Timezone: »
Poster
Sparse PCA with Oracle Property
Quanquan Gu · Zhaoran Wang · Han Liu
In this paper, we study the estimation of the $k$-dimensional sparse principal subspace of covariance matrix $\Sigma$ in the high-dimensional setting. We aim to recover the oracle principal subspace solution, i.e., the principal subspace estimator obtained assuming the true support is known a priori. To this end, we propose a family of estimators based on the semidefinite relaxation of sparse PCA with novel regularizations. In particular, under a weak assumption on the magnitude of the population projection matrix, one estimator within this family exactly recovers the true support with high probability, has exact rank-$k$, and attains a $\sqrt{s/n}$ statistical rate of convergence with $s$ being the subspace sparsity level and $n$ the sample size. Compared to existing support recovery results for sparse PCA, our approach does not hinge on the spiked covariance model or the limited correlation condition. As a complement to the first estimator that enjoys the oracle property, we prove that, another estimator within the family achieves a sharper statistical rate of convergence than the standard semidefinite relaxation of sparse PCA, even when the previous assumption on the magnitude of the projection matrix is violated. We validate the theoretical results by numerical experiments on synthetic datasets.
Author Information
Quanquan Gu (UCLA)
Zhaoran Wang (Princeton University)
Han Liu (Tencent AI Lab)
More from the Same Authors
-
2021 : GPU-Podracer: Scalable and Elastic Library for Cloud-Native Deep Reinforcement Learning »
Xiao-Yang Liu · Zhuoran Yang · Zhaoran Wang · Anwar Walid · Jian Guo · Michael Jordan -
2021 : Exponential Family Model-Based Reinforcement Learning via Score Matching »
Gene Li · Junbo Li · Nathan Srebro · Zhaoran Wang · Zhuoran Yang -
2021 Poster: Pessimism Meets Invariance: Provably Efficient Offline Mean-Field Multi-Agent RL »
Minshuo Chen · Yan Li · Ethan Wang · Zhuoran Yang · Zhaoran Wang · Tuo Zhao -
2021 Poster: Exponential Bellman Equation and Improved Regret Bounds for Risk-Sensitive Reinforcement Learning »
Yingjie Fei · Zhuoran Yang · Yudong Chen · Zhaoran Wang -
2021 Poster: A Near-Optimal Algorithm for Stochastic Bilevel Optimization via Double-Momentum »
Prashant Khanduri · Siliang Zeng · Mingyi Hong · Hoi-To Wai · Zhaoran Wang · Zhuoran Yang -
2021 Poster: BooVI: Provably Efficient Bootstrapped Value Iteration »
Boyi Liu · Qi Cai · Zhuoran Yang · Zhaoran Wang -
2021 Poster: Wasserstein Flow Meets Replicator Dynamics: A Mean-Field Analysis of Representation Learning in Actor-Critic »
Yufeng Zhang · Siyu Chen · Zhuoran Yang · Michael Jordan · Zhaoran Wang -
2021 Poster: Offline Constrained Multi-Objective Reinforcement Learning via Pessimistic Dual Value Iteration »
Runzhe Wu · Yufeng Zhang · Zhuoran Yang · Zhaoran Wang -
2021 Poster: Dynamic Bottleneck for Robust Self-Supervised Exploration »
Chenjia Bai · Lingxiao Wang · Lei Han · Animesh Garg · Jianye Hao · Peng Liu · Zhaoran Wang -
2021 Poster: Provably Efficient Causal Reinforcement Learning with Confounded Observational Data »
Lingxiao Wang · Zhuoran Yang · Zhaoran Wang -
2018 Poster: Exponentially Weighted Imitation Learning for Batched Historical Data »
Qing Wang · Jiechao Xiong · Lei Han · peng sun · Han Liu · Tong Zhang -
2017 Poster: Estimating High-dimensional Non-Gaussian Multiple Index Models via Stein’s Lemma »
Zhuoran Yang · Krishnakumar Balasubramanian · Zhaoran Wang · Han Liu -
2017 Poster: Parametric Simplex Method for Sparse Learning »
Haotian Pang · Han Liu · Robert J Vanderbei · Tuo Zhao -
2016 Workshop: Adaptive and Scalable Nonparametric Methods in Machine Learning »
Aaditya Ramdas · Arthur Gretton · Bharath Sriperumbudur · Han Liu · John Lafferty · Samory Kpotufe · Zoltán Szabó -
2016 Poster: NESTT: A Nonconvex Primal-Dual Splitting Method for Distributed and Stochastic Optimization »
Davood Hajinezhad · Mingyi Hong · Tuo Zhao · Zhaoran Wang -
2016 Poster: Agnostic Estimation for Misspecified Phase Retrieval Models »
Matey Neykov · Zhaoran Wang · Han Liu -
2016 Poster: Online ICA: Understanding Global Dynamics of Nonconvex Optimization via Diffusion Processes »
Chris Junchi Li · Zhaoran Wang · Han Liu -
2016 Poster: Blind Attacks on Machine Learners »
Alex Beatson · Zhaoran Wang · Han Liu -
2016 Poster: More Supervision, Less Computation: Statistical-Computational Tradeoffs in Weakly Supervised Learning »
Xinyang Yi · Zhaoran Wang · Zhuoran Yang · Constantine Caramanis · Han Liu -
2015 Poster: Optimal Linear Estimation under Unknown Nonlinear Transform »
Xinyang Yi · Zhaoran Wang · Constantine Caramanis · Han Liu -
2015 Poster: Non-convex Statistical Optimization for Sparse Tensor Graphical Model »
Wei Sun · Zhaoran Wang · Han Liu · Guang Cheng -
2015 Poster: Local Smoothness in Variance Reduced Optimization »
Daniel Vainsencher · Han Liu · Tong Zhang -
2015 Poster: High Dimensional EM Algorithm: Statistical Optimization and Asymptotic Normality »
Zhaoran Wang · Quanquan Gu · Yang Ning · Han Liu -
2015 Poster: Robust Portfolio Optimization »
Huitong Qiu · Fang Han · Han Liu · Brian Caffo -
2015 Poster: A Nonconvex Optimization Framework for Low Rank Matrix Estimation »
Tuo Zhao · Zhaoran Wang · Han Liu -
2014 Workshop: Modern Nonparametrics 3: Automating the Learning Pipeline »
Eric Xing · Mladen Kolar · Arthur Gretton · Samory Kpotufe · Han Liu · Zoltán Szabó · Alan Yuille · Andrew G Wilson · Ryan Tibshirani · Sasha Rakhlin · Damian Kozbur · Bharath Sriperumbudur · David Lopez-Paz · Kirthevasan Kandasamy · Francesco Orabona · Andreas Damianou · Wacha Bounliphone · Yanshuai Cao · Arijit Das · Yingzhen Yang · Giulia DeSalvo · Dmitry Storcheus · Roberto Valerio -
2014 Poster: Mode Estimation for High Dimensional Discrete Tree Graphical Models »
Chao Chen · Han Liu · Dimitris Metaxas · Tianqi Zhao -
2014 Poster: Accelerated Mini-batch Randomized Block Coordinate Descent Method »
Tuo Zhao · Mo Yu · Yiming Wang · Raman Arora · Han Liu -
2014 Poster: Multivariate Regression with Calibration »
Han Liu · Lie Wang · Tuo Zhao -
2014 Spotlight: Mode Estimation for High Dimensional Discrete Tree Graphical Models »
Chao Chen · Han Liu · Dimitris Metaxas · Tianqi Zhao -
2014 Poster: Robust Tensor Decomposition with Gross Corruption »
Quanquan Gu · Huan Gui · Jiawei Han -
2014 Poster: Tighten after Relax: Minimax-Optimal Sparse PCA in Polynomial Time »
Zhaoran Wang · Huanran Lu · Han Liu -
2013 Workshop: Modern Nonparametric Methods in Machine Learning »
Arthur Gretton · Mladen Kolar · Samory Kpotufe · John Lafferty · Han Liu · Bernhard Schölkopf · Alexander Smola · Rob Nowak · Mikhail Belkin · Lorenzo Rosasco · peter bickel · Yue Zhao -
2013 Poster: Sparse Inverse Covariance Estimation with Calibration »
Tuo Zhao · Han Liu -
2013 Poster: Robust Sparse Principal Component Regression under the High Dimensional Elliptical Model »
Fang Han · Han Liu -
2013 Spotlight: Robust Sparse Principal Component Regression under the High Dimensional Elliptical Model »
Fang Han · Han Liu -
2012 Workshop: Modern Nonparametric Methods in Machine Learning »
Sivaraman Balakrishnan · Arthur Gretton · Mladen Kolar · John Lafferty · Han Liu · Tong Zhang -
2012 Poster: Selective Labeling via Error Bound Minimization »
Quanquan Gu · Tong Zhang · Chris Ding · Jiawei Han -
2012 Poster: High-dimensional Nonparanormal Graph Estimation via Smooth-projected Neighborhood Pursuit »
Tuo Zhao · Kathryn Roeder · Han Liu -
2012 Poster: Exponential Concentration for Mutual Information Estimation with Application to Forests »
Han Liu · John Lafferty · Larry Wasserman