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Model of Investment Risk Prediction Based on Neural Network and Data Mining Technique for Construction Project

机译:基于神经网络的投资风险预测模型及建设项目的数据挖掘技术

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The operating status of a construction project is disclosed periodically in investment risks. As a result, investors usually only get information about the investment risks, an employer may be in after the formal financial statement has been published. If the employer executives intentionally package financial statements with the purpose of hiding the actual status of the constructive project, then investors will have even less chance of obtaining the real financial information. To improve the accuracy of the investment risk prediction, risk ratios, non-risk ratios, and factor analysis had been used to extract adaptable variables. Moreover, the neural network and data mining technique were used to build the investment risk prediction model. The empirical experiment with a total of risk and non-risk ratios and projects as the initial samples obtained a satisfactory result, which testifies for the feasibility and validity of our proposed methods for the investment risks prediction of constructive project.
机译:建筑项目的运营状况定期在投资风险中披露。因此,投资者通常只获取有关投资风险的信息,雇主可能会在正式财务报表发表之后。如果雇主高管故意以掩盖建设性项目的实际地位的目的在意包装财务报表,那么投资者将略低于获得真实财务信息的机会。为了提高投资风险预测,风险比,非风险比和因子分析的准确性,用于提取适应性变量。此外,神经网络和数据挖掘技术用于构建投资风险预测模型。由于初始样本的初始风险和非风险比和项目的经验实验获得了令人满意的结果,这证明了我们建议的建设性项目投资风险预测方法的可行性和有效性。

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