首页> 外文会议>International Conference on High Performance Computing(HiPC 2005); 20051218-21; Goa(IN) >Orthogonal Decision Trees for Resource-Constrained Physiological Data Stream Monitoring Using Mobile Devices
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Orthogonal Decision Trees for Resource-Constrained Physiological Data Stream Monitoring Using Mobile Devices

机译:使用移动设备进行资源受限的生理数据流监控的​​正交决策树

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This paper considers the problem of monitoring physiological data streams obtained from resource-constrained wearable sensing devices for pervasive health-care management. It considers Orthogonal decision trees (ODTs) that offer an effective way to construct a redundancy-free, accurate, and meaningful representation of large decision-tree-ensembles often created by popular techniques such as Bagging, Boosting, Random Forests and many distributed and data stream mining algorithms. ODTs are functionally orthogonal to each other and they correspond to the principal components of the underlying function space. This paper offers experimental results to document the performance of ODTs on grounds of accuracy, model complexity, and resource consumption.
机译:本文考虑了监视从资源受限的可穿戴传感设备获取的生理数据流以进行普遍卫生保健管理的问题。它考虑了正交决策树(ODT),这些正交决策树为构建通常由流行技术(例如装袋,增强,随机森林以及许多分布式数据和数据)创建的大型决策树集合提供了一种无冗余,准确且有意义的表示形式的有效方法。流挖掘算法。 ODT在功能上彼此正交,并且它们对应于基础功能空间的主要组成部分。本文提供了实验结果,以准确性,模型复杂性和资源消耗为基础来记录ODT的性能。

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