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Open AccessJournal ArticleDOI

Randomized Distributed Edge Coloring via an Extension of the Chernoff--Hoeffding Bounds

TLDR
Fast and simple randomized algorithms for edge coloring a graph in the synchronous distributed point-to-point model of computation and new techniques for proving upper bounds on the tail probabilities of certain random variables which are not stochastically independent are introduced.
Abstract
Certain types of routing, scheduling, and resource-allocation problems in a distributed setting can be modeled as edge-coloring problems We present fast and simple randomized algorithms for edge coloring a graph in the synchronous distributed point-to-point model of computation Our algorithms compute an edge coloring of a graph $G$ with $n$ nodes and maximum degree $\Delta$ with at most $16 \Delta + O(\log^{1+ \delta} n)$ colors with high probability (arbitrarily close to 1) for any fixed $\delta > 0$; they run in polylogarithmic time The upper bound on the number of colors improves upon the $(2 \Delta - 1)$-coloring achievable by a simple reduction to vertex coloring To analyze the performance of our algorithms, we introduce new techniques for proving upper bounds on the tail probabilities of certain random variables The Chernoff--Hoeffding bounds are fundamental tools that are used very frequently in estimating tail probabilities However, they assume stochastic independence among certain random variables, which may not always hold Our results extend the Chernoff--Hoeffding bounds to certain types of random variables which are not stochastically independent We believe that these results are of independent interest and merit further study

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Citations
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Proceedings ArticleDOI

Approximation algorithms for time-constrained scheduling on line networks

TL;DR: This work considers the problem of time-constrained scheduling of packets in a communication network, and gives approximation algorithms that achieve (expected) approximation ratio of O(max{log*n--log*B,1}+max{ log*Σ-log*C, 1}), where n is the length of the line, and Σ is the maximum slack a message can have.
Dissertation

Robust network computation

TL;DR: A new, universally optimal, edge-biconnectivity algorithm for the classical message-passing model of computation, and a near-optimal sub-linear algorithm for identifying bridges, when all nodes are activated simultaneously.
Proceedings ArticleDOI

Interviewing secretaries in parallel

TL;DR: In this setting secretaries arrive into multiple queues, and are interviewed in parallel, with the aim of recruiting several secretaries in a timely manner, and provides both upper and lower bounds on the efficiency of the corresponding interviewing policies.
Journal Article

Constructive Proofs of Concentration Bounds.

TL;DR: A combinatorial proof of the Chernoff-Hoeffding concentration bound, which says that the sum of independent {0, 1}- valued random variables is highly concentrated around the expected value, is given.
Proceedings ArticleDOI

Beating $1-\frac{1}{e}$ for Ordered Prophets

TL;DR: In this paper, a threshold-based algorithm for the prophet inequality with n iid distributions is presented, which is a 0.738-approximation algorithm, beating the conjecture of Hill and Kertz.
References
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Book

Graph theory

Frank Harary
Book ChapterDOI

Probability Inequalities for sums of Bounded Random Variables

TL;DR: In this article, upper bounds for the probability that the sum S of n independent random variables exceeds its mean ES by a positive number nt are derived for certain sums of dependent random variables such as U statistics.
Book

The Probabilistic Method

Joel Spencer
TL;DR: A particular set of problems - all dealing with “good” colorings of an underlying set of points relative to a given family of sets - is explored.
Journal ArticleDOI

A Measure of Asymptotic Efficiency for Tests of a Hypothesis Based on the sum of Observations

TL;DR: In this paper, it was shown that the likelihood ratio test for fixed sample size can be reduced to this form, and that for large samples, a sample of size $n$ with the first test will give about the same probabilities of error as a sample with the second test.
Journal ArticleDOI

Locality in distributed graph algorithms

TL;DR: This model focuses on the issue of locality in distributed processing, namely, to what extent a global solution to a computational problem can be obtained from locally available data.