TY - JOUR
T1 - Geostatistical modeling of dependent credit spreads
T2 - Estimation of large covariance matrices and imputation of missing data
AU - Hüttner, Amelie
AU - Scherer, Matthias
AU - Gräler, Benedikt
N1 - Publisher Copyright:
© 2020
PY - 2020/9
Y1 - 2020/9
N2 - We explore how the joint modeling of financial assets, especially dependent credit spreads, can utilize methodologies from geostatistical modeling. The considered approach is essentially based on modeling data as realizations of a (Gaussian) random field. This allows for a parsimonious representation of the dependence structure by means of a covariance function taken to be a function of the distance between observations. A key benefit of this ansatz is the possibility to include new data points, i.e. to consider new companies in existing financial applications. Consequently, geostatistical modeling has appealing benefits in the context of covariance matrix estimation and missing data imputation. We thoroughly discuss the necessary adjustments when applying geostatistical methods to the high-dimensional framework that entails the modeling of financial data, instead of the 2D/3D coordinate space encountered in original applications of the method. We illustrate the two use cases of covariance matrix estimation and missing data imputation on a data set of CDS spreads of constituents of the iTraxx universe, and sketch how the presented techniques could be exploited for market risk modeling.
AB - We explore how the joint modeling of financial assets, especially dependent credit spreads, can utilize methodologies from geostatistical modeling. The considered approach is essentially based on modeling data as realizations of a (Gaussian) random field. This allows for a parsimonious representation of the dependence structure by means of a covariance function taken to be a function of the distance between observations. A key benefit of this ansatz is the possibility to include new data points, i.e. to consider new companies in existing financial applications. Consequently, geostatistical modeling has appealing benefits in the context of covariance matrix estimation and missing data imputation. We thoroughly discuss the necessary adjustments when applying geostatistical methods to the high-dimensional framework that entails the modeling of financial data, instead of the 2D/3D coordinate space encountered in original applications of the method. We illustrate the two use cases of covariance matrix estimation and missing data imputation on a data set of CDS spreads of constituents of the iTraxx universe, and sketch how the presented techniques could be exploited for market risk modeling.
KW - CDS spread
KW - Covariance matrix estimation
KW - Gaussian random field
KW - Geostatistics
KW - Missing data imputation
UR - http://www.scopus.com/inward/record.url?scp=85088384387&partnerID=8YFLogxK
U2 - 10.1016/j.jbankfin.2020.105897
DO - 10.1016/j.jbankfin.2020.105897
M3 - Article
AN - SCOPUS:85088384387
SN - 0378-4266
VL - 118
JO - Journal of Banking and Finance
JF - Journal of Banking and Finance
M1 - 105897
ER -