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Communication-efficient Distributed Sparse Linear Discriminant Analysis

Quanquan Gu
Abstract

We propose a communication-efficient distributed estimation method for sparse linear discriminant analysis (LDA) in the high dimensional regime. Our method distributes the data of size NN into mm machines, and estimates a local sparse LDA estimator on each machine using the data subset of size N/mN/m. After the distributed estimation, our method aggregates the debiased local estimators from mm machines, and sparsifies the aggregated estimator. We show that the aggregated estimator attains the same statistical rate as the centralized estimation method, as long as the number of machines mm is chosen appropriately. Moreover, we prove that our method can attain the model selection consistency under a milder condition than the centralized method. Experiments on both synthetic and real datasets corroborate our theory.

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