Provable ICA with Unknown Gaussian Noise, with Implications for Gaussian Mixtures and Autoencoders
Author(s): Arora, Sanjeev; Ge, Rong; Moitra, Ankur; Sachdeva, Sushant
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Abstract: | We present a new algorithm for Independent Component Analysis (ICA) which has provable performance guarantees. In particular, suppose we are given samples of the form y = A x + η where A is an unknown n × n matrix and x is chosen uniformly at random from { + 1 , − 1 } n , η is an n -dimensional Gaussian random variable with unknown covariance Σ : We give an algorithm that provable recovers A and Σ up to an additive ϵ whose running time and sample complexity are polynomial in n and 1 / ϵ . To accomplish this, we introduce a novel quasi-whitening'' step that may be useful in other contexts in which the covariance of Gaussian noise is not known in advance. We also give a general framework for finding all local optima of a function (given an oracle for approximately finding just one) and this is a crucial step in our algorithm, one that has been overlooked in previous attempts, and allows us to control the accumulation of error when we find the columns of A one by one via local search. |
Publication Date: | 2012 |
Citation: | Arora, Sanjeev, Rong Ge, Ankur Moitra, and Sushant Sachdeva. "Provable ICA with Unknown Gaussian Noise, with Implications for Gaussian Mixtures and Autoencoders." In Advances in Neural Information Processing Systems 25 (2012). |
Type of Material: | Conference Article |
Journal/Proceeding Title: | Advances in Neural Information Processing Systems |
Version: | Final published version. Article is made available in OAR by the publisher's permission or policy. |
Notes: | Supplemental Information: https://papers.nips.cc/paper/2012/hash/09c6c3783b4a70054da74f2538ed47c6-Abstract.html |
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