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首页> 外文期刊>Journal of Parallel and Distributed Computing >Distributed prediction from vertically partitioned data
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Distributed prediction from vertically partitioned data

机译:根据垂直划分的数据进行分布式预测

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We address the problem of prediction of data that is vertically partitioned, that is where local sites hold some of the attributes of all of the records. This situation is natural when data is collected by channels that are physically separated. For distributed prediction, we show that a technique called attribute ensembles is simple, predicts almost as well as a centralized predictor, reduces the amount of communication required, distributes computation and data access well, and allows each local site to keep its raw data private. We show how to extend attribute ensembles to data that is partitioned both horizontally and vertically.
机译:我们解决了垂直分割数据的预测问题,即本地站点拥有所有记录的某些属性。当数据是通过物理上分开的通道收集时,这种情况很自然。对于分布式预测,我们证明了一种称为属性集合的技术很简单,可以像集中式预测器一样进行预测,减少所需的通信量,很好地分配计算和数据访问权限,并允许每个本地站点将其原始数据保持私有状态。我们展示了如何将属性集合扩展到水平和垂直分区的数据。

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