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A Novel Approach for Reducing Attributes and Its Application to Small Enterprise Financing Ability Evaluation

机译:属性约简的新方法及其在小企业融资能力评估中的应用

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Attribute reduction is viewed as a kind of preprocessing steps for reducing large dimensionality in data mining of all complex systems. A great deal of researchers have proposed various approaches to reduce attributes or select key features in multicriteria decision making evaluation. In practice, the existing approaches for attribute reduction focused on improving the classification accuracy or saving the cost of computational time, without considering the influence of the reduction results on the original data set. To help address this gap, we develop an advanced novel attribute reduction approach combining Pearson correlation analysis with test significance discrimination for the screening and identification of key characteristics related to the original data set. The proposed model has been verified using the financing ability evaluation data of 713 small enterprises of a city commercial bank in China. And the experimental results show that the proposed reduction model is efficient and effective. Moreover, our experimental findings help to locate the qualified partners and alleviate the difficulties faced by enterprises when applying loan.
机译:属性约简被视为减少所有复杂系统数据挖掘中的大维数的一种预处理步骤。许多研究人员提出了多种方法来减少多准则决策评估中的属性或选择关键特征。实际上,现有的属性约简方法侧重于提高分类精度或节省计算时间成本,而没有考虑约简结果对原始数据集的影响。为了帮助解决这一差距,我们开发了一种先进的新颖的属性约简方法,将Pearson相关分析与测试显着性鉴别相结合,用于筛选和识别与原始数据集相关的关键特征。利用中国某城市商业银行的713家小企业的融资能力评估数据对所提模型进行了验证。实验结果表明,提出的约简模型是有效的。此外,我们的实验结果有助于找到合格的合作伙伴,并减轻企业在申请贷款时面临的困难。

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