Search Results for author: Jan Vondrak

Found 8 papers, 0 papers with code

Submodular Maximization Through Barrier Functions

no code implementations NeurIPS 2020 Ashwinkumar Badanidiyuru, Amin Karbasi, Ehsan Kazemi, Jan Vondrak

In this paper, we introduce a novel technique for constrained submodular maximization, inspired by barrier functions in continuous optimization.

Movie Recommendation

High probability generalization bounds for uniformly stable algorithms with nearly optimal rate

no code implementations27 Feb 2019 Vitaly Feldman, Jan Vondrak

Specifically, their bound on the estimation error of any $\gamma$-uniformly stable learning algorithm on $n$ samples and range in $[0, 1]$ is $O(\gamma \sqrt{n \log(1/\delta)} + \sqrt{\log(1/\delta)/n})$ with probability $\geq 1-\delta$.

Generalization Bounds Vocal Bursts Intensity Prediction

Generalization Bounds for Uniformly Stable Algorithms

no code implementations NeurIPS 2018 Vitaly Feldman, Jan Vondrak

Specifically, for a loss function with range bounded in $[0, 1]$, the generalization error of a $\gamma$-uniformly stable learning algorithm on $n$ samples is known to be within $O((\gamma +1/n) \sqrt{n \log(1/\delta)})$ of the empirical error with probability at least $1-\delta$.

Generalization Bounds

Information-theoretic lower bounds for convex optimization with erroneous oracles

no code implementations NeurIPS 2015 Yaron Singer, Jan Vondrak

We consider the problem of optimizing convex and concave functions with access to an erroneous zeroth-order oracle.

Tight Bounds on Low-degree Spectral Concentration of Submodular and XOS functions

no code implementations13 Apr 2015 Vitaly Feldman, Jan Vondrak

This improves on previous approaches that all showed an upper bound of $O(1/\epsilon^2)$ for submodular and XOS functions.

Combinatorial Optimization PAC learning

Lazier Than Lazy Greedy

no code implementations28 Sep 2014 Baharan Mirzasoleiman, Ashwinkumar Badanidiyuru, Amin Karbasi, Jan Vondrak, Andreas Krause

Is it possible to maximize a monotone submodular function faster than the widely used lazy greedy algorithm (also known as accelerated greedy), both in theory and practice?

Clustering Data Summarization

Optimal Bounds on Approximation of Submodular and XOS Functions by Juntas

no code implementations12 Jul 2013 Vitaly Feldman, Jan Vondrak

This is the first algorithm in the PMAC model that over the uniform distribution can achieve a constant approximation factor arbitrarily close to 1 for all submodular functions.

PAC learning

Representation, Approximation and Learning of Submodular Functions Using Low-rank Decision Trees

no code implementations2 Apr 2013 Vitaly Feldman, Pravesh Kothari, Jan Vondrak

We show that these structural results can be exploited to give an attribute-efficient PAC learning algorithm for submodular functions running in time $\tilde{O}(n^2) \cdot 2^{O(1/\epsilon^{4})}$.

Attribute PAC learning

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