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OPTIMIZING AUTOMATED MODELING ALGORITHMS FOR RISK ASSESSMENT AND GENERATION OF EXPLANATORY DATA

机译:优化风险评估的自动建模算法和解释性数据的产生

摘要

Certain aspects involve optimizing neural networks or other models for assessing risks and generating explanatory data regarding predictor variables used in the model. In one example, a system identifies predictor variables. The system generates a neural network for determining a relationship between each predictor variable and a risk indicator. The system performs a factor analysis on the predictor variables to determine common factors. The system iteratively adjusts the neural network so that (i) a monotonic relationship exists between each common factor and the risk indicator and (ii) a respective variance inflation factor for each common factor is sufficiently low. Each variance inflation factor indicates multicollinearity among the common factors. The adjusted neural network can be used to generate explanatory indicating relationships between (i) changes in the risk indicator and (ii) changes in at least some common factors.
机译:某些方面涉及优化神经网络或其他模型,用于评估风险并生成关于模型中使用的预测变量的解释性数据。在一个示例中,系统识别预测变量。该系统生成神经网络,用于确定每个预测变量与风险指示符之间的关系。系统对预测器变量进行因子分析以确定常见因素。该系统迭代地调整神经网络,使得(i)每个公共因素和风险指示符之间存在单调关系,并且每个普通因子的相应方差充气因子足够低。每个方差通胀因子表明常见因素之间的多色性。调整后的神经网络可用于生成解释性指示(i)在风险指标中的变化之间的关系和(ii)至少一些常见因素的变化。

著录项

  • 公开/公告号US2021224673A1

    专利类型

  • 公开/公告日2021-07-22

    原文格式PDF

  • 申请/专利权人 EQUIFAX INC.;

    申请/专利号US202117221217

  • 申请日2021-04-02

  • 分类号G06N5/04;G06N20;G06N3/04;G06N3/08;G06Q40/02;

  • 国家 US

  • 入库时间 2022-08-24 20:03:31

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