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Communication-efficient distributed eigenspace estimation with arbitrary node failures (2206.00127v1)
Published 31 May 2022 in stat.ML, cs.DC, cs.LG, cs.NA, and math.NA
Abstract: We develop an eigenspace estimation algorithm for distributed environments with arbitrary node failures, where a subset of computing nodes can return structurally valid but otherwise arbitrarily chosen responses. Notably, this setting encompasses several important scenarios that arise in distributed computing and data-collection environments such as silent/soft errors, outliers or corrupted data at certain nodes, and adversarial responses. Our estimator builds upon and matches the performance of a recently proposed non-robust estimator up to an additive $\tilde{O}(\sigma \sqrt{\alpha})$ error, where $\sigma2$ is the variance of the existing estimator and $\alpha$ is the fraction of corrupted nodes.