Finding hidden structure of sparse longitudinal data via functional Eigenfunctions
  • Kim, Jong-Min
  • Hwang, Sun Young
Citations

WEB OF SCIENCE

1
Citations

SCOPUS

1

초록

In this research, we are interested in finding the hidden dependence structure of sparse longitudinal data. Finding the hidden dependence structure of sparse longitudinal data is difficult due to the starting and end times being different. We propose that finding the directional dependence structure of the eigenfunctions by sparse functional principal component analysis (FPCA) may be a good alternative solution to find the hidden dependence structure of sparse longitudinal data. To verify this idea, we apply sparse FPCA to simulated data and two real datasets, wage sparse longitudinal data and Korea composite stock price index (KOSPI) high-frequency minute tick data and then apply vine copula and copula dynamic conditional correlation with asymmetric GARCH model to the functional eigenfunctions from FPCA. © 2023 Informa UK Limited, trading as Taylor & Francis Group.

키워드

copula DCC modelcopula directional dependencefunctional PCASparse data
제목
Finding hidden structure of sparse longitudinal data via functional Eigenfunctions
저자
Kim, Jong-MinHwang, Sun Young
DOI
10.1080/13504851.2023.2176440
발행일
2024-07
유형
Article
저널명
Applied Economics Letters
31
12
페이지
1142 ~ 1149