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Model ensemble for an effective on-line reconstruction of missing data in sensor networks

机译:有效集成在线重建传感器网络中缺失数据的模型

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The literature has shown that model ensemble techniques are particularly effective to solve regression/classification applications by providing, given a suitable aggregation mechanism, a better generalization ability than the generic model of the ensemble. However, only few recent results consider the use of ensembles for a time-dependent framework, with focus on time-series forecasting. Here, we propose the use of ensemble of models to an on-line reconstruction of missing data coming from a sensor network. Reconstructing missing data is of paramount importance for any further data processing and must be carried out on-line not to introduce unnecessary latency when data lead to a decision or control action. The ensemble is designed by both exploiting temporal and spatial dependencies existing among the sensors composing the network. An effective aggregation mechanism is proposed for the considered models to improve the generalization ability of the ensemble. Results demonstrate the effectiveness of the proposed approach in reconstructing missing data.
机译:文献表明,模型集成技术通过提供给定合适的聚合机制,比集成的通用模型更好的归纳能力,特别有效地解决了回归/分类应用。但是,只有很少的最新结果考虑将集成用于时间依赖的框架,并着重于时间序列预测。在这里,我们建议使用模型集成来在线重建来自传感器网络的丢失数据。重建丢失的数据对于任何进一步的数据处理都是至关重要的,并且当数据导致决策或控制动作时,必须在线进行,以免引入不必要的等待时间。通过利用组成网络的传感器之间存在的时间和空间依赖性来设计集成体。针对所考虑的模型,提出了一种有效的聚集机制,以提高集合的泛化能力。结果证明了该方法在重建缺失数据中的有效性。

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