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    • 6. 发明申请
    • PREDICTING LIKELIHOODS OF CONDITIONS BEING SATISFIED USING RECURRENT NEURAL NETWORKS
    • 使用回归神经网络预测条件令人满意
    • US20170032242A1
    • 2017-02-02
    • US15150091
    • 2016-05-09
    • Google Inc.
    • Gregory Sean CorradoIlya SutskeverJeffrey Adgate Dean
    • G06N3/04G06N3/063
    • G06N3/0472G06F19/00G06N3/02G06N3/0427G06N3/0445G06N3/063G16H50/20
    • Methods, systems, and apparatus, including computer programs encoded on computer storage media, for predicting likelihoods of conditions being satisfied using recurrent neural networks. One of the systems is configured to process a temporal sequence comprising a respective input at each of a plurality of time steps and comprises: one or more recurrent neural network layers; one or more logistic regression nodes, wherein each of the logistic regression nodes corresponds to a respective condition from a predetermined set of conditions, and wherein each of the logistic regression nodes is configured to, for each of the plurality of time steps: receive the network internal state for the time step; and process the network internal state for the time step in accordance with current values of a set of parameters of the logistic regression node to generate a future condition score for the corresponding condition for the time step.
    • 方法,系统和装置,包括在计算机存储介质上编码的计算机程序,用于预测利用循环神经网络满足条件的可能性。 系统中的一个被配置为在多个时间步长中的每一个处理包括相应输入的时间序列,并且包括:一个或多个循环神经网络层; 一个或多个逻辑回归节点,其中每个逻辑回归节点对应于来自预定条件集合的相应条件,并且其中每个逻辑回归节点被配置为针对多个时间步骤中的每一个:接收网络 内部状态为时间步; 并根据逻辑回归节点的一组参数的当前值处理时间步长的网络内部状态,以生成时间步长相应条件的未来条件分数。
    • 7. 发明申请
    • ANALYZING HEALTH EVENTS USING RECURRENT NEURAL NETWORKS
    • 使用重复的神经网络分析健康事件
    • US20170032241A1
    • 2017-02-02
    • US14810368
    • 2015-07-27
    • Google Inc.
    • Gregory Sean CorradoJeffrey Adgate DeanIlya Sutskever
    • G06N3/04G06N3/10
    • G06N3/04G06N3/0445G06N3/08G06N3/10G16H50/20G16H50/30
    • Methods, systems, and apparatus, including computer programs encoded on computer storage media, for using recurrent neural networks to analyze health events. One of the methods includes obtaining a first temporal sequence of health events, wherein the first temporal sequence comprises respective health-related data associated with a particular patient at each of a plurality of time steps; processing the first temporal sequence of health events using a recurrent neural network to generate a neural network output for the first temporal sequence; and generating, from the neural network output for the first temporal sequence, health analysis data that characterizes future health events that may occur after a last time step in the temporal sequence.
    • 方法,系统和装置,包括在计算机存储介质上编码的计算机程序,用于使用循环神经网络来分析健康事件。 所述方法之一包括获得健康事件的第一时间序列,其中所述第一时间序列在多个时间步骤中的每一个步骤包括与特定患者相关联的各个健康相关数据; 使用循环神经网络处理健康事件的第一时间序列以生成用于第一时间序列的神经网络输出; 以及从用于第一时间序列的神经网络输出生成表征可能在时间序列中的最后时间步长之后发生的未来健康事件的健康分析数据。
    • 8. 发明授权
    • Predicting likelihoods of conditions being satisfied using recurrent neural networks
    • 使用循环神经网络预测条件满足的可能性
    • US09336482B1
    • 2016-05-10
    • US14810381
    • 2015-07-27
    • Google Inc.
    • Gregory Sean CorradoIlya SutskeverJeffrey Adgate Dean
    • G06N3/02G06N3/04
    • G06N3/0472G06F19/00G06N3/02G06N3/0427G06N3/0445G06N3/063G16H50/20
    • Methods, systems, and apparatus, including computer programs encoded on computer storage media, for predicting likelihoods of conditions being satisfied using recurrent neural networks. One of the systems is configured to process a temporal sequence comprising a respective input at each of a plurality of time steps and comprises: one or more recurrent neural network layers; one or more logistic regression nodes, wherein each of the logistic regression nodes corresponds to a respective condition from a predetermined set of conditions, and wherein each of the logistic regression nodes is configured to, for each of the plurality of time steps: receive the network internal state for the time step; and process the network internal state for the time step in accordance with current values of a set of parameters of the logistic regression node to generate a future condition score for the corresponding condition for the time step.
    • 方法,系统和装置,包括在计算机存储介质上编码的计算机程序,用于预测利用循环神经网络满足条件的可能性。 系统中的一个被配置为在多个时间步长中的每一个处理包括相应输入的时间序列,并且包括:一个或多个循环神经网络层; 一个或多个逻辑回归节点,其中每个逻辑回归节点对应于来自预定条件集合的相应条件,并且其中每个逻辑回归节点被配置为针对多个时间步骤中的每一个:接收网络 内部状态为时间步; 并根据逻辑回归节点的一组参数的当前值处理时间步长的网络内部状态,以生成时间步长相应条件的未来条件分数。
    • 9. 发明申请
    • Classifying Data Objects
    • 分类数据对象
    • US20150178383A1
    • 2015-06-25
    • US14576907
    • 2014-12-19
    • Google Inc.
    • Gregory Sean CorradoTomas MikolovSamy BengioYoram SingerJonathon ShlensAndrea L. FromeJeffrey Adgate DeanMohammad Norouzi
    • G06F17/30
    • Methods, systems, and apparatus, including computer programs encoded on computer storage media, for classifying data objects. One of the methods includes obtaining data that associates each term in a vocabulary of terms with a respective high-dimensional representation of the term; obtaining classification data for a data object, wherein the classification data includes a respective score for each of a plurality of categories, and wherein each of the categories is associated with a respective category label; computing an aggregate high-dimensional representation for the data object from high-dimensional representations for the category labels associated with the categories and the respective scores; identifying a first term in the vocabulary of terms having a high-dimensional representation that is closest to the aggregate high-dimensional representation; and selecting the first term as a category label for the data object.
    • 方法,系统和装置,包括在计算机存储介质上编码的计算机程序,用于对数据对象进行分类。 其中一种方法包括获得将术语词汇中的每个术语与该术语的相应高维表示相关联的数据; 获取数据对象的分类数据,其中分类数据包括多个类别中的每一个的相应分数,并且其中每个类别与相应的分类标签相关联; 从与类别和相应分数相关联的类别标签的高维表示中计算数据对象的聚合高维表示; 识别具有最接近聚合高维表示的高维表示的术语词汇表中的第一项; 并选择第一项作为数据对象的类别标签。