Smoothed Analysis in Unsupervised Learning via Decoupling
November 29, 2018 Β· Declared Dead Β· π IEEE Annual Symposium on Foundations of Computer Science
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Authors
Aditya Bhaskara, Aidao Chen, Aidan Perreault, Aravindan Vijayaraghavan
arXiv ID
1811.12361
Category
cs.DS: Data Structures & Algorithms
Cross-listed
cs.LG,
stat.ML
Citations
20
Venue
IEEE Annual Symposium on Foundations of Computer Science
Last Checked
3 months ago
Abstract
Smoothed analysis is a powerful paradigm in overcoming worst-case intractability in unsupervised learning and high-dimensional data analysis. While polynomial time smoothed analysis guarantees have been obtained for worst-case intractable problems like tensor decompositions and learning mixtures of Gaussians, such guarantees have been hard to obtain for several other important problems in unsupervised learning. A core technical challenge in analyzing algorithms is obtaining lower bounds on the least singular value for random matrix ensembles with dependent entries, that are given by low-degree polynomials of a few base underlying random variables. In this work, we address this challenge by obtaining high-confidence lower bounds on the least singular value of new classes of structured random matrix ensembles of the above kind. We then use these bounds to design algorithms with polynomial time smoothed analysis guarantees for the following three important problems in unsupervised learning: 1. Robust subspace recovery, when the fraction $Ξ±$ of inliers in the d-dimensional subspace $T \subset \mathbb{R}^n$ is at least $Ξ±> (d/n)^\ell$ for any constant integer $\ell>0$. This contrasts with the known worst-case intractability when $Ξ±< d/n$, and the previous smoothed analysis result which needed $Ξ±> d/n$ (Hardt and Moitra, 2013). 2. Learning overcomplete hidden markov models, where the size of the state space is any polynomial in the dimension of the observations. This gives the first polynomial time guarantees for learning overcomplete HMMs in a smoothed analysis model. 3. Higher order tensor decompositions, where we generalize the so-called FOOBI algorithm of Cardoso to find order-$\ell$ rank-one tensors in a subspace. This allows us to obtain polynomially robust decomposition algorithms for $2\ell$'th order tensors with rank $O(n^{\ell})$.
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