Extended Learning Graphs for Triangle Finding
Algorithmica(2019)
摘要
We present new quantum algorithms for Triangle Finding improving its best previously known quantum query complexities for both dense and sparse instances. For dense graphs on n vertices, we get a query complexity of O(n^5/4) without any of the extra logarithmic factors present in the previous algorithm of Le Gall [FOCS’14]. For sparse graphs with m≥ n^5/4 edges, we get a query complexity of O(n^11/12m^1/6√(log n)) , which is better than the one obtained by Le Gall and Nakajima [ISAAC’15] when m ≥ n^3/2 . We also obtain an algorithm with query complexity O(n^5/6(mlog n)^1/6+d_2√(n)) where d_2 is the quadratic mean of the degree distribution. Our algorithms are designed and analyzed in a new model of learning graphs that we call extended learning graphs. In addition, we present a framework in order to easily combine and analyze them. As a consequence we get much simpler algorithms and analyses than previous algorithms of Le Gall et al. based on the MNRS quantum walk framework [SICOMP’11].
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关键词
Quantum query complexity, Quantum walk, Triangle Finding, Learning graph
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