Skip to main content
Mobile
  • Finance, Accounting & Economics
  • Global Business Management
  • Management, Leadership & Organisation
  • Marketing & Sales
  • Strategy
  • Technology & Operations
HS Talks HS Talks
Subjects  
Search
  • Notifications
    Notifications

    No current notifications.

  • User
    Welcome Guest
    You have Limited Access The Business & Management Collection
    Login
    Get Assistance
    Login
    Forgot your password?
    Login via your organisation
    Login via Organisation
    Get Assistance
Finance, Accounting & Economics
Global Business Management
Management, Leadership & Organisation
Marketing & Sales
Strategy
Technology & Operations
Practice paper

Information theoretic generator estimation with an application to ratings process migration

Jeffrey R. Stokes
Journal of Risk Management in Financial Institutions, 4 (1), 29-45 (2010)
https://doi.org/10.69554/MWVM7123

Abstract

The characterisation of obligor ratings dynamics as a Markov chain is a common assumption in credit risk modelling. While a continuous time Markov chain is most appealing on account of the potential for more robust transition probability estimates, the cost of continuously monitoring obligor ratings can be too high to justify the assumption in practice. Linking the discrete and continuous Markov chains is a generator matrix that allows for the determination of transition probabilities for any timescale of interest. Known as the embeddability problem, empirical transition probability estimates for ratings processes rarely possess an exact generator suggesting that methods for finding a generator matrix comprise an important area of research. In this paper, an econometric model for estimating generator intensities is suggested that is flexible, non-parametric and does not rely on previously estimated transition probabilities.

Keywords: credit risk; entropy, generator; Markov chain; risk-rating; transition probability matrix; C14; C61; G21

The full article is available to subscribers to the journal.

Already a subscriber? Login or review other options.

Citation

Stokes, Jeffrey R. (2010, December 1). Information theoretic generator estimation with an application to ratings process migration. In the Journal of Risk Management in Financial Institutions, Volume 4, Issue 1. https://doi.org/10.69554/MWVM7123.

Options

  • Download PDF
  • Share this page
    Share This Article
    Messaging
    • Outlook
    • Gmail
    • Yahoo!
    • WhatsApp
    Social
    • Facebook
    • X
    • LinkedIn
    • VKontakte
    Permalink
cover image, Journal of Risk Management in Financial Institutions
Journal of Risk Management in Financial Institutions
Volume 4 / Issue 1
© Henry Stewart
Publications LLP

The Business & Management Collection

  • ISSN: 2059-7177
  • Contact Us
  • Request Free Trial
  • Recommend to Your Librarian
  • Subscription Information
  • Match Content
  • Share This Collection
  • Embed Options
  • View Quick Start Guide
  • Accessibility

Categories

  • Finance, Accounting & Economics
  • Global Business Management
  • Management, Leadership & Organisation
  • Marketing & Sales
  • Strategy
  • Technology & Operations

Librarian Information

  • General Information
  • MARC Records
  • Discovery Services
  • Onsite & Offsite Access
  • Federated (Shibboleth) Access
  • Usage Statistics
  • Promotional Materials
  • Testimonials

About Us

  • About HSTalks
  • Editors
  • Contact Information
  • About the Journals

HSTalks Home

Follow Us On:

HS Talks
  • Site Requirements
  • Copyright & Permissions
  • Terms
  • Privacy
  • Sitemap
© Copyright Henry Stewart Talks Ltd

Personal Account Required

To use this function, you need to be signed in with a personal account.

If you already have a personal account, please login here.

Otherwise you may sign up now for a personal account.

HS Talks

Cookies and Privacy

We use cookies, and similar tools, to improve the way this site functions, to track browsing patterns and enable marketing. For more information read our cookie policy and privacy policy.

Cookie Settings

How Cookies Are Used

Cookies are of the following types:

  • Essential to make the site function.
  • Used to analyse and improve visitor experience.

For more information see our Cookie Policy.

Some types of cookies can be disabled by you but doing so may adversely affect functionality. Please see below:

(always on)

If you block these cookies or set alerts in your browser parts of the website will not work.

Cookies that provide enhanced functionality and personalisation. If not allowed functionality may be impaired.

Cookies that count and track visits and on website activity enabling us to organise the website to optimise the experience of users. They may be blocked without immediate adverse effect.