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Transfer Learning in Body Sensor Networks Using Ensembles of Randomized Trees

机译:使用随机树的集合在人体传感器网络中进行转移学习

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摘要

We investigate the process of transferring the activity recognition models within the nodes of a body sensor network (BSN). In particular, we propose a methodology that supports and makes the transferring possible. Based on a collaborative training strategy, classifier ensembles of randomized trees are used to create activity recognition models that can successfully be transferred within the nodes of the network. The methodology has been applied in scenarios where a node present in the network is replaced by a new node located in the same position (replacement scenario) and relocated to a previously unknown position (relocation scenario). Experimental results show that the transferred recognition models achieve high-recognition performance in the replacement scenario and good-recognition performance are achieved in the relocation scenario. Results have been validated with multiple -folds cross-validations in order to test the performance of the methodology when different amount of data are shared between nodes.
机译:我们调查在身体传感器网络(BSN)的节点内转移活动识别模型的过程。特别是,我们提出了一种支持并使得转让成为可能的方法。基于协作训练策略,随机树的分类器集成用于创建活动识别模型,该模型可以在网络节点内成功转移。该方法已被应用到以下情况中:网络中存在的节点被位于相同位置的新节点替换(替换情况),并被重新放置到先前未知的位置(重新放置情况)。实验结果表明,所转移的识别模型在替换场景下具有较高的识别性能,在重定位场景下具有良好的识别性能。为了在节点之间共享不同数量的数据时测试方法的性能,已使用多重交叉验证对结果进行了验证。

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