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Impute vs. Ignore: Missing values for prediction

机译:归因与忽略:缺少预测值

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Sensor faults or communication errors can cause certain sensor readings to become unavailable for prediction purposes. In this paper we evaluate the performance of imputation techniques and techniques that ignore the missing values, in scenarios: (i) when values are missing only during prediction phase, and (ii) when values are missing during both the induction and prediction phase. We also investigated the influence of different scales of missingness on the performance of these treatments. The results can be used as a guideline to facilitate the choice of different missing value treatments under different circumstances.
机译:传感器故障或通讯错误可能会导致某些传感器读数无法用于预测目的。在本文中,我们评估了以下情形下的插补技术和忽略缺失值的技术的性能:(i)仅在预测阶段缺失值,以及(ii)在归纳和预测阶段均缺失值的​​情况。我们还调查了不同程度的失踪对这些治疗方法的影响。该结果可以用作指导,以促进在不同情况下选择不同的缺失值治疗方法。

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