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Training tree-based machine-learning modeling algorithms for predicting outputs and generating explanatory data

机译:基于训练树的机器学习建模算法,用于预测输出和生成解释性数据

摘要

Certain aspects involve training tree-based machine-learning models for computing predicted responses and generating explanatory data for the models. For example, independent variables having relationships with a response variable are identified. Each independent variable corresponds to an action or observation for an entity. The response variable has outcome values associated with the entity. Splitting rules are used to generate the tree-based model, which includes decision trees for determining relationships between independent variables and a predicted response associated with the response variable. The tree-based model is iteratively adjusted to enforce monotonicity with respect to representative response values of the terminal nodes. For instance, one or more decision trees are adjusted such that one or more representative response values are modified and a monotonic relationship exists between each independent variable and the response variable. The adjusted model is used to output explanatory data indicating relationships between independent variable changes and response variable changes.
机译:某些方面涉及训练基于树的机器学习模型,用于计算预测的响应并为模型生成解释性数据。例如,识别与响应变量具有关系的自变量。每个独立变量对应于实体的一个动作或观察。响应变量具有与实体关联的结果值。拆分规则用于生成基于树的模型,该模型包括决策树,用于确定独立变量和与响应变量关联的预测响应之间的关系。对基于树的模型进行迭代调整,以相对于终端节点的代表响应值实现单调性。例如,调整一个或多个决策树,以便修改一个或多个代表性响应值,并且在每个自变量与响应变量之间存在单调关系。调整后的模型用于输出说明数据,该数据说明自变量变化和响应变量变化之间的关系。

著录项

  • 公开/公告号AU2017437537A1

    专利类型

  • 公开/公告日2020-05-07

    原文格式PDF

  • 申请/专利权人 EQUIFAX INC.;

    申请/专利号AU20170437537

  • 发明设计人 JORDAN LEWIS;TURNER MATTHEW;ANTONY FINTO;

    申请日2017-10-30

  • 分类号G06N99;

  • 国家 AU

  • 入库时间 2022-08-21 11:12:49

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