Abstract

In this paper, we propose a new framework of a financial early warning system through combining the unconstrained distributed lag model (DLM) and widely used financial distress prediction models such as the logistic model and the support vector machine (SVM) for the purpose of improving the performance of an early warning system for listed companies in China. We introduce simultaneously the 3~5-period-lagged financial ratios and macroeconomic factors in the consecutive time windows t − 3, t − 4 and t − 5 to the prediction models; thus, the influence of the early continued changes within and outside the company on its financial condition is detected. Further, by introducing lasso penalty into the logistic-distributed lag and SVM-distributed lag frameworks, we implement feature selection and exclude the potentially redundant factors, considering that an original long list of accounting ratios is used in the financial distress prediction context. We conduct a series of comparison analyses to test the predicting performance of the models proposed by this study. The results show that our models outperform logistic, SVM, decision tree and neural network (NN) models in a single time window, which implies that the models incorporating indicator data in multiple time windows convey more information in terms of financial distress prediction when compared with the existing singe time window models.

Highlights

  • Over the last four decades, models and methods for the prediction of corporate financial distress have attracted considerable interest among academics as well as practitioners

  • We provide the algorithm framework of alternating direction method of multipliers (ADMM) that yields the global optimum for convex and the non-smooth optimization problem to obtain the optimal estimation for the coefficients

  • It cannot be found that Consumer Price Index (CPI) growth has a significant influence on the financial distress risk

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Summary

Introduction

Over the last four decades, models and methods for the prediction of corporate financial distress have attracted considerable interest among academics as well as practitioners. Bankruptcy is one of the most commonly used outcomes of financial distress of a company [5]. It is generally agreed on that financial failure leads to substantive weakening of profitability of the company over time, but it is feasible that a financially distressed firm may not change its formal status to bankrupt [9]. The other studies that concern the similar accounting ratios in financial distress prediction can be found in [23,24]. The current-liabilities-to-current-assets ratio used to measure liquidity (see [22,25]) and the total-liabilities-to-total-assets ratio used to measure the degree of indebtedness of a firm (see [22,25,26])

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