To read this content please select one of the options below:

STATISTICAL DECOMPOSITION ANALYSIS OF FINANCIAL STATEMENTS AND PREDICTION OF BOND RATING CHANGES

Mohamed E. Ibrahim (Assistant Professor of Accounting, Faculty of Management, University of Manitoba, Winnipeg, MB R3T 2N2)
Saad A. Metawae (Assistant Professor of Finance, University of Mansoura)
Ibrahim M. Aly (Assistant Professor of Accounting, Lamar University)

Managerial Finance

ISSN: 0307-4358

Article publication date: 1 January 1990

649

Abstract

In recent years, a sizeable amount of research in finance and accounting has been devoted to the issue of bond rating and bond rating changes. A major thrust of these research efforts was to develop and test some prediction‐based models using mainly financial ratios and their trends. This paper tests the ability of statistical decomposition analysis of financial statements to predict bond rating changes. The results show that the decomposition analysis almost does not beat the a priori probability model and is no better than multiple discriminant analysis using simple financial ratios. One important piece of information for participants in debt markets is the assessment of the relative risk associated with a particular bond issue, commonly known as bond ratings. These ratings, however, are not usually fixed for the life of the issues. From time to time, the rating agencies review their ratings of the outstanding bond issues and make changes to these ratings (either upward or downward) when needed. Over the years, researchers have attempted to develop and test some prediction based models in order to predict bond ratings or bond rating changes. These prediction models have employed some variables that are assumed to reflect the rating agency decision‐making activities. Although the rating process is complicated and based mainly on judgmental considerations, Hawkins, Brown and Campbell (1983, p. 95) reported that the academic research strongly suggests that a reliable estimate of a potential bond rating or rating change can be determined by a few key financial ratios. Information theory decomposition measures have received in recent years considerable attention as a potential tool for predicting corporate events, namely corporate bankruptcy (e.g., Lev 1970; Moyer 1977; Walker, Stowe and Moriarity 1979; Booth 1983). The underlying proposition in these studies is that corporate failure, as an event, is expected to be preceded by significant changes in the company's assets and liabilities structure. Although the event of bond rating changes is different from the bankruptcy event in terms of consequences, one can still propose that a bond rating change, as a corporate event, is also expected to be preceded by some significant changes in the company's assets and liabilities structure. Therefore, the decomposition analysis may have a predictive ability in the case of bond rating changes. The purpose of this paper is to empirically test and compare the classification and predictive accuracy of the decomposition analysis with the performance of a multiple discriminant model that uses financial ratios and their trends in the context of bond rating changes.

Citation

Ibrahim, M.E., Metawae, S.A. and Aly, I.M. (1990), "STATISTICAL DECOMPOSITION ANALYSIS OF FINANCIAL STATEMENTS AND PREDICTION OF BOND RATING CHANGES", Managerial Finance, Vol. 16 No. 1, pp. 7-15. https://doi.org/10.1108/eb013634

Publisher

:

MCB UP Ltd

Copyright © 1990, MCB UP Limited

Related articles