首页> 外文会议>International Colloquium on Automata, Languages and Programming(ICALP 2005); 20050711-15; Lisbon(PT) >On the Power of Random Bases in Fourier Sampling: Hidden Subgroup Problem in the Heisenberg Group
【24h】

On the Power of Random Bases in Fourier Sampling: Hidden Subgroup Problem in the Heisenberg Group

机译:关于傅里叶抽样中随机基的幂:海森堡组中的隐藏子组问题

获取原文
获取原文并翻译 | 示例

摘要

The hidden subgroup problem (HSP) offers a unified framework to study problems of group-theoretical nature in quantum computing such as order finding and the discrete logarithm problem. While it is known that Fourier sampling provides an efficient solution in the abelian case, not much is known for general non-abelian groups. Recently, some authors raised the question as to whether post-processing the Fourier spectrum by measuring in a random orthonormal basis helps for solving the HSP. Several negative results on the shortcomings of this random strong method are known. In this paper however, we show that the random strong method can be quite powerful under certain conditions on the group G. We define a parameter r(G) and show that O((log ╚OG∣/r(G))~2) iterations of the random strong method give enough classical information to solve the HSP. We illustrate the power of the random strong method via a concrete example of the HSP over finite Heisenberg groups. We show that r(G) = Ω(1) for these groups; hence the HSP can be solved using polynomially many random strong Fourier samplings followed by a possibly exponential classical post-processing without further queries. The quantum part of our algorithm consists of a polynomial computation followed by measuring in a random orthonormal basis. As an interesting by-product of our work, we get an algorithm for solving the state identification problem for a set of nearly orthogonal pure quantum states.
机译:隐藏子组问题(HSP)提供了一个统一的框架,用于研究量子计算中的组理论性质的问题,例如顺序查找和离散对数问题。尽管已知傅立叶采样在阿贝尔情况下提供了一种有效的解决方案,但对于一般的非阿贝尔群体而言,了解得很少。最近,一些作者提出了一个问题,即通过在随机正交基础上进行测量来对傅立叶谱进行后处理是否有助于解决HSP。关于这种随机强方法的缺点的一些负面结果是已知的。但是,在本文中,我们证明了随机强方法在某些条件下对G组可能是非常强大的。我们定义了参数r(G)并证明O((log ╚OG∣ / r(G))〜2 )随机强方法的迭代给出了足以解决HSP的经典信息。我们通过在有限的Heisenberg群上的HSP的一个具体示例来说明随机强方法的功能。我们证明这些组的r(G)=Ω(1);因此,可以使用多项式许多随机强傅里叶采样,然后进行可能的指数式经典后处理来求解HSP,而无需进一步查询。我们算法的量子部分包括多项式计算,然后在随机正交基础上进行测量。作为我们工作的有趣副产品,我们获得了一种算法,用于解决一组几乎正交的纯量子态的状态识别问题。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号