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Business Failure Prediction with LSTM RNN in the Construction Industry

机译:LSTM RNN在建筑行业中的业务失败预测

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Due to the characteristics of the construction projects, construction contractors are often vulnerable to business failure compared to those in other industries. Thus, predicting the potential business failure of construction contractors has been a crucial issue. This study proposes a model that predicts business failure using long short term memory recurrent neural network (LSTM RNN), which is one of the deep-learning algorithms. The proposed model uses not only a set of accounting data but also proxies for the construction market condition and the macroeconomic environment as input variables. The prediction performance of the proposed model is examined by varying the combination of input variable groups. The results showed that adding construction market and macroeconomic variables to accounting variables could increase the performance of business failure prediction. It was also found that macroeconomic variables had a slightly higher impact on the business failure prediction than construction market variables. The results of this study are expected to be useful references for both researchers and practitioners to develop business failure prediction models of construction contractors.
机译:由于建筑项目的特点,与其他行业的承包商相比,建筑承包商通常容易遭受商业失败的影响。因此,预测建筑承包商的潜在业务失败已成为至关重要的问题。这项研究提出了一种使用长期短期记忆循环神经网络(LSTM RNN)预测业务失败的模型,这是深度学习算法之一。提出的模型不仅使用一组会计数据,还使用建筑市场条件和宏观经济环境的代理作为输入变量。通过改变输入变量组的组合来检验所提出模型的预测性能。结果表明,将建筑市场和宏观经济变量添加到会计变量中可以提高企业倒闭预测的性能。还发现,宏观经济变量对企业倒闭预测的影响略高于建筑市场变量。预期这项研究的结果将为研究人员和从业人员开发建筑承包商的业务失败预测模型提供有用的参考。

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