首页> 外国专利> GENERATING A SELECTABLE SUGGESTION USING A PROVISIONAL MACHINE LEARNING MODEL WHEN USE OF A DEFAULT SUGGESTION MODEL IS INCONSEQUENTIAL

GENERATING A SELECTABLE SUGGESTION USING A PROVISIONAL MACHINE LEARNING MODEL WHEN USE OF A DEFAULT SUGGESTION MODEL IS INCONSEQUENTIAL

机译:当使用默认建议模型不合理时,使用临时机器学习模型生成可选建议

摘要

Implementations set forth herein relate to selectively relying on additional suggestion model(s) when generating selectable suggestions, while also maintaining access to a default suggestion model. The selectable suggestions can be generated using one or more additional multi-domain machine learning (ML) models, which can be optionally available to the client application, regardless of whether a default suggestion model remains useful for generating suitable suggestions. In some implementations, as the client application employs various additional multi-domain ML models, a particular model can be identified as improving suggestions for the client application, at least based on user feedback and/or other data. The particular model can then be selected to replace and/or supplement the default suggestion model, in order to provide more accurate suggestions that, when selected, initialize actions that can preserve time and computational resources.
机译:本文所述的实现涉及在生成可选建议时选择性地依赖额外的建议模型,同时还保持对默认建议模型的访问。可以使用一个或多个额外的多域机器学习(ML)模型生成可选择的建议,该模型可以选择性地用于客户端应用程序,而不管默认建议模型是否仍然适用于生成合适的建议。在一些实现中,由于客户端应用程序使用各种额外的多域ML模型,因此可以将特定模型识别为对客户端应用程序的改进建议,至少基于用户反馈和/或其他数据。然后可以选择特定模型来替换和/或补充默认建议模型,以便提供更准确的建议,当选择该模型时,初始化可以节省时间和计算资源的操作。

著录项

  • 公开/公告号US2022147775A1

    专利类型

  • 公开/公告日2022-05-12

    原文格式PDF

  • 申请/专利权人 GOOGLE LLC;

    申请/专利号US202017252218

  • 发明设计人 KEUN SOO YIM;

    申请日2020-05-29

  • 分类号G06K9/62;H04L51/046;H04L51/02;G06N20/20;

  • 国家 US

  • 入库时间 2022-08-25 00:56:46

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