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Dynamic Hierarchical Empirical Bayes and digital content control

机译:动态等级经验贝叶斯和数字内容控制

摘要

Dynamic Hierarchical Empirical Bayes techniques and systems are described that are implemented to control output of digital content. In one example, a system identifies splitting variables included in data. An amount of loss is then determined for each of the identified splitting variables by the system using a loss function. Based on the determined amounts of loss, the system selects at least one splitting variable from the plurality of splitting variables that are to be used to partition data in a respective node, e.g., a parent node to form a plurality of child nodes. The system, for instance, may select the splitting variable that minimizes the cost, i.e., has the lowest amount of cost. The selected splitting variable is then employed by the system to generate at least one hierarchical level of the hierarchical structure of the statistical model by partitioning data from the parent node into respective child nodes.
机译:描述了用于控制数字内容的输出的动态分层经验贝叶斯技术和系统。在一个示例中,系统识别数据中包括的拆分变量。然后使用损耗函数对系统的每个识别的分割变量确定损耗量。基于所确定的损耗量,系统从多个拆分变量中选择至少一个拆分变量,该分裂变量用于在相应节点中分区数据,例如,父节点以形成多个子节点。例如,系统可以选择最小化成本的分离变量,即,具有最低的成本。然后,系统采用所选的分割变量来通过将数据从父节点分区到相应的子节点来生成统计模型的分层结构的至少一个分层级别。

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