首页> 外国专利> HANDLING CATEGORICAL FIELD VALUES IN MACHINE LEARNING APPLICATIONS

HANDLING CATEGORICAL FIELD VALUES IN MACHINE LEARNING APPLICATIONS

机译:在机器学习应用程序中处理分类场值

摘要

Disclosed are systems and methods for handling categorical field values in machine learning applications, and particularly neural networks. Categorical field values are generally transformed into vectors prior to being passed to a neural network. However, low-dimensionality vectors limit the ability of the network to understand correlations between contextually, semantically, or characteristically similar values. High-dimensionality vectors, in contrast, can overwhelm neural networks, causing the network to seek correlations with respect to individual dimensional values, which correlations may be illusory. The present disclosure relates to a hierarchical neural network that includes a main network as well as one or more auxiliary networks. Categorical field values are processed in an auxiliary network, to reduce a dimensionality of the value before being processed by the main network. This enables contextual, semantic, and characteristic correlations to be identified without overwhelming the network as a whole.
机译:公开了用于在机器学习应用,特别是神经网络中处理分类字段值的系统和方法。通常将分类场值转换为向量,然后再传递给神经网络。但是,低维向量限制了网络理解上下文,语义或特征相似值之间的相关性的能力。相比之下,高维向量会使神经网络不堪重负,导致网络寻求与各个维值相关的关联,这种关联可能是虚幻的。本公开涉及一种分层神经网络,其包括主网络以及一个或多个辅助网络。分类字段值在辅助网络中进行处理,以减小该值的维数,然后再由主网络进行处理。这使上下文,语义和特征相关性得以识别,而不会淹没整个网络。

著录项

  • 公开/公告号WO2020185741A1

    专利类型

  • 公开/公告日2020-09-17

    原文格式PDF

  • 申请/专利权人 EXPEDIA INC.;

    申请/专利号WO2020US21827

  • 发明设计人 BHASKAR NITIKA;KASHEFI OMID;

    申请日2020-03-10

  • 分类号G06N3/08;G06F21;G06N3/02;H04L9/32;

  • 国家 WO

  • 入库时间 2022-08-21 11:09:27

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