39 research outputs found

    Relations between automata and the simple k-path problem

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    Let GG be a directed graph on nn vertices. Given an integer k<=nk<=n, the SIMPLE kk-PATH problem asks whether there exists a simple kk-path in GG. In case GG is weighted, the MIN-WT SIMPLE kk-PATH problem asks for a simple kk-path in GG of minimal weight. The fastest currently known deterministic algorithm for MIN-WT SIMPLE kk-PATH by Fomin, Lokshtanov and Saurabh runs in time O(2.851kβ‹…nO(1)β‹…log⁑W)O(2.851^k\cdot n^{O(1)}\cdot \log W) for graphs with integer weights in the range [βˆ’W,W][-W,W]. This is also the best currently known deterministic algorithm for SIMPLE k-PATH- where the running time is the same without the log⁑W\log W factor. We define Lk(n)βŠ†[n]kL_k(n)\subseteq [n]^k to be the set of words of length kk whose symbols are all distinct. We show that an explicit construction of a non-deterministic automaton (NFA) of size f(k)β‹…nO(1)f(k)\cdot n^{O(1)} for Lk(n)L_k(n) implies an algorithm of running time O(f(k)β‹…nO(1)β‹…log⁑W)O(f(k)\cdot n^{O(1)}\cdot \log W) for MIN-WT SIMPLE kk-PATH when the weights are non-negative or the constructed NFA is acyclic as a directed graph. We show that the algorithm of Kneis et al. and its derandomization by Chen et al. for SIMPLE kk-PATH can be used to construct an acylic NFA for Lk(n)L_k(n) of size Oβˆ—(4k+o(k))O^*(4^{k+o(k)}). We show, on the other hand, that any NFA for Lk(n)L_k(n) must be size at least 2k2^k. We thus propose closing this gap and determining the smallest NFA for Lk(n)L_k(n) as an interesting open problem that might lead to faster algorithms for MIN-WT SIMPLE kk-PATH. We use a relation between SIMPLE kk-PATH and non-deterministic xor automata (NXA) to give another direction for a deterministic algorithm with running time Oβˆ—(2k)O^*(2^k) for SIMPLE kk-PATH

    Parameterized Distributed Algorithms

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    In this work, we initiate a thorough study of graph optimization problems parameterized by the output size in the distributed setting. In such a problem, an algorithm decides whether a solution of size bounded by k exists and if so, it finds one. We study fundamental problems, including Minimum Vertex Cover (MVC), Maximum Independent Set (MaxIS), Maximum Matching (MaxM), and many others, in both the LOCAL and CONGEST distributed computation models. We present lower bounds for the round complexity of solving parameterized problems in both models, together with optimal and near-optimal upper bounds. Our results extend beyond the scope of parameterized problems. We show that any LOCAL (1+epsilon)-approximation algorithm for the above problems must take Omega(epsilon^{-1}) rounds. Joined with the (epsilon^{-1}log n)^{O(1)} rounds algorithm of [Ghaffari et al., 2017] and the Omega (sqrt{(log n)/(log log n)}) lower bound of [Fabian Kuhn et al., 2016], the lower bounds match the upper bound up to polynomial factors in both parameters. We also show that our parameterized approach reduces the runtime of exact and approximate CONGEST algorithms for MVC and MaxM if the optimal solution is small, without knowing its size beforehand. Finally, we propose the first o(n^2) rounds CONGEST algorithms that approximate MVC within a factor strictly smaller than 2

    Efficient Summing over Sliding Windows

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    This paper considers the problem of maintaining statistic aggregates over the last W elements of a data stream. First, the problem of counting the number of 1's in the last W bits of a binary stream is considered. A lower bound of {\Omega}(1/{\epsilon} + log W) memory bits for W{\epsilon}-additive approximations is derived. This is followed by an algorithm whose memory consumption is O(1/{\epsilon} + log W) bits, indicating that the algorithm is optimal and that the bound is tight. Next, the more general problem of maintaining a sum of the last W integers, each in the range of {0,1,...,R}, is addressed. The paper shows that approximating the sum within an additive error of RW{\epsilon} can also be done using {\Theta}(1/{\epsilon} + log W) bits for {\epsilon}={\Omega}(1/W). For {\epsilon}=o(1/W), we present a succinct algorithm which uses B(1 + o(1)) bits, where B={\Theta}(Wlog(1/W{\epsilon})) is the derived lower bound. We show that all lower bounds generalize to randomized algorithms as well. All algorithms process new elements and answer queries in O(1) worst-case time.Comment: A shorter version appears in SWAT 201

    Optimal Elephant Flow Detection

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    Monitoring the traffic volumes of elephant flows, including the total byte count per flow, is a fundamental capability for online network measurements. We present an asymptotically optimal algorithm for solving this problem in terms of both space and time complexity. This improves on previous approaches, which can only count the number of packets in constant time. We evaluate our work on real packet traces, demonstrating an up to X2.5 speedup compared to the best alternative.Comment: Accepted to IEEE INFOCOM 201

    Optimal Distributed Covering Algorithms

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    We present a time-optimal deterministic distributed algorithm for approximating a minimum weight vertex cover in hypergraphs of rank f. This problem is equivalent to the Minimum Weight Set Cover problem in which the frequency of every element is bounded by f. The approximation factor of our algorithm is (f+epsilon). Let Delta denote the maximum degree in the hypergraph. Our algorithm runs in the congest model and requires O(log{Delta} / log log Delta) rounds, for constants epsilon in (0,1] and f in N^+. This is the first distributed algorithm for this problem whose running time does not depend on the vertex weights nor the number of vertices. Thus adding another member to the exclusive family of provably optimal distributed algorithms. For constant values of f and epsilon, our algorithm improves over the (f+epsilon)-approximation algorithm of [Fabian Kuhn et al., 2006] whose running time is O(log Delta + log W), where W is the ratio between the largest and smallest vertex weights in the graph. Our algorithm also achieves an f-approximation for the problem in O(f log n) rounds, improving over the classical result of [Samir Khuller et al., 1994] that achieves a running time of O(f log^2 n). Finally, for weighted vertex cover (f=2) our algorithm achieves a deterministic running time of O(log n), matching the randomized previously best result of [Koufogiannakis and Young, 2011]. We also show that integer covering-programs can be reduced to the Minimum Weight Set Cover problem in the distributed setting. This allows us to achieve an (f+epsilon)-approximate integral solution in O((1+f/log n)* ((log Delta)/(log log Delta) + (f * log M)^{1.01}* log epsilon^{-1}* (log Delta)^{0.01})) rounds, where f bounds the number of variables in a constraint, Delta bounds the number of constraints a variable appears in, and M=max {1, ceil[1/a_{min}]}, where a_{min} is the smallest normalized constraint coefficient. This improves over the results of [Fabian Kuhn et al., 2006] for the integral case, which combined with rounding achieves the same guarantees in O(epsilon^{-4}* f^4 * log f * log(M * Delta)) rounds
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