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Query Complexity of Matroids

机译:拟阵的查询复杂度

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Let M be a bridgeless matroid on ground set {1,..., n} and f_M∶{0,1}~n→{0,1} be the indicator function of its independent sets. A folklore fact is that f_m is evasive, i.e., D(f_M) = n where D(f) denotes the deterministic decision tree complexity of f. Here we prove query complexity lower bounds for f_M in three stronger query models: (a) D_⊕(f_M) = Ω(n), where D⊕(f) denotes the parity decision tree complexity of f; (b) R(f_M) = Ω(n/log n), where R(f) denotes the bounded error randomized decision tree complexity of f; and (c) Q(f_M) = Ω(n~(1/2)), where Q(f) denotes the bounded error quantum query complexity of f. To prove (a) we propose a method to lower bound the sparsity of a Boolean function by upper bounding its partition size. Our method yields a new application of a somewhat surprising result of Gopalan et al. that connects the sparsity to the granularity of the function. As another application of our method, we confirm the Log-rank Conjecture for XOR functions, up to a poly-logarithmic factor, for a fairly large class of AC~0- XOR functions. To prove (b) and (c) we relate the ear decomposition of matroids to the critical inputs of appropriate tribe functions and then use the existing randomized and quantum lower bounds for these functions.
机译:令M为地面集合{1,...,n}上的无桥拟阵,f_M∶ {{0,1}〜n→{0,1}是其独立集合的指示函数。民间传说事实是f_m是逃避的,即D(f_M)= n,其中D(f)表示f的确定性决策树复杂度。在这里,我们在三个更强的查询模型中证明了f_M的查询复杂度下界:(a)D_⊕(f_M)=Ω(n),其中D⊕(f)表示f的奇偶决策树复杂度; (b)R(f_M)=Ω(n / log n),其中R(f)表示f的有界误差随机决策树复杂度; (c)Q(f_M)=Ω(n〜(1/2)),其中Q(f)表示f的有界误差量子查询复杂度。为了证明(a),我们提出了一种通过限制布尔函数的分区大小来降低布尔函数稀疏性的方法。我们的方法在Gopalan等人的研究中取得了一些令人惊讶的结果。将稀疏性与函数的粒度联系​​起来。作为我们方法的另一种应用,对于相当大类的AC〜0-XOR函数,我们确认了XOR函数的对数秩猜想,直到一个对数因子为止。为了证明(b)和(c),我们将类人动物的耳朵分解与适当的部落函数的关键输入相关联,然后对这些函数使用现有的随机下界和量子下界。

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