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Quantum and Randomized Lower Bounds for Local Search on Vertex-Transitive Graphs

机译:Quantum和随机的下界,用于顶点传递图对的本地搜索

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We study the problem of local search on a graph. Given a real-valued black-box function f on the graph's vertices, this is the problem of determining a local minimum of f-a vertex v for which f(v) is no more than f evaluated at any of v's neighbors. In 1983, Aldous gave the first strong lower bounds for the problem, showing that any randomized algorithm requires Ω(2{sup}(n/2-o(1))) queries to determine a local minima on the n-dimensional hypercube. The next major step forward was not until 2004 when Aaronson, introducing a new method for query complexity bounds, both strengthened this lower bound to Ω(2{sup}(n/2)/n{sup}2) and gave an analogous lower bound on the quantum query complexity. While these bounds are very strong, they are known only for narrow families of graphs (hypercubes and grids). We show how to generalize Aaronson's techniques in order to give randomized (and quantum) lower bounds on the query complexity of local search for the family of vertex-transitive graphs. In particular, we show that for any vertex-transitive graph G of N vertices and diameter d, the randomized and quantum query complexities for local search on G are Ω(N{sup}(1/2)/(d log N)) and Ω(N{sup}(1/4)/(d log N){sup}(1/2)), respectively.
机译:我们研究了图形本地搜索问题。在图形的顶点上进行了一个实值的黑盒功能F,这是确定F-A顶点V的局部最小值的问题,因为在任何V的邻居中评估了f(v)的v v顶点v。 1983年,Aldous给出了第一个强大的下限进行了问题,表明任何随机算法需要ω(2 {sup}(n / 2-o(1)))查询,以确定N维超高机上的本地最小值。前进的下一个重大步骤直到2004年Aaronson引入了一个新的查询复杂性界限的方法,都强化了该下限到ω(2 {sup}(n / 2)/ n {sup} 2)并给出了类似的下部绑定量子查询复杂性。虽然这些界限非常强烈,但它们仅为狭窄的图形(超速和网格)而闻名。我们展示了如何概括Aaronson的技术,以便在本地搜索顶点传递图形的本地搜索的查询复杂性上进行随机(和量子)。特别地,我们表明,对于n个顶点和直径d的任何顶点 - 传递图G,对于g的本地搜索,随机和量子查询复杂性是ω(n {sup}(1/2)/(d log n))分别和ω(n {sup}(1/4)/(d log n){sup}(1/2)))。

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