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NeurIPS 2018

Robust Subspace Approximation in a Stream

Conference Paper Artificial Intelligence ยท Machine Learning

Abstract

We study robust subspace estimation in the streaming and distributed settings. Given a set of n data points {a i} {i=1}^n in R^d and an integer k, we wish to find a linear subspace S of dimension k for which sum i M(dist(S, a i)) is minimized, where dist(S, x): = min_{y in S} |x-y|_2, and M() is some loss function. When M is the identity function, S gives a subspace that is more robust to outliers than that provided by the truncated SVD. Though the problem is NP-hard, it is approximable within a (1+epsilon) factor in polynomial time when k and epsilon are constant. We give the first sublinear approximation algorithm for this problem in the turnstile streaming and arbitrary partition distributed models, achieving the same time guarantees as in the offline case. Our algorithm is the first based entirely on oblivious dimensionality reduction, and significantly simplifies prior methods for this problem, which held in neither the streaming nor distributed models.

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Context

Venue
Annual Conference on Neural Information Processing Systems
Archive span
1987-2025
Indexed papers
30776
Paper id
106683108045148564