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QUANTUM TUNNELING IN THE LANDSCAPE OF OPTIMIZATION

机译:优化景观中的量子隧道

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摘要

This is a non-technical review, intended for a broad audience from diverse fields of science. Here we discuss searches as solutions to optimization problems, and how quantum mechanics can possibly help in it. To maintain unrestricted search over the whole space of interest, the search dynamics must be ergodic. This is often not the case when the searcher is "classical", i.e., behaving like a classical system moving through a rugged energy landscape. This has remained a major hindrance for versatile heuristics like simulated thermal annealing in finding a good (not to talk about the best) solution in presence of high energy/cost barriers. The stagnated situation was stirred fundamentally by the idea of quantum tunnelling, or, to be more precise, it's dramatic role proposed in the context of spin glass1, which eventually helped forming the rationale behind one of the most promising form of quantum computation of the present day, namely, quantum annealing. The potential of the idea, however, is not limited to the strict framework of its most popular version, the adiabatic quantum annealing, but can possibly extend more effectively to other, less restrictive forms of quantum search heuristics that could be designed.
机译:这是一项非技术性的综述,旨在吸引来自不同科学领域的广大读者。在这里,我们讨论作为优化问题解决方案的搜索,以及量子力学如何在其中提供帮助。为了在感兴趣的整个空间上保持不受限制的搜索,搜索动力学必须是遍历遍历的。当搜索者是“经典的”,即表现得像穿越崎energy的能源环境的经典系统时,通常不是这种情况。对于像模拟热退火这样的通用启发式方法,在高能量/成本壁垒的情况下,寻找一种好的(不是最好的解决方案)解决方案仍然是一个主要障碍。量子隧穿的想法从根本上激起了停滞的局面,或者更确切地说,它是在自旋玻璃的背景下提出的戏剧性作用,1最终帮助形成了目前最有前途的量子计算形式之一的理论基础。一天,即量子退火。但是,这种想法的潜力不仅限于最流行版本的严格框架,即绝热量子退火,而且还可以更有效地扩展到可以设计的其他限制性较小的量子搜索启发式形式。

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  • 来源
    《Science and Culture》 |2019年第6期|146-151|共6页
  • 作者

    ARNAB DAS;

  • 作者单位

    School of Physical Sciences, Indian Association for the Cultivation of Science, 2A & 2B Raja S. C. Mullick Road, Kolkata 700032, India;

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  • 正文语种 eng
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