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A Simulation Study on Clustering Multivariate Time Series Using Kernel Variant Multi-Way Principal Component AnalysisA Simulation Study on Clustering Multivariate Time Series Using Kernel Variant Multi-Way Principal Component Analysis

Other Titles
A Simulation Study on Clustering Multivariate Time Series Using Kernel Variant Multi-Way Principal Component Analysis
Authors
전진규최환석이철우
Issue Date
May-2017
Publisher
한국파생상품학회
Keywords
클러스터링; 고차원데이터; 커널 주성분분석; 다중시계열; 시뮬레이션; Clustering; High-dimensional data; Kernel Variant PCA; Multivariate Time Series; Simulation
Citation
선물연구, v.25, no.2, pp 229 - 253
Pages
25
Indexed
KCI
Journal Title
선물연구
Volume
25
Number
2
Start Page
229
End Page
253
URI
https://scholarworks.dongguk.edu/handle/sw.dongguk/16593
ISSN
1229-988X
2713-6647
Abstract
Conventional time series modeling may not satisfy the model validity for short-period time series data. In this study, we apply the Kernel Variant Multi-Way Principal Component Analysis (KMPCA) to cluster multivariate time series data which havemultiple dimensions with auto- and cross-correlations. We then check whether this method works well in clustering those data by employing simulation for generalization. Two simulation studies with two different mean structures with nine combinations of auto- and cross-correlations were conducted. The results showed that KMPCA cluster two different mean structure groups over 90% success rates with an appropriate kernel function. We also found that when the mean structures are the same, auto-correlation, the number of temporal points, and the kernel function parameter have the statistically significant effects on clustering performance. The second and third order interaction effects with each of those factors also have effects on clustering success rates. Among the effects of the main factors, the kernel function parameter is the most critical factor to consider for obtaining better performance. A similar error structure may obstruct the clustering performance: strong cross-correlation, weak auto-correlation, and a larger number of temporal points. The paper also discussed some limitations of the KMPCA model and suggested directions for future research that could improve the model.
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