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Business Failure Prediction of Construction Contractors Using a LSTM RNN with Accounting, Construction Market, and Macroeconomic Variables

机译:使用具有会计,建筑市场和宏观经济变量的LSTM RNN预测建筑承包商的业务失败

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In the construction industry, predicting business failure and providing early warnings are critical challenges in the prevention of business failure chain reactions. Most relevant studies have developed models that predicted the probability of business failure within 1 year using financial ratios. Although a few studies have attempted to use nonfinancial information, they did not provide empirical evidence that this addition can improve the prediction performance of a model. To address these problems, this study proposed a model that used not only accounting variables but also construction market and macroeconomic variables to predict failure probability from 1 to 3 years. We examined the effects of combinations of these variables on the business failure prediction performance of construction contractors in the United States and compared the effects of combinations of these variables between three models that predict business failure within 1, 2, and 3 years. This study developed a prediction model using a long short-term memory (LSTM) recurrent neural network (RNN), which is a deep-learning algorithm. The results showed that the prediction model using both the construction market and macroeconomic variables had approximately 2%, 3%, and 4% higher prediction performance compared with that using only accounting variables when predicting within 1, 2, and 3 years, respectively. This means that the business failure prediction model had superior prediction performance from a long-term perspective when the construction market and macroeconomic variables were used in addition to accounting variables. The results of this study are expected to provide empirical evidence regarding the effect of input variable selection on the prediction performance for each prediction period and useful references for improving performance of predicting business failure of construction contractors.
机译:在建筑行业中,预测业务失败并提供预警是防止业务失败链反应的关键挑战。大多数相关研究已经开发出了使用财务比率来预测一年内业务倒闭可能性的模型。尽管一些研究尝试使用非财务信息,但是他们没有提供经验证据,证明这种添加可以改善模型的预测性能。为了解决这些问题,本研究提出了一个模型,该模型不仅使用会计变量,还使用建筑市场和宏观经济变量来预测1至3年的失败概率。我们研究了这些变量组合对美国建筑承包商营业失败预测表现的影响,并比较了这些变量组合在预测1年,2年和3年内营业失败的三个模型之间的影响。这项研究开发了一种使用长短期记忆(LSTM)递归神经网络(RNN)的预测模型,这是一种深度学习算法。结果表明,与仅使用会计变量进行预测的1年,2年和3年相比,同时使用建筑市场和宏观经济变量的预测模型的预测性能分别高出约2%,3%和4%。这意味着从长期的角度来看,当使用建筑市场和宏观经济变量以及会计变量时,业务失败预测模型具有出色的预测性能。预期该研究的结果将提供有关输入变量选择对​​每个预测期的预测性能的影响的经验证据,并为改善建筑承包商的业务失败预测性能提供有用的参考。

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