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arxiv: 1608.02257 · v2 · submitted 2016-08-07 · 💻 cs.LG · cs.CR· stat.ML

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Robust High-Dimensional Linear Regression

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classification 💻 cs.LG cs.CRstat.ML
keywords robustlearningmatrixfeatureregressionsupervisedassumptionshigh-dimensional
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The effectiveness of supervised learning techniques has made them ubiquitous in research and practice. In high-dimensional settings, supervised learning commonly relies on dimensionality reduction to improve performance and identify the most important factors in predicting outcomes. However, the economic importance of learning has made it a natural target for adversarial manipulation of training data, which we term poisoning attacks. Prior approaches to dealing with robust supervised learning rely on strong assumptions about the nature of the feature matrix, such as feature independence and sub-Gaussian noise with low variance. We propose an integrated method for robust regression that relaxes these assumptions, assuming only that the feature matrix can be well approximated by a low-rank matrix. Our techniques integrate improved robust low-rank matrix approximation and robust principle component regression, and yield strong performance guarantees. Moreover, we experimentally show that our methods significantly outperform state of the art both in running time and prediction error.

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Reviewed papers in the Pith corpus that reference this work. Sorted by Pith novelty score.

  1. Targeted Backdoor Attacks on Deep Learning Systems Using Data Poisoning

    cs.CR 2017-12 unverdicted novelty 7.0

    Injecting around 50 poisoned samples with a stealthy trigger creates backdoors in deep learning models achieving over 90% attack success under a weak threat model with no model or data knowledge required.