Extended Learning Graphs for Triangle Finding

Algorithmica(2019)

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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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