Learning-Graph-Based Quantum Algorithm for k-distinctness
Abstract
We present a quantum algorithm solving the k-distinctness problem in O(n1-2k-2/(2k-1)) queries with a bounded error. This improves the previous O(nk/(k+1))-query algorithm by Ambainis. The construction uses a modified learning graph approach. Compared to the recent paper by Belovs and Lee arXiv:1108.3022, the algorithm doesn't require any prior information on the input, and the complexity analysis is much simpler. Additionally, we introduce an O(nα1/6) algorithm for the graph collision problem where α is the independence number of the graph.
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