基于贝叶斯概率方法的建筑企业违约预测

Sung-Moon Hong, Jaeyeon Hwang, Tae-Whan Kwon, Ju-Hyung Kim, Jae-Jun Kim
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引用次数: 0

摘要

作为总承建商的建设企业的破产不仅会导致客户因不能履行建设合同而蒙受损失,而且会对建设企业和供应商的财务健全性产生负面影响。建筑业具有现金流财务特征,即接受项目并根据施工进度获得付款。因此,如果在工程进行过程中出现资不抵债的情况,就会导致财政损失。因此,建设企业的预测非常重要。韩国建设企业的破产预测通常是通过90年代初在美国开发的KMV (Kealhofer McQuown和Vasicek)公司的KMV模型进行的,但该模型是根据一般企业和银行的信用风险评估开发的,因此对建设企业的预测不足。此外,由于分析的公司数量和数据不足,KMV值的破产概率预测性能不断受到质疑。因此,为了解决这类问题,需要将贝叶斯概率方法与现有的破产预测概率模型相结合。这是因为如果可以适当地预测贝叶斯统计的先验概率,那么即使缺乏数据,也可以通过确保证据的条件性来预测可靠的后验概率。因此,本研究将利用贝叶斯概率法与现有的破产预测概率模型进行预期违约频率(Expected Default Frequency, EDF)的度量,并将结果与现有模型的EDF进行比较,预测其准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting Default of Construction Companies Using Bayesian Probabilistic Approach
Insolvency of construction companies that play the role of main contractors can lead to clients’ losses due to non-fulfillment of construction contracts, and it can have negative effects on the financial soundness of construction companies and suppliers. The construction industry has the cash flow financial characteristic of receiving a project and getting payment based on the progress of the construction. As such, insolvency during project progress can lead to financial losses, which is why the prediction of construction companies is so important. The prediction of insolvency of Korean construction companies are often made through the KMV model from the KMV (Kealhofer McQuown and Vasicek) Company developed in the U.S. during the early 90s, but this model is insufficient in predicting construction companies because it was developed based on credit risk assessment of general companies and banks. In addition, the predictive performance of KMV value’s insolvency probability is continuously being questioned due to lack of number of analyzed companies and data. Therefore, in order to resolve such issues, the Bayesian Probabilistic Approach is to be combined with the existing insolvency predictive probability model. This is because if the Prior Probability of Bayesian statistics can be appropriately predicted, reliable Posterior Probability can be predicted through ensured conditionality on the evidence despite the lack of data. Thus, this study is to measure the Expected Default Frequency (EDF) by utilizing the Bayesian Probabilistic Approach with the existing insolvency predictive probability model and predict the accuracy by comparing the result with the EDF of the existing model.
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