SOE
Chow Institute
User Center
中
EN
About WISE
People
Committee of Academic Consultants
Faculty Directory
Staff Directory
Research
Publications
Working Papers
Facilities&Centers
Education
Overview
Undergraduate Programs
Graduate Programs
Study-Abroad MA Programs
Exchange Programs
Executive Education
News & Events
News
Announcements
Conferences
Seminars & Conferences
Job Openings
SOE
Chow Institute
User Center
中
EN
About WISE
Introduction to WISE
Contact Us
Map and Direction
People
Committee of Academic Consultants
Faculty Directory
Staff Directory
Research
Publications
Working Papers
Facilities&Centers
Education
Overview
Undergraduate Programs
Graduate Programs
Study-Abroad MA Programs
Exchange Programs
Executive Education
News & Events
News
Announcements
Conferences
Seminars & Conferences
Job Openings
Research
Home
->
Research
->
Publications
->
Content
Research
Publications
Working Papers
Facilities&Centers
Finance & Economics Experimental Lab
MOE Key Lab in Econometrics
Fujian Provincial Key Lab in Statistics
Center for Econometrics Research
Center for Financial Research
Center for Research in Labor Economics
Center for Macroeconomics Research
Center for Statistics Research
Center for Information Technology
SAS Center for Excellence in Econometrics
High-Speed Computing Cluster
Forecasting the term structure of option implied volatility: The power of an adaptive method
Id:2377
Date:20181201
Status:published
ClickTimes:
作者
Ying Chen, Qian Han, Linlin Niu
正文
We model the term structure of implied volatility (TSIV) with an adaptive approach to improve predictability, which treats dynamic time series models of globally time-varying but locally constant parameters and uses a data-driven procedure to find the local optimal interval. We choose two specifications of the adaptive models: a simple local AR (LAR) model for a univariate implied volatility series and an adaptive dynamic Nelson-Siegel (ADNS) model of three factors, each based on an LAR, to model the cross-section of the TSIV simultaneously with parsimony. Both LAR and ADNS models uniformly outperform more than a dozen alternative models with significance across maturities for 1-20 day forecast horizons. Measured by RMSE and MAE, the forecast errors of the random walk model can be reduced by between 20% and 60% for the 5 to 20 days ahead forecast. In terms of prediction accuracy of future directional changes, the adaptive models achieve an accuracy range of 60%–90%, which strictly dominates the range of 30%–59% of the alternative models.
JEL-Codes:
C32; C53
关键词:
Term structure of implied volatility; Local parametric models; Forecasting
TOP