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Fault Tolerant Regression for Sensor Data

机译:传感器数据的容错回归

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摘要

Many systems rely on predictive models using sensor data, with sensors being prone to occasional failures. From the operational point of view predictions need to be tolerant to sensor failures such that the loss in accuracy due to temporary missing sensor readings would be minimal. In this paper, we theoretically and empirically analyze robustness of linear predictive models to temporary missing data. We demonstrate that if the input sensors are correlated the mean imputation of missing values may lead to a very rapid deterioration of the prediction accuracy. Based on the theoretical results we introduce a quantitative measure that allows to assess how robust is a given linear regression model to sensor failures. We propose a practical strategy for building and operating robust linear models in situations when temporal sensor failures are expected. Experiments on six sensory datasets and a case study in environmental monitoring with streaming data validate the theoretical results and confirm the effectiveness of the proposed strategy.
机译:许多系统依赖于使用传感器数据的预测模型,传感器容易出现故障。从操作的角度来看,需要容忍传感器故障,使得由于临时缺失的传感器读数导致的准确性损失是最小的。在本文中,我们理论上和经验分析了线性预测模型的鲁棒性,以临时缺失数据。我们证明,如果输入传感器相关联,则缺失值的平均归差可能导致预测精度的非常快速地恶化。基于理论结果,我们介绍了一种定量测量,允许评估给定线性回归模型对传感器故障的鲁棒性的稳健程度。我们提出了一种在预期时间传感器故障的情况下在情况下建立和运行强大的线性模型的实际策略。六种感官数据集的实验和流媒体数据环境监测的案例研究验证了理论结果并确认了拟议策略的有效性。

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