Articles via Databases
Articles via Journals
Online Catalog
E-books
Research & Information Literacy
Interlibrary loan
Theses & Dissertations
Collections
Policies
Services
About / Contact Us
Administration
Littman Architecture Library
This site will be removed in January 2019, please change your bookmarks.
This page will redirect to https://digitalcommons.njit.edu/theses/920 in 5 seconds

The New Jersey Institute of Technology's
Electronic Theses & Dissertations Project

Title: Bootstrapping TSMARS models
Author: Chen, Liangzhong
View Online: njit-etd1998-045
(ix, 32 pages ~ 2.1 MB pdf)
Department: Department of Mathematical Sciences
Degree: Master of Science
Program: Applied Mathematics
Document Type: Thesis
Advisory Committee: Ray, Bonnie K. (Committee chair)
Bhattacharjee, Manish Chandra (Committee member)
Bechtold, John Kenneth (Committee member)
Date: 1998-05
Keywords: Bootstrap (Statistics).
Time-series analysis.
Adaptive control systems--Mathematical models.
Availability: Unrestricted
Abstract:

We investigate bootstrap inference methods for nonlinear time series models obtained using Multivariate Adaptive Regression Splines for Time Series (TSMARS), for which theoretical properties are not currently known. We use two different methods of bootstrapping to obtain confidence intervals for the underlying nonlinear function and prediction intervals for future values, based on estimated TSMARS models for the bootstrapped data. We also explore the method of Bootstrap AGGregatING (Bagging), due to Breiman (1996), to investigate whether the residual and prediction mean squared errors from a fitted TSMARS model can be reduced by averaging across the values obtained from each of the bootstrapped models. We find that, although the estimated parameters of models obtained using TSMARS may differ markedly from one bootstrap replicate to another, fitted values from the estimated models are relatively stable. We also find that Bagging can lead to smaller residual and forecasts errors, but that confidence and prediction intervals based on bootstrapping have a coverage that is much too small.

Key Words: Bootstrapping; Multivariate Adaptive Regression Splines; Nonlinear time series; TSMARS


If you have any questions please contact the ETD Team, libetd@njit.edu.

 
ETD Information
Digital Commons @ NJIT
Theses and DIssertations
ETD Policies & Procedures
ETD FAQ's
ETD home

Request a Scan
NDLTD

NJIT's ETD project was given an ACRL/NJ Technology Innovation Honorable Mention Award in spring 2003