Global Credit Review - Volume 3
eBook - ePub

Global Credit Review - Volume 3

Volume 3

Risk Management Institute, Singapore

  1. 176 pagine
  2. English
  3. ePUB (disponibile sull'app)
  4. Disponibile su iOS e Android
eBook - ePub

Global Credit Review - Volume 3

Volume 3

Risk Management Institute, Singapore

Dettagli del libro
Anteprima del libro
Indice dei contenuti
Citazioni

Informazioni sul libro

Global Credit Review is an annual publication that provides an overview of the most important developments in global credit markets and the regulatory landscape. The third volume provides some critical analysis, reviews the introduction of new regulations and also offers new insights to address the challenges ahead. The carefully selected chapters touch on current topics such as: the measurement of systemic risk, reserve requirements and its role in monetary policy, the application of the Basel II default definition by credit risk assessment systems, and changes in credit portfolio management, amongst others. Recent evolutions of the Risk Management Institute's Credit Research Initiative are also reported, including a comprehensive overview of the technical details on the implementation of the current RMI-CRI corporate default prediction model. With its distinctive focus on topics related to credit markets and credit risk, this is an invaluable publication for finance professionals, policy makers and academics with an interest in credit markets.

Contents:

  • Systemic Risk in Europe (Eric Jondeau and Michael Rockinger)
  • Changes in the Ratings Game — An Update on Various Developments (RMI staff)
  • Reserve Requirements as Window Guidance in China (Violaine Cousin)
  • The Implementation of the Basel II Default Definition by Credit Risk Assessment Systems: An Analysis of Possible Aggregation Procedures (Markus Bingmer and Laura Auria)
  • Can Credit-Scoring Models Effectively Predict Microloans Default? Statistical Evidence from the Tunisian Microfinance Bank (Ibtissem Baklouti and Abdelfettah Bouri)
  • Stepping Up to the Liquidity Challenge: The Changing Role of Credit Portfolio Management (IACPM and KPMG)
  • NUS-RMI Credit Research Initiative Technical Report (Version: 2013, Update 2b) (RMI staff)


Readership: Finance professionals, policy makers and academics with an interest in credit markets. Key Features:

  • A distinctive focus on credit risk related topics that are relevant for academics, policymakers and practitioners, linking rigorous theoretical and empirical research with clear practical implications
  • An annual update on global credit market dynamics and financial regulations
  • Touches on current topics such as the measurement of systemic risk, the role of reserve requirements in monetary policy, and changes in credit portfolio management

Domande frequenti

Come faccio ad annullare l'abbonamento?
È semplicissimo: basta accedere alla sezione Account nelle Impostazioni e cliccare su "Annulla abbonamento". Dopo la cancellazione, l'abbonamento rimarrà attivo per il periodo rimanente già pagato. Per maggiori informazioni, clicca qui
È possibile scaricare libri? Se sì, come?
Al momento è possibile scaricare tramite l'app tutti i nostri libri ePub mobile-friendly. Anche la maggior parte dei nostri PDF è scaricabile e stiamo lavorando per rendere disponibile quanto prima il download di tutti gli altri file. Per maggiori informazioni, clicca qui
Che differenza c'è tra i piani?
Entrambi i piani ti danno accesso illimitato alla libreria e a tutte le funzionalità di Perlego. Le uniche differenze sono il prezzo e il periodo di abbonamento: con il piano annuale risparmierai circa il 30% rispetto a 12 rate con quello mensile.
Cos'è Perlego?
Perlego è un servizio di abbonamento a testi accademici, che ti permette di accedere a un'intera libreria online a un prezzo inferiore rispetto a quello che pagheresti per acquistare un singolo libro al mese. Con oltre 1 milione di testi suddivisi in più di 1.000 categorie, troverai sicuramente ciò che fa per te! Per maggiori informazioni, clicca qui.
Perlego supporta la sintesi vocale?
Cerca l'icona Sintesi vocale nel prossimo libro che leggerai per verificare se è possibile riprodurre l'audio. Questo strumento permette di leggere il testo a voce alta, evidenziandolo man mano che la lettura procede. Puoi aumentare o diminuire la velocità della sintesi vocale, oppure sospendere la riproduzione. Per maggiori informazioni, clicca qui.
Global Credit Review - Volume 3 è disponibile online in formato PDF/ePub?
Sì, puoi accedere a Global Credit Review - Volume 3 di Risk Management Institute, Singapore in formato PDF e/o ePub, così come ad altri libri molto apprezzati nelle sezioni relative a Economics e Banks & Banking. Scopri oltre 1 milione di libri disponibili nel nostro catalogo.

Informazioni

Editore
WSPC
Anno
2013
ISBN
9789814566155
Argomento
Economics
NUS-RMI Credit Research Initiative Technical Report
Version: 2013 Update 2b
RMI staff article
For any questions or comments on this article, please contact Oliver Chen at [email protected]
Keywords: Non-profit credit research initiative, credit risk, probability of default, forward intensity.
This document describes the implementation of the system which the Credit Research Initiative (CRI) at the Risk Management Institute (RMI) of the National University of Singapore (NUS) uses to produce probabilities of default (PDs). As of this version of the Technical Report, RMI covers around 60,400 listed firms (including delisted ones) in 106 economies around the world (see Table A.1). Of the over 39,000 active firms under the CRI coverage, around 34,000 firms have sufficient data to release daily updated PDs. The PD for all firms is freely available to users who can provide evidence of their professional qualifications to ensure that they will not misuse the data. General users who do not request global access are restricted to a list of 3,000 firms. The individual company PD data, along with aggregate PDs at the economy and sector level, can be accessed at http://rmicri.org.
The primary goal of this initiative is to drive research and development in the critical area of credit rating systems. As such, a transparent methodology is essential to this initiative. Having the details of the methodology available to everybody means that there is a base from which suggestions and improvements can be made. The objective of this Technical Report is to provide a full exposition of the CRI system. Readers of this document who have access to the necessary data and who have a sufficient level of technical expertise will be able to implement a similar system on their own. For a full exposition of the conceptual framework of the CRI, see Duan and Van Laere (2012).
The system used by the CRI will evolve as new innovations and enhancements are applied. The changes to the 2012 technical report and operational implementation of our model are: (1) RMI’s global coverage; (2) extension of the forecast horizon to five years by applying a Nelson-Siegel type parameterization and using a Sequential Monte Carlo (SMC) method; (3) changes to treatment of financial statements in monthly calibration; (4) exclusion rule for merger and acquisition (M&A) events; (5) changes to treatment of companies after a default event; (6) change from monthly sigma to daily sigma; (7) changes in the treatment of missing values; and (8) changes in the level and trend calculations and (9) changes in the Distance-to-Default computation. This version of the technical report provides an update on the operational implementation of the CRI and includes all changes to the system that had been implemented by September 2013. More specifically, in addition to Version: 2013 update 1, the current version of the technical report specifies some revisions to the monthly parameter updates that went into effect as of the August 2013 calibration. The latest version of the Technical Report and addenda to the latest version are available via the web portal and will include any changes to the system that have been implemented since the publication of this version.
The remainder of this Technical Report is organized as follows. The next section describes the quantitative model that is currently used to compute PDs from the CRI. The model was first described in Duan et al. (2012). The description includes calibration procedures, which are performed on a monthly basis, and individual firm PD computations, which are performed on a daily basis.
Section 2 describes the input variables of the model as well as the data used to produce the variables for input into the model. This model uses both input variables that are common to all firms in an economy and input variables that are firm-specific. Another critical component when calibrating a probability of default estimation system is the default data, and this is also described in this section.
While Section 1 provides a broader description of the model, Section 3 describes the implementation details that are necessary for application, given real world issues of, for example, bad or missing data. The specific technical details needed to develop an operational system are also given, including details on the monthly calibration, daily computation of individual firm PDs and aggregation of the individual firm PDs. Distance-to default (DTD) in a Merton-type model is one of the firm-specific variables. The calculation for DTD is not the standard one, and has been modified to allow a meaningful computation of the DTD for financial firms. While most academic studies on default prediction exclude financial firms from consideration, it is important to include them given that the financial sector is a critical component in every economy. The calculation for DTD is detailed in this section.
Section 4 shows an empirical analysis for those economies that are currently covered. While the analysis shows excellent results in several economies, there is room for improvement in a few others. This is because, at the CRI’s current stage of development, the economies all use the variables used in the academic study of US firms in Duan et al. (2012). Future development within the CRI will deal with variable selection specific to different economies, and the performance is then expected to improve. Other planned developments are discussed in Section 5.
I. MODEL DESCRIPTION
The quantitative model that is currently being used by the CRI is a forward intensity model that was introduced in Duan et al. (2012). Certain aspects of the model are taken from Duan and Fulop (2013). This model allows PD forecasts to be made at a range of horizons. In the current CRI implementation of this model, PDs are forecasted from a horizon of one month up to a horizon of five years. At the RMI CRI website, for every firm, the probabilities of that firm defaulting within one month, three months, six months, one year, two years, three years and five years are given. The ability to assess credit quality for different horizons is a useful tool for risk management, credit portfolio management, policy setting and regulatory purposes, since short- and long-term credit risk profiles can differ greatly depending on a firm’s liquidity, debt structures and other factors.
The forward intensity model is a reduced form model in which the PD is computed as a function of different input variables. These can be firm-specific or common to all firms within an economy. The other category of the default prediction model is the structural model, whereby the corporate structure of a firm is modeled in order to assess the firm’s PD.
A similar reduced form model by Duffie et al. (2007) relies on modeling the time series ...

Indice dei contenuti

  1. Cover Page
  2. Title Page
  3. Copyright Page
  4. Contents
  5. Message from the Editor
  6. Systemic Risk in Europe: Eric Jondeau and Michael Rockinger
  7. Changes in the Ratings Game — An Update on Various Developments: RMI Staff
  8. Reserve Requirements as Window Guidance in China: Violaine Cousin
  9. The Implementation of the Basel II Default Definition by Credit Risk Assessment Systems: An Analysis of Possible Aggregation Procedures: Markus Bingmer and Laura Auria
  10. Can Credit-Scoring Models Effectively Predict Microloans Default? Statistical Evidence from the Tunisian Microfinance Bank: Ibtissem Baklouti and Abdelfettah Bouri
  11. Stepping Up to the Liquidity Challenge: The Changing Role of Credit Portfolio Management: IACPM and KPMG
  12. NUS-RMI Credit Research Initiative Technical Report (Version: 2013, Update 2b): RMI Staff
Stili delle citazioni per Global Credit Review - Volume 3

APA 6 Citation

Management, R., & Singapore. (2013). Global Credit Review - Volume 3 ([edition unavailable]). World Scientific Publishing Company. Retrieved from https://www.perlego.com/book/850986/global-credit-review-volume-3-volume-3-pdf (Original work published 2013)

Chicago Citation

Management, Risk, and Singapore. (2013) 2013. Global Credit Review - Volume 3. [Edition unavailable]. World Scientific Publishing Company. https://www.perlego.com/book/850986/global-credit-review-volume-3-volume-3-pdf.

Harvard Citation

Management, R. and Singapore (2013) Global Credit Review - Volume 3. [edition unavailable]. World Scientific Publishing Company. Available at: https://www.perlego.com/book/850986/global-credit-review-volume-3-volume-3-pdf (Accessed: 14 October 2022).

MLA 7 Citation

Management, Risk, and Singapore. Global Credit Review - Volume 3. [edition unavailable]. World Scientific Publishing Company, 2013. Web. 14 Oct. 2022.