11,311 research outputs found

    Depth-Independent Lower bounds on the Communication Complexity of Read-Once Boolean Formulas

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    We show lower bounds of Ω(n)\Omega(\sqrt{n}) and Ω(n1/4)\Omega(n^{1/4}) on the randomized and quantum communication complexity, respectively, of all nn-variable read-once Boolean formulas. Our results complement the recent lower bound of Ω(n/8d)\Omega(n/8^d) by Leonardos and Saks and Ω(n/2Ω(dlogd))\Omega(n/2^{\Omega(d\log d)}) by Jayram, Kopparty and Raghavendra for randomized communication complexity of read-once Boolean formulas with depth dd. We obtain our result by "embedding" either the Disjointness problem or its complement in any given read-once Boolean formula.Comment: 5 page

    Finding the Median (Obliviously) with Bounded Space

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    We prove that any oblivious algorithm using space SS to find the median of a list of nn integers from {1,...,2n}\{1,...,2n\} requires time Ω(nloglogSn)\Omega(n \log\log_S n). This bound also applies to the problem of determining whether the median is odd or even. It is nearly optimal since Chan, following Munro and Raman, has shown that there is a (randomized) selection algorithm using only ss registers, each of which can store an input value or O(logn)O(\log n)-bit counter, that makes only O(loglogsn)O(\log\log_s n) passes over the input. The bound also implies a size lower bound for read-once branching programs computing the low order bit of the median and implies the analog of PNPcoNPP \ne NP \cap coNP for length o(nloglogn)o(n \log\log n) oblivious branching programs

    Quantum vs. Classical Read-once Branching Programs

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    The paper presents the first nontrivial upper and lower bounds for (non-oblivious) quantum read-once branching programs. It is shown that the computational power of quantum and classical read-once branching programs is incomparable in the following sense: (i) A simple, explicit boolean function on 2n input bits is presented that is computable by error-free quantum read-once branching programs of size O(n^3), while each classical randomized read-once branching program and each quantum OBDD for this function with bounded two-sided error requires size 2^{\Omega(n)}. (ii) Quantum branching programs reading each input variable exactly once are shown to require size 2^{\Omega(n)} for computing the set-disjointness function DISJ_n from communication complexity theory with two-sided error bounded by a constant smaller than 1/2-2\sqrt{3}/7. This function is trivially computable even by deterministic OBDDs of linear size. The technically most involved part is the proof of the lower bound in (ii). For this, a new model of quantum multi-partition communication protocols is introduced and a suitable extension of the information cost technique of Jain, Radhakrishnan, and Sen (2003) to this model is presented.Comment: 35 pages. Lower bound for disjointness: Error in application of info theory corrected and regularity of quantum read-once BPs (each variable at least once) added as additional assumption of the theorem. Some more informal explanations adde

    Quantum Branching Programs and Space-Bounded Nonuniform Quantum Complexity

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    In this paper, the space complexity of nonuniform quantum computations is investigated. The model chosen for this are quantum branching programs, which provide a graphic description of sequential quantum algorithms. In the first part of the paper, simulations between quantum branching programs and nonuniform quantum Turing machines are presented which allow to transfer lower and upper bound results between the two models. In the second part of the paper, different variants of quantum OBDDs are compared with their deterministic and randomized counterparts. In the third part, quantum branching programs are considered where the performed unitary operation may depend on the result of a previous measurement. For this model a simulation of randomized OBDDs and exponential lower bounds are presented.Comment: 45 pages, 3 Postscript figures. Proofs rearranged, typos correcte

    Sensitivity Conjecture and Log-rank Conjecture for functions with small alternating numbers

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    The Sensitivity Conjecture and the Log-rank Conjecture are among the most important and challenging problems in concrete complexity. Incidentally, the Sensitivity Conjecture is known to hold for monotone functions, and so is the Log-rank Conjecture for f(xy)f(x \wedge y) and f(xy)f(x\oplus y) with monotone functions ff, where \wedge and \oplus are bit-wise AND and XOR, respectively. In this paper, we extend these results to functions ff which alternate values for a relatively small number of times on any monotone path from 0n0^n to 1n1^n. These deepen our understandings of the two conjectures, and contribute to the recent line of research on functions with small alternating numbers

    On Computational Power of Quantum Read-Once Branching Programs

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    In this paper we review our current results concerning the computational power of quantum read-once branching programs. First of all, based on the circuit presentation of quantum branching programs and our variant of quantum fingerprinting technique, we show that any Boolean function with linear polynomial presentation can be computed by a quantum read-once branching program using a relatively small (usually logarithmic in the size of input) number of qubits. Then we show that the described class of Boolean functions is closed under the polynomial projections.Comment: In Proceedings HPC 2010, arXiv:1103.226
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