Multistage learner for efficiently boosting large datasets
    1.
    发明授权
    Multistage learner for efficiently boosting large datasets 有权
    用于有效提升大型数据集的多级学习者

    公开(公告)号:US09418343B2

    公开(公告)日:2016-08-16

    申请号:US14142977

    申请日:2013-12-30

    Applicant: Google Inc.

    CPC classification number: G06N99/005

    Abstract: Implementations of the disclosed subject matter provide methods and systems for using a multistage learner for efficiently boosting large datasets in a machine learning system. A method may include obtaining a first plurality of examples for a machine learning system and selecting a first point in time. Next, a second point in time occurring subsequent to the first point in time may be selected. The machine learning system may be trained using m of the first plurality of examples. Each of the m examples may include a feature initially occurring after the second point in time. In addition, the machine learning system may be trained using n of the first plurality of examples, and each of the n examples may include a feature initially occurring after the first point in time.

    Abstract translation: 所公开的主题的实现提供了使用多级学习者有效地提升机器学习系统中的大型数据集的方法和系统。 方法可以包括获得机器学习系统的第一多个示例并选择第一时间点。 接下来,可以选择在第一时间点之后发生的第二时间点。 可以使用第一多个示例的m来训练机器学习系统。 m个示例中的每一个可以包括最初在第二时间点之后发生的特征。 此外,可以使用第一多个示例中的n来训练机器学习系统,并且n个示例中的每个示例可以包括最初在第一时间点之后发生的特征。

    Label Consistency for Image Analysis
    2.
    发明申请
    Label Consistency for Image Analysis 有权
    图像分析的标签一致性

    公开(公告)号:US20150178596A1

    公开(公告)日:2015-06-25

    申请号:US14135816

    申请日:2013-12-20

    Applicant: Google Inc.

    Abstract: Systems and techniques are disclosed for labeling objects within an image. The objects may be labeled by selecting an option from a plurality of options such that each option is a potential label for the object. An option may have an option score associated with. Additionally, a relation score may be calculated for a first option and a second option corresponding to a second object in an image. The relation score may be based on a frequency, probability, or observance corresponding to the co-occurrence of text associated with the first option and the second option in a text corpus such as the World Wide Web. An option may be selected as a label for an object based on a global score calculated based at least on an option score and relation score associated with the option.

    Abstract translation: 公开了用于标记图像内的对象的系统和技术。 可以通过从多个选项中选择选项来标记对象,使得每个选项是对象的潜在标签。 选项可能具有与之相关联的选项分数。 另外,可以针对与图像中的第二对象相对应的第一选项和第二选项来计算关系得分。 关系得分可以基于与诸如万维网的文本语料库中与第一选项和第二选项相关联的文本的共现对应的频率,概率或符号。 可以基于至少基于与选项相关联的期权分数和关系分数计算的全局分数来选择对象的标签作为标签。

    TEMPLATE REGULARIZATION FOR GENERALIZATION OF LEARNING SYSTEMS
    4.
    发明申请
    TEMPLATE REGULARIZATION FOR GENERALIZATION OF LEARNING SYSTEMS 有权
    用于学习系统普遍化的模式定期

    公开(公告)号:US20150186794A1

    公开(公告)日:2015-07-02

    申请号:US14142970

    申请日:2013-12-30

    Applicant: Google Inc.

    CPC classification number: G06N99/005

    Abstract: Systems and techniques are disclosed for training a machine learning model based on one or more regularization penalties associated with one or more features. A template having a lower regularization penalty may be given preference over a template having a higher regularization penalty. A regularization penalty may be determined based on domain knowledge. A restrictive regularization penalty may be assigned to a template based on determining that a template occurrence is below a stability threshold and may be modified if the template occurrence meets or exceeds the stability threshold.

    Abstract translation: 公开了用于基于与一个或多个特征相关联的一个或多个正则化惩罚来训练机器学习模型的系统和技术。 具有较低正则化罚分的模板可以优先于具有较高正则化惩罚的模板。 正规化惩罚可以根据领域知识来确定。 基于确定模板出现低于稳定性阈值,可以将限制性正则化惩罚分配给模板,并且如果模板发生满足或超过稳定性阈值,则可以对模板进行修改。

    LABEL CONSISTENCY FOR IMAGE ANALYSIS
    5.
    发明申请

    公开(公告)号:US20170220906A1

    公开(公告)日:2017-08-03

    申请号:US15488041

    申请日:2017-04-14

    Applicant: Google Inc.

    Abstract: Systems and techniques are disclosed for labeling objects within an image. The objects may be labeled by selecting an option from a plurality of options such that each option is a potential label for the object. An option may have an option score associated with. Additionally, a relation score may be calculated for a first option and a second option corresponding to a second object in an image. The relation score may be based on a frequency, probability, or observance corresponding to the co-occurrence of text associated with the first option and the second option in a text corpus such as the World Wide Web. An option may be selected as a label for an object based on a global score calculated based at least on an option score and relation score associated with the option.

    Template regularization for generalization of learning systems
    6.
    发明授权
    Template regularization for generalization of learning systems 有权
    学习系统泛化的模板正则化

    公开(公告)号:US09390382B2

    公开(公告)日:2016-07-12

    申请号:US14142970

    申请日:2013-12-30

    Applicant: Google Inc.

    CPC classification number: G06N99/005

    Abstract: Systems and techniques are disclosed for training a machine learning model based on one or more regularization penalties associated with one or more features. A template having a lower regularization penalty may be given preference over a template having a higher regularization penalty. A regularization penalty may be determined based on domain knowledge. A restrictive regularization penalty may be assigned to a template based on determining that a template occurrence is below a stability threshold and may be modified if the template occurrence meets or exceeds the stability threshold.

    Abstract translation: 公开了用于基于与一个或多个特征相关联的一个或多个正则化惩罚来训练机器学习模型的系统和技术。 具有较低正则化罚分的模板可以优先于具有较高正则化惩罚的模板。 正规化惩罚可以根据领域知识来确定。 基于确定模板出现低于稳定性阈值,可以将限制性正则化惩罚分配给模板,并且如果模板发生满足或超过稳定性阈值,则可以对模板进行修改。

    Multistage Learner for Efficiently Boosting Large Datasets
    7.
    发明申请
    Multistage Learner for Efficiently Boosting Large Datasets 有权
    多级学习者有效提升大型数据集

    公开(公告)号:US20150186795A1

    公开(公告)日:2015-07-02

    申请号:US14142977

    申请日:2013-12-30

    Applicant: Google Inc.

    CPC classification number: G06N99/005

    Abstract: Implementations of the disclosed subject matter provide methods and systems for using a multistage learner for efficiently boosting large datasets in a machine learning system. A method may include obtaining a first plurality of examples for a machine learning system and selecting a first point in time. Next, a second point in time occurring subsequent to the first point in time may be selected. The machine learning system may be trained using m of the first plurality of examples. Each of the m examples may include a feature initially occurring after the second point in time. In addition, the machine learning system may be trained using n of the first plurality of examples, and each of the n examples may include a feature initially occurring after the first point in time.

    Abstract translation: 所公开的主题的实现提供了使用多级学习者有效地提升机器学习系统中的大型数据集的方法和系统。 方法可以包括获得机器学习系统的第一多个示例并选择第一时间点。 接下来,可以选择在第一时间点之后发生的第二时间点。 可以使用第一多个示例的m来训练机器学习系统。 m个示例中的每一个可以包括最初在第二时间点之后发生的特征。 此外,可以使用第一多个示例中的n来训练机器学习系统,并且n个示例中的每个示例可以包括最初在第一时间点之后发生的特征。

    Using Template Exploration for Large-Scale Machine Learning

    公开(公告)号:US20200151614A1

    公开(公告)日:2020-05-14

    申请号:US14106900

    申请日:2013-12-16

    Applicant: Google Inc.

    Abstract: Systems and techniques are provided for template exploration in a large-scale machine learning system. A method may include obtaining multiple base templates, each base template comprising multiple features. A template performance score may be obtained for each base template and a first base template may be selected from among the multiple base templates based on the template performance score of the first base template. Multiple cross-templates may be constructed by generating a cross-template of the selected first base template and each of the multiple base templates. Performance of a machine learning model may be tested based on each cross-template to generate a cross-template performance score for each of the cross-templates. A first cross-template may be selected from among the multiple cross-templates based on the cross-template performance score of the cross-template. Accordingly, the first cross-template may be added to the machine learning model.

    Efficient locking of large data collections
    10.
    发明授权
    Efficient locking of large data collections 有权
    高效锁定大型数据收集

    公开(公告)号:US09569481B1

    公开(公告)日:2017-02-14

    申请号:US14101611

    申请日:2013-12-10

    Applicant: Google Inc.

    CPC classification number: G06F17/30371

    Abstract: The present disclosure provides systems and techniques for efficient locking of datasets in a database when updates to a dataset may be delayed. A method may include accumulating a plurality of updates to a first set of one or more values associated with one or more features. The first set of one or more values may be stored within a first database column. Next, it may be determined that a first database column update aggregation rule is satisfied. A lock assigned to at least a portion of at least a first database column may be acquired. Accordingly, one or more values in the first set within the first database column may be updated based on the plurality of updates. In an implementation, the first set of one or more values may be associated with the first lock.

    Abstract translation: 本公开提供了用于在数据库的更新可能被延迟时有效地将数据集锁定在数据库中的系统和技术。 方法可以包括将多个更新累积到与一个或多个特征相关联的一个或多个值的第一组中。 第一组一个或多个值可以存储在第一数据库列中。 接下来,可以确定满足第一数据库列更新聚合规则。 可以获取分配给至少第一数据库列的至少一部分的锁。 因此,可以基于多个更新来更新第一数据库列中的第一集合中的一个或多个值。 在实现中,第一组一个或多个值可以与第一锁相关联。

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