Cluster-Specific Latent Factor Estimation in High-Dimensional Financial Time Series

Unsupervised learning methods have been increasingly used for detecting latent factors in high-dimensional time series, with many applications, especially in financial risk modelling. Most latent factor models assume that the factors are pervasive and affect all of the time series. However, some fac...

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Main Authors: Stjepan Begusic, Zvonko Kostanjcar
Format: Article
Language:English
Published: IEEE 2020-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/9186609/
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spelling doaj-1306f47e5b924e098905f9b0cac61d9b2021-03-30T04:01:29ZengIEEEIEEE Access2169-35362020-01-01816436516437910.1109/ACCESS.2020.30218989186609Cluster-Specific Latent Factor Estimation in High-Dimensional Financial Time SeriesStjepan Begusic0https://orcid.org/0000-0002-3186-1749Zvonko Kostanjcar1https://orcid.org/0000-0002-2519-3115Laboratory for Financial and Risk Analytics, Faculty of Electrical Engineering and Computing, University of Zagreb, Zagreb, CroatiaLaboratory for Financial and Risk Analytics, Faculty of Electrical Engineering and Computing, University of Zagreb, Zagreb, CroatiaUnsupervised learning methods have been increasingly used for detecting latent factors in high-dimensional time series, with many applications, especially in financial risk modelling. Most latent factor models assume that the factors are pervasive and affect all of the time series. However, some factors may affect only certain assets in financial markets, due to their clustering within countries, asset classes, or sector classifications. In this paper we consider high-dimensional financial time series with pervasive and cluster-specific latent factors, and propose a clustering and latent factor estimation method. We also develop a model selection algorithm, based on the spectral properties of asset correlation matrices and asset graphs. A simulation study with known data generating processes demonstrates that the proposed method outperforms other clustering methods and provides estimates with a high degree of accuracy. Moreover, the model selection procedure is also shown to provide stable and accurate estimates for the number of clusters and latent factors. We apply the proposed methods to datasets of asset returns from global financial markets using a backtesting approach. The results demonstrate that the clustering approach and estimated latent factors yield relevant information, improve risk modelling and reduce volatility in optimal minimum variance portfolios.https://ieeexplore.ieee.org/document/9186609/Latent factor modelshigh-dimensional data analysisfinancial risk modeling
collection DOAJ
language English
format Article
sources DOAJ
author Stjepan Begusic
Zvonko Kostanjcar
spellingShingle Stjepan Begusic
Zvonko Kostanjcar
Cluster-Specific Latent Factor Estimation in High-Dimensional Financial Time Series
IEEE Access
Latent factor models
high-dimensional data analysis
financial risk modeling
author_facet Stjepan Begusic
Zvonko Kostanjcar
author_sort Stjepan Begusic
title Cluster-Specific Latent Factor Estimation in High-Dimensional Financial Time Series
title_short Cluster-Specific Latent Factor Estimation in High-Dimensional Financial Time Series
title_full Cluster-Specific Latent Factor Estimation in High-Dimensional Financial Time Series
title_fullStr Cluster-Specific Latent Factor Estimation in High-Dimensional Financial Time Series
title_full_unstemmed Cluster-Specific Latent Factor Estimation in High-Dimensional Financial Time Series
title_sort cluster-specific latent factor estimation in high-dimensional financial time series
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2020-01-01
description Unsupervised learning methods have been increasingly used for detecting latent factors in high-dimensional time series, with many applications, especially in financial risk modelling. Most latent factor models assume that the factors are pervasive and affect all of the time series. However, some factors may affect only certain assets in financial markets, due to their clustering within countries, asset classes, or sector classifications. In this paper we consider high-dimensional financial time series with pervasive and cluster-specific latent factors, and propose a clustering and latent factor estimation method. We also develop a model selection algorithm, based on the spectral properties of asset correlation matrices and asset graphs. A simulation study with known data generating processes demonstrates that the proposed method outperforms other clustering methods and provides estimates with a high degree of accuracy. Moreover, the model selection procedure is also shown to provide stable and accurate estimates for the number of clusters and latent factors. We apply the proposed methods to datasets of asset returns from global financial markets using a backtesting approach. The results demonstrate that the clustering approach and estimated latent factors yield relevant information, improve risk modelling and reduce volatility in optimal minimum variance portfolios.
topic Latent factor models
high-dimensional data analysis
financial risk modeling
url https://ieeexplore.ieee.org/document/9186609/
work_keys_str_mv AT stjepanbegusic clusterspecificlatentfactorestimationinhighdimensionalfinancialtimeseries
AT zvonkokostanjcar clusterspecificlatentfactorestimationinhighdimensionalfinancialtimeseries
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