首页> 外国专利> GENERATING HYPER-PARAMETERS FOR MACHINE LEARNING MODELS USING MODIFIED BAYESIAN OPTIMIZATION BASED ON ACCURACY AND TRAINING EFFICIENCY

GENERATING HYPER-PARAMETERS FOR MACHINE LEARNING MODELS USING MODIFIED BAYESIAN OPTIMIZATION BASED ON ACCURACY AND TRAINING EFFICIENCY

机译:基于精度和培训效率,使用改进的贝叶斯优化产生机器学习模型的超参数

摘要

The present disclosure relates to systems, methods, and non-transitory computer readable media for selecting hyper-parameter sets by utilizing a modified Bayesian optimization approach based on a combination of accuracy and training efficiency metrics of a machine learning model. For example, the disclosed systems can fit accuracy regression and efficiency regression models to observed metrics associated with hyper-parameter sets of a machine learning model. The disclosed systems can also implement a trade-off acquisition function that implements an accuracy-training efficiency balance metric to explore the hyper-parameter feature space and select hyper-parameters for training the machine learning model considering a balance between accuracy and training efficiency.
机译:本公开涉及用于通过利用机器学习模型的精度和培训效率度量的组合利用改进的贝叶斯优化方法来选择超参数集的系统,方法和非暂时性计算机可读介质。 例如,所公开的系统可以拟合精度回归和效率回归模型,以观察与机器学习模型的超参数集相关联的度量。 所公开的系统还可以实现权衡采集功能,该函数实现精度训练效率平衡度量,以探索超参数特征空间,并选择考虑到精度和训练效率之间的平衡来训练机器学习模型的超参数。

著录项

  • 公开/公告号US2021295191A1

    专利类型

  • 公开/公告日2021-09-23

    原文格式PDF

  • 申请/专利权人 ADOBE INC.;

    申请/专利号US202016825531

  • 发明设计人 TRUNG BUI;LIDAN WANG;FRANCK DERNONCOURT;

    申请日2020-03-20

  • 分类号G06N7;G06N20/20;G06N20/10;G06N3/08;G06K9/62;

  • 国家 US

  • 入库时间 2022-08-24 21:12:28

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