Timezone: »
Poster
Hardness and Algorithms for Robust and Sparse Optimization
Eric Price · Sandeep Silwal · Samson Zhou
We explore algorithms and limitations for sparse optimization problems such as sparse linear regression and robust linear regression. The goal of the sparse linear regression problem is to identify a small number of key features, while the goal of the robust linear regression problem is to identify a small number of erroneous measurements. Specifically, the sparse linear regression problem seeks a $k$-sparse vector $x\in\mathbb{R}^d$ to minimize $\|Ax-b\|_2$, given an input matrix $A\in\mathbb{R}^{n\times d}$ and a target vector $b\in\mathbb{R}^n$, while the robust linear regression problem seeks a set $S$ that ignores at most $k$ rows and a vector $x$ to minimize $\|(Ax-b)_S\|_2$.We first show bicriteria, NP-hardness of approximation for robust regression building on the work of \cite{ODonnellWZ15} which implies a similar result for sparse regression. We further show fine-grained hardness of robust regression through a reduction from the minimum-weight $k$-clique conjecture. On the positive side, we give an algorithm for robust regression that achieves arbitrarily accurate additive error and uses runtime that closely matches the lower bound from the fine-grained hardness result, as well as an algorithm for sparse regression with similar runtime. Both our upper and lower bounds rely on a general reduction from robust linear regression to sparse regression that we introduce. Our algorithms, inspired by the 3SUM problem, use approximate nearest neighbor data structures and may be of independent interest for solving sparse optimization problems. For instance, we demonstrate that our techniques can also be used for the well-studied sparse PCA problem.
Author Information
Eric Price (UT-Austin)
Sandeep Silwal (MIT)
Samson Zhou (School of Computer Science, Carnegie Mellon University)
Related Events (a corresponding poster, oral, or spotlight)
-
2022 Spotlight: Hardness and Algorithms for Robust and Sparse Optimization »
Thu. Jul 21st 06:10 -- 06:15 PM Room Ballroom 3 & 4
More from the Same Authors
-
2021 : Adversarial Robustness of Streaming Algorithms through Importance Sampling »
Vladimir Braverman · Avinatan Hasidim · Yossi Matias · Mariano Schain · Sandeep Silwal · Samson Zhou -
2023 Poster: Provable Data Subset Selection For Efficient Neural Networks Training »
Morad Tukan · Samson Zhou · Alaa Maalouf · Daniela Rus · Vladimir Braverman · Dan Feldman -
2023 Poster: High-dimensional Location Estimation via Norm Concentration for Subgamma Vectors »
Shivam Gupta · Jasper Lee · Eric Price -
2023 Poster: Fast $(1+\varepsilon)$-Approximation Algorithms for Binary Matrix Factorization »
Ameya Velingker · Maximilian Vötsch · David Woodruff · Samson Zhou -
2023 Poster: Data Structures for Density Estimation »
Anders Aamand · Alexandr Andoni · Justin Chen · Piotr Indyk · Shyam Narayanan · Sandeep Silwal -
2022 Poster: Faster Fundamental Graph Algorithms via Learned Predictions »
Justin Chen · Sandeep Silwal · Ali Vakilian · Fred Zhang -
2022 Spotlight: Faster Fundamental Graph Algorithms via Learned Predictions »
Justin Chen · Sandeep Silwal · Ali Vakilian · Fred Zhang -
2022 Poster: Linear Bandit Algorithms with Sublinear Time Complexity »
Shuo Yang · Tongzheng Ren · Sanjay Shakkottai · Eric Price · Inderjit Dhillon · Sujay Sanghavi -
2022 Spotlight: Linear Bandit Algorithms with Sublinear Time Complexity »
Shuo Yang · Tongzheng Ren · Sanjay Shakkottai · Eric Price · Inderjit Dhillon · Sujay Sanghavi -
2021 : Contributed Talk #8 »
Sandeep Silwal -
2021 Poster: Fairness for Image Generation with Uncertain Sensitive Attributes »
Ajil Jalal · Sushrut Karmalkar · Jessica Hoffmann · Alexandros Dimakis · Eric Price -
2021 Poster: Randomized Dimensionality Reduction for Facility Location and Single-Linkage Clustering »
Shyam Narayanan · Sandeep Silwal · Piotr Indyk · Or Zamir -
2021 Spotlight: Randomized Dimensionality Reduction for Facility Location and Single-Linkage Clustering »
Shyam Narayanan · Sandeep Silwal · Piotr Indyk · Or Zamir -
2021 Spotlight: Fairness for Image Generation with Uncertain Sensitive Attributes »
Ajil Jalal · Sushrut Karmalkar · Jessica Hoffmann · Alexandros Dimakis · Eric Price -
2021 Poster: Instance-Optimal Compressed Sensing via Posterior Sampling »
Ajil Jalal · Sushrut Karmalkar · Alexandros Dimakis · Eric Price -
2021 Spotlight: Instance-Optimal Compressed Sensing via Posterior Sampling »
Ajil Jalal · Sushrut Karmalkar · Alexandros Dimakis · Eric Price -
2020 Poster: On the Power of Compressed Sensing with Generative Models »
Akshay Kamath · Eric Price · Sushrut Karmalkar -
2019 Poster: Adversarial examples from computational constraints »
Sebastien Bubeck · Yin Tat Lee · Eric Price · Ilya Razenshteyn -
2019 Oral: Adversarial examples from computational constraints »
Sebastien Bubeck · Yin Tat Lee · Eric Price · Ilya Razenshteyn -
2017 Poster: Compressed Sensing using Generative Models »
Ashish Bora · Ajil Jalal · Eric Price · Alexandros Dimakis -
2017 Talk: Compressed Sensing using Generative Models »
Ashish Bora · Ajil Jalal · Eric Price · Alexandros Dimakis