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Showing papers by "Claudia Czado published in 2021"


Journal ArticleDOI
TL;DR: Analyzing the (tail) dependence structure of companies with a range of ESG scores, using high-dimensional vine copula modelling, it is shown that risk can also depend on and be directly associated with a specific ESG rating class.
Abstract: While environmental, social, and governance (ESG) trading activity has been a distinctive feature of financial markets, the debate if ESG scores can also convey information regarding a company's riskiness remains open. Regulatory authorities, such as the European Banking Authority (EBA), have acknowledged that ESG factors can contribute to risk. Therefore, it is important to model such risks and quantify what part of a company's riskiness can be attributed to the ESG scores. This paper aims to question whether ESG scores can be used to provide information on (tail) riskiness. By analyzing the (tail) dependence structure of companies with a range of ESG scores, that is within an ESG rating class, using high-dimensional vine copula modelling, we are able to show that risk can also depend on and be directly associated with a specific ESG rating class. Empirical findings on real-world data show positive not negligible ESG risks determined by ESG scores, especially during the 2008 crisis.

9 citations


Journal ArticleDOI
TL;DR: A new pillar is introduced, the so-called Missing (M-) pillar, and an optimization approach is proposed to compute new ESG (ESGM) scores, which should be related to the company riskiness, and incorporate the extent of missing information.
Abstract: Environmental, social, and governance (ESG) scores measure companies’ activities concerning sustainability and are organized on three pillars: Environmental (E-), Social (S-), and Governance (G-). Different approaches have been proposed to compute ESG scores for companies, which rely on the aggregation of many sources of information. These complementary non-financial ESG scores should provide information about the ESG performance and risks of different companies. However, the extent of missing information makes the reliability of ESG scores questionable. To account for the missing information in the underlying ESG pillars, we introduce a new pillar, the so-called Missing (M-) pillar, and propose an optimization approach to compute new ESG (ESGM) scores, which should be related to the company riskiness. The ESGM scores incorporate the extent of missing information and establish some meaningful relationship concerning the riskiness of the companies under consideration. Interesting insights into the current limitations of the ESG scoring methodology are discussed.

8 citations


Journal ArticleDOI
TL;DR: In this article, a single factor copula model with stochastic volatility margins is proposed for modeling multivariate time series and a joint Bayesian inference using Hamiltonian Monte Carlo (HMC) within Gibbs sampling.

6 citations


Journal ArticleDOI
TL;DR: In this article, a vine copula mixture model for continuous data is proposed to capture asymmetric tail dependencies within components and not capturing non-elliptical clusters in clustering applications.

4 citations


Posted Content
TL;DR: In this article, the authors analyzed the (tail) dependence structure of companies with a range of ESG scores, using high-dimensional vine copula modelling, and showed that risk can also depend on and be directly associated with a specific ESG rating class.
Abstract: While environmental, social, and governance (ESG) trading activity has been a distinctive feature of financial markets, the debate if ESG scores can also convey information regarding a company's riskiness remains open. Regulatory authorities, such as the European Banking Authority (EBA), have acknowledged that ESG factors can contribute to risk. Therefore, it is important to model such risks and quantify what part of a company's riskiness can be attributed to the ESG ratings. This paper aims to question whether ESG scores can be used to provide information on (tail) riskiness. By analyzing the (tail) dependence structure of companies with a range of ESG scores, using high-dimensional vine copula modelling, we are able to show that risk can also depend on and be directly associated with a specific ESG rating class. Empirical findings on real-world data show positive not negligible dependencies between clusters determined by ESG scores, especially during the 2008 crisis.

3 citations


Journal ArticleDOI
TL;DR: In this paper, a model-based clustering algorithm with vine copula mixture models has been proposed, which allows for a range of shapes and dependency structures for the clusters, including asymmetric tail dependencies and non-Gaussian margins.
Abstract: The majority of finite mixture models suffer from not allowing asymmetric tail dependencies within components and not capturing non-elliptical clusters in clustering applications. Since vine copulas are very flexible in capturing these types of dependencies, we propose a novel vine copula mixture model for continuous data. We discuss the model selection and parameter estimation problems and further formulate a new model-based clustering algorithm. The use of vine copulas in clustering allows for a range of shapes and dependency structures for the clusters. Our simulation experiments illustrate a significant gain in clustering accuracy when notably asymmetric tail dependencies or/and non-Gaussian margins within the components exist. The analysis of real data sets accompanies the proposed method. We show that the model-based clustering algorithm with vine copula mixture models outperforms the other model-based clustering techniques, especially for the non-Gaussian multivariate data.

2 citations


Posted Content
TL;DR: In this article, the authors analyzed the (tail) dependence structure of companies with a range of ESG scores, using high-dimensional vine copula modelling, and showed that risk can also depend on and be directly associated with a specific ESG rating class.
Abstract: While environmental, social, and governance (ESG) trading activity has been a distinctive feature of financial markets, the debate if ESG scores can also convey information regarding a company's riskiness remains open. Regulatory authorities, such as the European Banking Authority (EBA), have acknowledged that ESG factors can contribute to risk. Therefore, it is important to model such risks and quantify what part of a company's riskiness can be attributed to the ESG ratings. This paper aims to question whether ESG scores can be used to provide information on (tail) riskiness. By analyzing the (tail) dependence structure of companies with a range of ESG scores, using high-dimensional vine copula modelling, we are able to show that risk can also depend on and be directly associated with a specific ESG rating class. Empirical findings on real-world data show positive not negligible dependencies between clusters determined by ESG scores, especially during the 2008 crisis.

1 citations


Posted Content
TL;DR: In this paper, the authors proposed an optimization approach to compute new ESG (ESGM) scores, which should also be related to the company riskiness, which allow for incorporating the extent of missing information and establishing some meaningful relationship with respect to the riskiness of the companies under consideration.
Abstract: Environmental, social, and governance (ESG) scores measure companies' activities concerning sustainability and societal impact and are organized on three pillars: Environmental (E-), Social (S-), and Governance (G-). Different approaches have been proposed to compute ESG scores for companies, which typically rely on the aggregation of many and different sources of information. These complementary non-financial ESG scores should provide information about the ESG performance and risks of different companies. However, the extent of missing information makes the reliability of ESG scores questionable. To account for the missing information in the underlying ESG pillars, we introduce a new pillar, the so-called Missing (M-) pillar, and propose an optimization approach to compute new ESG (ESGM) scores, which should also be related to the company riskiness. As a result, the ESGM scores allow for incorporating the extent of missing information and establishing some meaningful relationship with respect to the riskiness of the companies under consideration. Interesting insights into the current limitations of ESG scoring methodology are discussed.

1 citations


Posted Content
TL;DR: In this paper, a non-restrictive and highly flexible nonparametric quantile regression approach based on C- and D-vine copulas is proposed, which can be expressed through a graph theoretical model given by a sequence of trees.
Abstract: Quantile regression is a field with steadily growing importance in statistical modeling. It is a complementary method to linear regression, since computing a range of conditional quantile functions provides a more accurate modelling of the stochastic relationship among variables, especially in the tails. We introduce a novel non-restrictive and highly flexible nonparametric quantile regression approach based on C- and D-vine copulas. Vine copulas allow for separate modeling of marginal distributions and the dependence structure in the data, and can be expressed through a graph theoretical model given by a sequence of trees. This way we obtain a quantile regression model, that overcomes typical issues of quantile regression such as quantile crossings or collinearity, the need for transformations and interactions of variables. Our approach incorporates a two-step ahead ordering of variables, by maximizing the conditional log-likelihood of the tree sequence, while taking into account the next two tree levels. Further, we show that the nonparametric conditional quantile estimator is consistent. The performance of the proposed methods is evaluated in both low- and high-dimensional settings using simulated and real world data. The results support the superior prediction ability of the proposed models.

1 citations


Posted Content
TL;DR: In this article, the authors proposed a new model based on a parametric copula for the relationship between T and C, and on parametric marginal distributions for T and c. Unlike most other papers in the literature, they do not assume that the parameter defining the copula function is known.
Abstract: Consider a survival time T that is subject to random right censoring, and suppose that T is stochastically dependent on the censoring time C. We are interested in the marginal distribution of T. This situation is often encountered in practice. Consider for instance the case where T is the time to death of a patient suffering from a certain disease. Then, the censoring time C is for instance the time until the person leaves the study or the time until he/she dies from another disease. If the reason for leaving the study is related to the health condition of the patient or if he/she dies from a disease that has similar risk factors as the disease of interest, then T and C are likely dependent. In this paper we propose a new model that takes this dependence into account. The model is based on a parametric copula for the relationship between T and C, and on parametric marginal distributions for T and C. Unlike most other papers in the literature, we do not assume that the parameter defining the copula function is known. We give sufficient conditions on these parametric copula and marginals under which the bivariate distribution of (T;C) is identifed. These sufficient conditions are then checked for a wide range of common copulas and marginal distributions. We also study the estimation of the model, and carry out extensive simulations and the analysis of data on pancreas cancer to illustrate the proposed model and estimation procedure.

1 citations


Posted Content
TL;DR: In this paper, a non-Gaussian nonlinear structural equation model based on vine copulas is proposed to identify signaling pathways using linear Gaussian Bayesian networks from data, which is more suited to fit the data than the standard linear structural equation models based on the biological consent graph.
Abstract: While there is considerable effort to identify signaling pathways using linear Gaussian Bayesian networks from data, there is less emphasis of understanding and quantifying conditional densities and probabilities of nodes given its parents from the identifed Bayesian network. Most graphical models for continuous data assume a multivariate Gaussian distribution, which might be too restrictive. We re-analyse data from an experimental setting considered in Sachs et al. (2005) to illustrate the effects of such restrictions. For this we propose a novel non Gaussian nonlinear structural equation model based on vine copulas. In particular the D-vine regression approach of Kraus and Czado (2017) is adapted. We show that this model class is more suited to fit the data than the standard linear structural equation model based on the biological consent graph given in Sachs et al. (2005). The modelling approach also allows to study which pathway edges are supported by the data and which can be removed. For data experiment cd3cd28+aktinhib this approach identified three edges, which are no longer supported by the data. For each of these edges a plausible explanation based on underlying the experimental conditions could be found.