Search Results for author: Pravesh K. Kothari

Found 15 papers, 0 papers with code

Privately Estimating a Gaussian: Efficient, Robust and Optimal

no code implementations15 Dec 2022 Daniel Alabi, Pravesh K. Kothari, Pranay Tankala, Prayaag Venkat, Fred Zhang

We prove a new lower bound on differentially private covariance estimation to show that the dependence on the condition number $\kappa$ in the above sample bound is also tight.

A Moment-Matching Approach to Testable Learning and a New Characterization of Rademacher Complexity

no code implementations23 Nov 2022 Aravind Gollakota, Adam R. Klivans, Pravesh K. Kothari

A remarkable recent paper by Rubinfeld and Vasilyan (2022) initiated the study of \emph{testable learning}, where the goal is to replace hard-to-verify distributional assumptions (such as Gaussianity) with efficiently testable ones and to require that the learner succeed whenever the unknown distribution passes the corresponding test.

Learning Theory

List-Decodable Covariance Estimation

no code implementations22 Jun 2022 Misha Ivkov, Pravesh K. Kothari

For any $\alpha > 0$, our algorithm takes input a sample $Y \subseteq \mathbb{R}^d$ of size $n\geq d^{\mathsf{poly}(1/\alpha)}$ obtained by adversarially corrupting an $(1-\alpha)n$ points in an i. i. d.

regression

Private Robust Estimation by Stabilizing Convex Relaxations

no code implementations7 Dec 2021 Pravesh K. Kothari, Pasin Manurangsi, Ameya Velingker

Prior works obtained private robust algorithms for mean estimation of subgaussian distributions with bounded covariance.

Memory-Sample Lower Bounds for Learning Parity with Noise

no code implementations5 Jul 2021 Sumegha Garg, Pravesh K. Kothari, Pengda Liu, Ran Raz

We show that any learning algorithm for the learning problem corresponding to $M$, with error, requires either a memory of size at least $\Omega\left(\frac{k \cdot \ell}{\varepsilon} \right)$, or at least $2^{\Omega(r)}$ samples.

Robustly Learning Mixtures of $k$ Arbitrary Gaussians

no code implementations3 Dec 2020 Ainesh Bakshi, Ilias Diakonikolas, He Jia, Daniel M. Kane, Pravesh K. Kothari, Santosh S. Vempala

We give a polynomial-time algorithm for the problem of robustly estimating a mixture of $k$ arbitrary Gaussians in $\mathbb{R}^d$, for any fixed $k$, in the presence of a constant fraction of arbitrary corruptions.

Clustering Tensor Decomposition

Sparse PCA: Algorithms, Adversarial Perturbations and Certificates

no code implementations12 Nov 2020 Tommaso d'Orsi, Pravesh K. Kothari, Gleb Novikov, David Steurer

Despite a long history of prior works, including explicit studies of perturbation resilience, the best known algorithmic guarantees for Sparse PCA are fragile and break down under small adversarial perturbations.

List-Decodable Subspace Recovery: Dimension Independent Error in Polynomial Time

no code implementations12 Feb 2020 Ainesh Bakshi, Pravesh K. Kothari

As a result, in addition to Gaussians, our algorithm applies to the uniform distribution on the hypercube and $q$-ary cubes and arbitrary product distributions with subgaussian marginals.

List-Decodable Linear Regression

no code implementations NeurIPS 2019 Sushrut Karmalkar, Adam R. Klivans, Pravesh K. Kothari

To complement our result, we prove that the anti-concentration assumption on the inliers is information-theoretically necessary.

regression

On the Expressive Power of Kernel Methods and the Efficiency of Kernel Learning by Association Schemes

no code implementations13 Feb 2019 Pravesh K. Kothari, Roi Livni

We study the expressive power of kernel methods and the algorithmic feasibility of multiple kernel learning for a special rich class of kernels.

Efficient Algorithms for Outlier-Robust Regression

no code implementations8 Mar 2018 Adam Klivans, Pravesh K. Kothari, Raghu Meka

We give the first polynomial-time algorithm for performing linear or polynomial regression resilient to adversarial corruptions in both examples and labels.

regression

An Analysis of the t-SNE Algorithm for Data Visualization

no code implementations5 Mar 2018 Sanjeev Arora, Wei Hu, Pravesh K. Kothari

A first line of attack in exploratory data analysis is data visualization, i. e., generating a 2-dimensional representation of data that makes clusters of similar points visually identifiable.

Clustering Data Visualization +1

Outlier-robust moment-estimation via sum-of-squares

no code implementations30 Nov 2017 Pravesh K. Kothari, David Steurer

We develop efficient algorithms for estimating low-degree moments of unknown distributions in the presence of adversarial outliers.

Better Agnostic Clustering Via Relaxed Tensor Norms

no code implementations20 Nov 2017 Pravesh K. Kothari, Jacob Steinhardt

As an immediate corollary, for any $\gamma > 0$, we obtain an efficient algorithm for learning the means of a mixture of $k$ arbitrary \Poincare distributions in $\mathbb{R}^d$ in time $d^{O(1/\gamma)}$ so long as the means have separation $\Omega(k^{\gamma})$.

Clustering

Agnostic Learning by Refuting

no code implementations12 Sep 2017 Pravesh K. Kothari, Roi Livni

We introduce \emph{refutation complexity}, a natural computational analog of Rademacher complexity of a Boolean concept class and show that it exactly characterizes the sample complexity of \emph{efficient} agnostic learning.

PAC learning

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