A Firm Level Robust Credit Rating Migration Modeling Framework : A Small Sample Methodology

Authors

  •   Rohit Malhotra Assistant Professor - Finance, N. L. Dalmia Institute of Management Studies and Research, Mumbai - 401 104

DOI:

https://doi.org/10.17010//ijrcm/2018/v5/i2/130190

Keywords:

OLS

, EWMA, Rating Migration, Bootstrapping, Non-Parametric

C1

, C520, C580, E370

Paper Submission Date

, February 19, 2018, Paper sent back for Revision, April 1, Paper Acceptance Date, June 18, 2018.

Abstract

Crisis taught us that the capital markets are incomplete, with hidden information, which puts limits to arbitrage and thus controversial aspect of “efficient prices†prompts the valuation scientists to investigate deeper with more robust methodological investigations. In context, did our financial statements reveal something extraordinary, which allowed our “credit raters†to apply for robust measure of rating calibration ? The present paper proposed a “destabilizing†framework which can bring some benefit (if jointly there are lot of disturbances) in the flexible dynamic system. The dynamic system is a representation of the unknown latent factor. The human capital price as factor price was considered as an unknown factor. The model used here, utilized in a disintegrated fashion, two separate latent factor pricing models. The two latent pricing models (namely market-based and internal-information based) with respect to conditional volatility of latent prices (prices derived from single-variate market-based and internal-information based) showed marked differences, and it was observed that for sample companies under robust setup, the internal information based model yielded better credit rating annual forecast compared to the market-price based model.

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Published

2018-06-01

How to Cite

Malhotra, R. (2018). A Firm Level Robust Credit Rating Migration Modeling Framework : A Small Sample Methodology. Indian Journal of Research in Capital Markets, 5(2), 47–58. https://doi.org/10.17010//ijrcm/2018/v5/i2/130190

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