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    • 5. 发明申请
    • PROBABILISTIC RECOMMENDATION OF AN ITEM
    • 项目概况建议
    • US20110184806A1
    • 2011-07-28
    • US12694903
    • 2010-01-27
    • Ye ChenJohn Canny
    • Ye ChenJohn Canny
    • G06Q30/00G06F3/14G06F15/18
    • G06K9/6226G06Q30/02G06Q30/0251G06Q30/0254G06Q30/0257G06Q30/0269G06Q30/0282
    • A clustering and recommendation machine determines that an item is included in a cluster of items. The machine accesses item data descriptive of the item. The machine accesses a vector that represents the cluster and calculates the likelihood that the item is included in the cluster, based on the item variable and the probability parameter. The machine determines that the item is included in the cluster, based on the likelihood. The machine also recommends an item to a potential buyer. The machine accesses behavior data that represents a first event type pertinent to a first cluster of items. The machine calculates a probability that a second event type pertaining to a second cluster of items will co-occur with the first event type. The machine identifies an item from the second cluster to be recommended and presents a recommendation of the item to the potential buyer.
    • 聚类和推荐机器确定项目被包含在项目集群中。 机器访问描述项目的项目数据。 机器访问表示集群的向量,并根据项目变量和概率参数计算项目包含在集群中的可能性。 根据可能性,机器确定该项目包含在群集中。 该机器还向潜在买家推荐一个物品。 机器访问表示与第一个项目集相关的第一个事件类型的行为数据。 机器计算属于第二类项目的第二事件类型与第一事件类型共同出现的概率。 机器识别要推荐的第二个集群中的一个项目,并将该项目的建议呈现给潜在的买方。
    • 6. 发明申请
    • PROBABILISTIC CLUSTERING OF AN ITEM
    • 项目的概念聚类
    • US20110035379A1
    • 2011-02-10
    • US12694885
    • 2010-01-27
    • Ye ChenJohn Canny
    • Ye ChenJohn Canny
    • G06F17/30
    • G06F17/30536G06K9/6226
    • A clustering and recommendation machine determines that an item is included in a cluster of items. The machine accesses item data descriptive of the item. The machine accesses a vector that represents the cluster and calculates the likelihood that the item is included in the cluster, based on the item variable and the probability parameter. The machine determines that the item is included in the cluster, based on the likelihood. The machine also recommends an item to a potential buyer. The machine accesses behavior data that represents a first event type pertinent to a first cluster of items. The machine calculates a probability that a second event type pertaining to a second cluster of items will co-occur with the first event type. The machine identifies an item from the second cluster to be recommended and presents a recommendation of the item to the potential buyer.
    • 聚类和推荐机器确定项目被包含在项目集群中。 机器访问描述项目的项目数据。 机器访问表示集群的向量,并根据项目变量和概率参数计算项目包含在集群中的可能性。 根据可能性,机器确定该项目包含在群集中。 该机器还向潜在买家推荐一个物品。 机器访问表示与第一个项目集相关的第一个事件类型的行为数据。 机器计算属于第二类项目的第二事件类型与第一事件类型共同出现的概率。 机器识别要推荐的第二个集群中的一个项目,并将该项目的建议呈现给潜在的买方。
    • 8. 发明授权
    • Processor and method for developing a set of admissible fixture designs
for a workpiece
    • 用于开发一组工件可容许夹具设计的处理器和方法
    • US5546314A
    • 1996-08-13
    • US466112
    • 1995-06-06
    • Randolph C. BrostKenneth Y. GoldbergAaron S. WallackJohn Canny
    • Randolph C. BrostKenneth Y. GoldbergAaron S. WallackJohn Canny
    • B23Q3/10G06F19/00
    • B23Q3/103
    • A fixture process and method is provided for developing a complete set of all admissible fixture designs for a workpiece which prevents the workpiece from translating or rotating. The fixture processor generates the set of all admissible designs based on geometric access constraints and expected applied forces on the workpiece. For instance, the fixture processor may generate a set of admissible fixture designs for first, second and third locators placed in an array of holes on a fixture plate and a translating clamp attached to the fixture plate for contacting the workpiece. In another instance, a fixture vice is used in which first, second, third and fourth locators are used and first and second fixture jaws are tightened to secure the workpiece. The fixture process also ranks the set of admissible fixture designs according to a predetermined quality metric so that the optimal fixture design for the desired purpose may be identified from the set of all admissible fixture designs.
    • 提供了一种固定工艺和方法,用于开发用于工件的一整套允许的夹具设计,防止工件平移或旋转。 夹具处理器基于几何访问约束和对工件的预期施加力产生所有允许设计的集合。 例如,固定装置处理器可以产生一组可容许的夹具设计,用于放置在固定板上的孔阵列中的第一,第二和第三定位器以及附接到固定板的用于接触工件的平移夹具。 在另一种情况下,使用夹具,其中使用第一,第二,第三和第四定位器,并且紧固第一和第二固定夹爪以固定工件。 固定过程还根据预定的质量度量对一组允许的夹具设计进行排列,从而可以从所有允许的夹具设计的集合中识别用于期望目的的最佳夹具设计。
    • 9. 发明申请
    • Granular Data for Behavioral Targeting
    • 行为定位的粒度数据
    • US20090006363A1
    • 2009-01-01
    • US11770413
    • 2007-06-28
    • John CannyShi ZhongScott GaffneyChad BrowerPavel BerkhinGeorge H. John
    • John CannyShi ZhongScott GaffneyChad BrowerPavel BerkhinGeorge H. John
    • G06F17/30
    • G06Q30/02
    • A method of targeting receives several granular events and preprocesses the received granular events thereby generating preprocessed data to facilitate construction of a model based on the granular events. The method generates a predictive model by using the pre-processed data. The predictive model is for determining a likelihood of a user action. The method trains the predictive mode. A system for targeting includes granular events, a preprocessor for receiving the granular events, a model generator, and a model. The preprocessor has one or more modules for at least one of pruning, aggregation, clustering, and/or filtering. The model generator is for constructing a model based on the granular events, and the model is for determining a likelihood of a user action. The system of some embodiments further includes several users, a selector for selecting a particular set of users from among the several users, a trained model, and a scoring module.
    • 定向的方法接收几个粒度事件并预处理所接收的粒状事件,从而生成预处理的数据,以便于基于粒状事件构建模型。 该方法通过使用预处理数据生成预测模型。 预测模型用于确定用户动作的可能性。 该方法训练预测模式。 用于定位的系统包括粒状事件,用于接收粒度事件的预处理器,模型生成器和模型。 预处理器具有一个或多个用于修剪,聚合,聚类和/或过滤中的至少一个的模块。 模型生成器用于基于粒度事件构建模型,模型用于确定用户操作的可能性。 一些实施例的系统还包括若干用户,用于从几个用户中选择特定用户组的选择器,训练模型和评分模块。
    • 10. 发明申请
    • Method and System for Generating A Linear Machine Learning Model for Predicting Online User Input Actions
    • 用于生成用于预测在线用户输入操作的线性机器学习模型的方法和系统
    • US20110131160A1
    • 2011-06-02
    • US13018303
    • 2011-01-31
    • John CannyShi ZhongScott GaffneyChad BrowerPavel BerkhinGeorge H. John
    • John CannyShi ZhongScott GaffneyChad BrowerPavel BerkhinGeorge H. John
    • G06F15/18
    • G06Q30/02
    • A method of targeting receives several granular events and preprocesses the received granular events thereby generating preprocessed data to facilitate construction of a model based on the granular events. The method generates a predictive model by using the preprocessed data. The predictive model is for determining a likelihood of a user action. The method trains the predictive model. A system for targeting includes granular events, a preprocessor for receiving the granular events, a model generator, and a model. The preprocessor has one or more modules for at least one of pruning, aggregation, clustering, and/or filtering. The model generator is for constructing a model based on the granular events, and the model is for determining a likelihood of a user action. The system of some embodiments further includes several users, a selector for selecting a particular set of users from among the several users, a trained model, and a scoring module.
    • 定向的方法接收几个粒度事件并预处理所接收的粒状事件,从而生成预处理的数据,以便于基于粒状事件构建模型。 该方法通过使用预处理数据生成预测模型。 预测模型用于确定用户动作的可能性。 该方法训练预测模型。 用于定位的系统包括粒状事件,用于接收粒度事件的预处理器,模型生成器和模型。 预处理器具有一个或多个用于修剪,聚合,聚类和/或过滤中的至少一个的模块。 模型生成器用于基于粒度事件构建模型,模型用于确定用户操作的可能性。 一些实施例的系统还包括若干用户,用于从几个用户中选择特定用户组的选择器,训练模型和评分模块。