在空间光子伊辛机上编码任意伊辛哈密顿子

Jason Sakellariou, Alexis Askitopoulos, Georgios Pastras, Symeon I. Tsintzos
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引用次数: 0

摘要

光子伊辛机是一种新兴的计算范式,旨在解决可简化为寻找伊辛模型基态的组合优化问题。事实证明,空间光子伊兴机在模拟完全连接的大规模自旋系统方面具有优势。然而,迄今为止,对一般相互作用矩阵$J$的精细控制只能通过特征值分解方法来实现,这种方法要么限制了可扩展性,要么增加了优化过程的执行时间。我们引入并通过实验验证了一种 SPIM 实例,它可以直接控制整个相互作用矩阵,从而可以对具有任意耦合和连通性的伊辛哈密顿进行编码。我们证明了实验测量的伊辛能量与理论预期值的一致性,然后继续解决非加权和加权图分割问题,通过模拟退火展示了向最优解的系统性收敛。我们的方法在不牺牲系统固有优势的前提下,极大地扩展了 SPIM 在实际应用中的适用性,并为在 SPIM 设备上编码已知等价于 Ising 模型的所有 NP 问题铺平了道路。
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Encoding arbitrary Ising Hamiltonians on Spatial Photonic Ising Machines
Photonic Ising Machines constitute an emergent new paradigm of computation, geared towards tackling combinatorial optimization problems that can be reduced to the problem of finding the ground state of an Ising model. Spatial Photonic Ising Machines have proven to be advantageous for simulating fully connected large-scale spin systems. However, fine control of a general interaction matrix $J$ has so far only been accomplished through eigenvalue decomposition methods that either limit the scalability or increase the execution time of the optimization process. We introduce and experimentally validate a SPIM instance that enables direct control over the full interaction matrix, enabling the encoding of Ising Hamiltonians with arbitrary couplings and connectivity. We demonstrate the conformity of the experimentally measured Ising energy with the theoretically expected values and then proceed to solve both the unweighted and weighted graph partitioning problems, showcasing a systematic convergence to an optimal solution via simulated annealing. Our approach greatly expands the applicability of SPIMs for real-world applications without sacrificing any of the inherent advantages of the system, and paves the way to encoding the full range of NP problems that are known to be equivalent to Ising models, on SPIM devices.
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