Building an Early Warning System of Bank Failure with Alternative Methods

An early warning system (EWS) to flag troubled banks has been worked on since the early 1990s. The S&L crisis in the 1980s as well as the financial crisis of 2007-2009 have been extensively worked on to find important variables that help to predict bank failure and the logit model has been the standard workhorse. This paper adopts another strategy to predict bank failure in the machine learning field in order to build a more efficient EWS. Using a logit model and a random forest, I find that the random forest approach significantly outperforms the logit regression in the training (in-sample) data. The random forest also outperforms the logit in bank failure prediction in the testing (out-of-sample) data as the data used to estimate the model is closer in time to the testing sample. One way to make an EWS more effective would be to flag potentially troubled banks a few years in advance using a logit model at the beginning of a crisis, and then quickly update these predictions with a random forest as the crisis evolves and more data readily available.

[1]  Pierluigi Bologna Is There a Role for Funding in Explaining Recent U.S. Banks’ Failures? , 2011, SSRN Electronic Journal.

[2]  Rebel A. Cole,et al.  Separating the likelihood and timing of bank failure , 1995 .

[3]  Andrew P. Meyer,et al.  Are small rural banks vulnerable to local economic downturns , 2001 .

[4]  Douglas W. Diamond,et al.  Liquidity Shortages and Banking Crises , 2002 .

[5]  David C. Wheelock,et al.  Why do Banks Disappear? The Determinants of U.S. Bank Failures and Acquisitions , 2000, Review of Economics and Statistics.

[6]  James W. Kolari,et al.  Trait Recognition: An Alternative Approach to Early Warning Systems in Commercial Banking , 1996 .

[7]  I. Hasan,et al.  Financial Crises and Bank Failures: A Review of Prediction Methods , 2009 .

[8]  Sherrill Shaffer,et al.  Bank Market Structure and Local Employment Growth , 2002 .

[9]  Lawrence J. White,et al.  Déjà Vu All Over Again: The Causes of U.S. Commercial Bank Failures This Time Around , 2011, Journal of Financial Services Research.

[10]  K. Hornik,et al.  Unbiased Recursive Partitioning: A Conditional Inference Framework , 2006 .

[11]  The Case for Bank Failure , 1967, The Journal of Law and Economics.

[12]  James B. Thomson,et al.  Predicting bank failures in the 1980s , 1991 .

[13]  Gary Whalen,et al.  A proportional hazards model of bank failure: an examination of its usefulness as an early warning tool , 1991 .

[14]  Robert Oshinsky,et al.  Troubled Banks: Why Don't They All Fail? , 2005 .

[15]  K. Hornik,et al.  party : A Laboratory for Recursive Partytioning , 2009 .

[16]  Rebel A. Cole,et al.  Predicting Bank Failures: A Comparison of On- and Off-Site Monitoring Systems , 2007 .

[17]  Charles W. Calomiris,et al.  The Origins of Banking Panics: Models, Facts, and Bank Regulation , 1991 .

[18]  James W. Kolari,et al.  Predicting large US commercial bank failures , 2002 .

[19]  W. R. Lane,et al.  An application of the cox proportional hazards model to bank failure , 1986 .

[20]  Rebel A. Cole,et al.  The Role of Commercial Real Estate Investments in the Banking Crisis of 1985-92 , 2008 .