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Hierarchical feature selection and predictive modeling for estimating performance metrics

机译:分层特征选择和预测模型,用于估算性能指标

摘要

A bid management system generates estimated performance metrics at the bid unit level to facilitate bid optimization. The bid management system includes a hierarchical feature selection and prediction approach. Feature selection is performed by aggregating historical performance metrics to a higher hierarchical level and testing features for statistical significance. Features for which a significance level satisfies a significance threshold are selected for prediction analysis. The prediction analysis uses a statistical model based on selected features to generate estimated performance metrics at the bid unit level. In some implementations, the prediction analysis uses a hierarchical Bayesian smoothing method in which estimated performance metrics are calculated at the bid unit level using a posterior probability distribution derived from a prior probability distribution determined based on aggregated performance metrics and a likelihood function that takes into account historical performance metrics from the bid unit level based on the selected features.
机译:出价管理系统在出价单位级别生成估计的性能指标,以方便优化。 BID管理系统包括分层特征选择和预测方法。通过将历史性能指标汇总到更高的层级和测试特征来执行特征选择,以进行统计显着性。选择显着性水平满足显着性阈值的特征用于预测分析。预测分析使用基于所选择的特征的统计模型来在出价单位上生成估计的性能度量。在一些实现中,预测分析使用分层贝叶斯平滑方法,其中使用从基于聚合性能度量的概要分布和考虑的似然函数所确定的先前概率分布的后验概率分布来计算估计的性能度量。基于所选功能的出价单位级别的历史性能指标。

著录项

  • 公开/公告号US11080764B2

    专利类型

  • 公开/公告日2021-08-03

    原文格式PDF

  • 申请/专利权人 ADOBE INC.;

    申请/专利号US201715458484

  • 申请日2017-03-14

  • 分类号G06Q30/02;G06N7;G06F16/951;G06F16/245;G06Q30/08;

  • 国家 US

  • 入库时间 2022-08-24 20:18:09

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