Optimal subsampling for least absolute relative error estimators with massive data

2023
Due to the limitation of computational resources, traditional statistical methods are no longer applicable to large data sets. Subsampling is a popular method which can significantly reduce computational burden. This paper considers a subsampling strategy based on the least absolute relative error in the multiplicative model for massive data. In addition, we employ the random weighting and the least squares methods to handle the problem that the asymptotic covariance of the estimator is difficult to be estimated directly. Moreover, the comparison among the least absolute relative error, least absolute deviation and least squares under the optimal subsampling strategy are given in simulation studies and real examples.
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