Goemans-Williamson MAXCUT approximation algorithm on Loihi

Bradley H. Theilman, J. Aimone
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引用次数: 1

Abstract

Approximation algorithms for computationally complex problems are of significant importance in computing as they provide computational guarantees of obtaining practically useful results for otherwise computationally intractable problems. The demonstration of implementing formal approximation algorithms on spiking neuromorphic hardware is a critical step in establishing that neuromorphic computing can offer cost-effective solutions to significant optimization problems while retaining important computational guarantees on the quality of solutions. Here, we demonstrate that the Loihi platform is capable of effectively implementing the Goemans-Williamson (GW) approximation algorithm for MAXCUT, an NP-hard problem that has applications ranging from VLSI design to network analysis. We show that a Loihi implementation of the approximation step of the GW algorithm obtains equivalent maximum cuts of graphs as conventional algorithms, and we describe how different aspects of architecture precision impacts the algorithm performance.
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Loihi上的Goemans-Williamson MAXCUT近似算法
计算复杂问题的近似算法在计算中具有重要意义,因为它们为计算棘手问题获得实际有用的结果提供了计算保证。在尖峰神经形态硬件上实现形式近似算法的演示是建立神经形态计算可以为重大优化问题提供成本效益解决方案的关键一步,同时保留对解决方案质量的重要计算保证。在这里,我们证明了Loihi平台能够有效地实现MAXCUT的Goemans-Williamson (GW)近似算法,MAXCUT是一个np困难问题,其应用范围从VLSI设计到网络分析。我们展示了GW算法的近似步骤的Loihi实现与传统算法一样获得等价的图的最大切割,并且我们描述了架构精度的不同方面如何影响算法性能。
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