Financial distress prediction using a corrected feature selection measure and gradient boosted decision tree

2021 ◽  
pp. 116202
Author(s):  
Hongyi Qian ◽  
Baohui Wang ◽  
Minghe Yuan ◽  
Songfeng Gao ◽  
You Song
Mathematics ◽  
2020 ◽  
Vol 8 (8) ◽  
pp. 1275
Author(s):  
Dawen Yan ◽  
Guotai Chi ◽  
Kin Keung Lai

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.


2020 ◽  
Vol 2020 ◽  
pp. 1-11
Author(s):  
Sen Zeng ◽  
Yaqin Li ◽  
Wanjun Yang ◽  
Yanru Li

Classification learning is a very important issue in machine learning, which has been widely used in the field of financial distress warning. Some researches show that the prediction model framework based on sparse algorithm has better performance than the traditional model. In this paper, we explore the financial distress prediction based on grouping sparsity. Feature selection of sparse algorithm plays an important role in classification learning, because many redundant and irrelevant features will degrade performance. A good feature selection algorithm would reduce computational complexity and improve classification accuracy. In this study, we propose an algorithm for feature selection classification prediction based on feature attributes and data source grouping. The existing financial distress prediction model usually only uses the data from financial statement and ignores the timeliness of company sample in practice. Therefore, we propose a corporate financial distress prediction model that is better in line with the practice and combines the grouping sparse principal component analysis of financial data, corporate governance characteristics, and market transaction data with support vector machine. Experimental results show that this method can improve the prediction efficiency of financial distress with fewer characteristic variables.


2014 ◽  
Vol 41 (5) ◽  
pp. 2472-2483 ◽  
Author(s):  
Fengyi Lin ◽  
Deron Liang ◽  
Ching-Chiang Yeh ◽  
Jui-Chieh Huang

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