statistics
Degree Name
M.S., Statistics
Degree Level
Master of Science
Type
dissertation or thesis

Site Statistics | Help

About eCommons | Policies | Terms of use | Contact Us

copyright © 2002-2026 Cornell University Library | Privacy | Web Accessibility Assistance