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MACHINE-LEARNED RECOMMENDER SYSTEM FOR PERFORMANCE OPTIMIZATION OF NETWORK-TRANSFERRED ELECTRONIC CONTENT ITEMS

机译:用于网络传输电子内容性能优化的机器学习推荐系统

摘要

Machine learning techniques are described for generating recommendations using decision trees. A decision tree is generated based on training data that comprises multiple training instances, each of which comprises a feature value for each of multiple features and a label of a target variable. The multiple features correspond to attributes of multiple content delivery campaigns. Later, feature values of a content delivery campaign are received. The decision tree is traversed using the feature values to generate output. Based on the output, one or more recommendations are identified and the one or more recommendations are presented on a computing device.
机译:描述了用于使用决策树生成推荐的机器学习技术。基于包括多个训练实例的训练数据来生成决策树,每个训练实例包括用于多个特征中的每个特征的特征值和目标变量的标签。多个特征对应于多个内容递送活动的属性。稍后,将接收内容交付活动的功能值。使用特征值遍历决策树以生成输出。基于输出,识别一个或多个推荐,并将一个或多个推荐呈现在计算设备上。

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