scholarly journals Forecasting Conditional Covariance Matrices in High-Dimensional Time Series: A General Dynamic Factor Approach

2019 ◽  
Author(s):  
Carlos César Trucíos Maza ◽  
João Henrique Gonçalves Mazzeu ◽  
Marc Hallin ◽  
Luiz Koodi Hotta ◽  
Pedro L. Valls Pereira ◽  
...  
Bernoulli ◽  
2017 ◽  
Vol 23 (4A) ◽  
pp. 2299-2329 ◽  
Author(s):  
Ansgar Steland ◽  
Rainer von Sachs

2021 ◽  
Vol 2021 (026) ◽  
pp. 1-52
Author(s):  
Dong Hwan Oh ◽  
◽  
Andrew J. Patton ◽  

This paper proposes a dynamic multi-factor copula for use in high dimensional time series applications. A novel feature of our model is that the assignment of individual variables to groups is estimated from the data, rather than being pre-assigned using SIC industry codes, market capitalization ranks, or other ad hoc methods. We adapt the k-means clustering algorithm for use in our application and show that it has excellent finite-sample properties. Applying the new model to returns on 110 US equities, we find around 20 clusters to be optimal. In out-of-sample forecasts, we find that a model with as few as five estimated clusters significantly outperforms an otherwise identical model with 21 clusters formed using two-digit SIC codes.


Author(s):  
Tobias Hartl ◽  
Roland Jucknewitz

Abstract We propose a setup for fractionally cointegrated time series which is formulated in terms of latent integrated and short-memory components. It accommodates nonstationary processes with different fractional orders and cointegration of different strengths and is applicable in high-dimensional settings. In an application to realized covariance matrices, we find that orthogonal short- and long-memory components provide a reasonable fit and competitive out-of-sample performance compared with several competing methods.


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