Predicting corporate failure: The GRASP-LOGIT model

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Abstract

Predicting corporate failure is an important problem in management science. This study tests a new method for predicting corporate failure on a sample of Spanish firms. A GRASP (Greedy Randomized Adaptive Search Procedure) strategy is proposed to use a feature selection algorithm to select a subset of available financial ratios, as a preliminary step in estimating a model of logistic regression for predicting corporate failure. Selecting only a subset of variables (financial ratios) reduces the costs of data acquisition, increases prediction accuracy by excluding irrelevant variables, and provides insight into the nature of the prediction problem allowing a better understanding of the final classification model. The proposed algorithm, that it is named GRASP-LOGIT algorithm, performs better than a simple logistic regression in that it reaches the same level of forecasting ability with fewer accounting ratios, leading to a better interpretation of the model and therefore to a better understanding of the failure process.

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APA

Silvia, C. Y., Laura, N. L., & JoaquínAntonio, P. B. (2018). Predicting corporate failure: The GRASP-LOGIT model. Revista de Metodos Cuantitativos Para La Economia y La Empresa, 26, 294–314. https://doi.org/10.46661/revmetodoscuanteconempresa.2810

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