Timezone: »
Poster
Robust Unsupervised Learning via L-statistic Minimization
Andreas Maurer · Daniela Angela Parletta · Andrea Paudice · Massimiliano Pontil
Designing learning algorithms that are resistant to perturbations of the underlying data distribution is a problem of wide practical and theoretical importance. We present a general approach to this problem focusing on unsupervised learning. The key assumption is that the perturbing distribution is characterized by larger losses relative to a given class of admissible models. This is exploited by a general descent algorithm which minimizes an $L$-statistic criterion over the model class, weighting small losses more. Our analysis characterizes the robustness of the method in terms of bounds on the reconstruction error relative to the underlying unperturbed distribution. As a byproduct, we prove uniform convergence bounds with respect to the proposed criterion for several popular models in unsupervised learning, a result which may be of independent interest. Numerical experiments with \textsc{kmeans} clustering and principal subspace analysis demonstrate the effectiveness of our approach.
Author Information
Andreas Maurer
Daniela Angela Parletta (University of Genoa & Istituto Italiano di Tecnologia)
Andrea Paudice (University of Milan & Istituto Italiano di Tecnologia)
Massimiliano Pontil ( Istituto Italiano di Tecnologia & University College London)
Related Events (a corresponding poster, oral, or spotlight)
-
2021 Spotlight: Robust Unsupervised Learning via L-statistic Minimization »
Thu. Jul 22nd 12:40 -- 12:45 AM Room
More from the Same Authors
-
2022 Poster: Bregman Neural Networks »
Jordan Frecon · Gilles Gasso · Massimiliano Pontil · Saverio Salzo -
2022 Spotlight: Bregman Neural Networks »
Jordan Frecon · Gilles Gasso · Massimiliano Pontil · Saverio Salzo -
2022 Poster: Batch Greenkhorn Algorithm for Entropic-Regularized Multimarginal Optimal Transport: Linear Rate of Convergence and Iteration Complexity »
Vladimir Kostic · Saverio Salzo · Massimiliano Pontil -
2022 Spotlight: Batch Greenkhorn Algorithm for Entropic-Regularized Multimarginal Optimal Transport: Linear Rate of Convergence and Iteration Complexity »
Vladimir Kostic · Saverio Salzo · Massimiliano Pontil