C-Nash:用于求解混合策略纳什均衡的新型铁电计算内存架构

Yu Qian, Kai Ni, Thomas Kämpfe, Cheng Zhuo, Xunzhao Yin
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摘要

纳什均衡(Nash equilibrium,NE)的概念在博弈论中举足轻重,在各行各业都受到广泛关注。最近的研究进展引入了几种量子纳什求解器,旨在通过将松弛项纳入目标函数来识别纯策略 NE 解(即二元解),通常称为松弛-四元无约束二元优化(S-QUBO)。然而,将松弛项纳入二次优化会导致目标函数发生变化,从而可能导致不正确的求解。此外,这些量子求解器只能识别有限的纯策略近似解子集,而无法处理混合策略近似解(即十进制解),导致许多解未被发现。在这项工作中,我们提出了一种新型铁电内存计算(CiM)架构 C-Nash,它可以高效处理纯策略和混合策略近地问题解决方案。所提出的架构包括:(i) 一种转换方法,可将二次优化转换为 MAX-QUBO 形式,而无需引入额外的松弛变量,从而避免了目标函数的变化;(ii) 基于铁电场效应晶体管(FeFET)的双交叉条结构,用于存储报酬矩阵和加速 QUBO 形式的核心向量-矩阵-向量(VMV)乘法;(iii) 实现 MAX 形式的赢家通吃(WTA)树和基于两阶段的模拟退火(SA)逻辑,用于搜索近似解。评估结果表明,与基于 D-Wave 的量子方法相比,C-Nash 识别近地解的成功率提高了 68.6%,能找到所有纯近地解和混合近地解,而不是只找到部分纯近地解。此外,与 D-Wave 2000 Q6 和 D-Wave Advantage 4.1 相比,C-Nash 还分别减少了 157.9 倍和 79.0 倍的求解时间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
C-Nash: A Novel Ferroelectric Computing-in-Memory Architecture for Solving Mixed Strategy Nash Equilibrium
The concept of Nash equilibrium (NE), pivotal within game theory, has garnered widespread attention across numerous industries. Recent advancements introduced several quantum Nash solvers aimed at identifying pure strategy NE solutions (i.e., binary solutions) by integrating slack terms into the objective function, commonly referred to as slack-quadratic unconstrained binary optimization (S-QUBO). However, incorporation of slack terms into the quadratic optimization results in changes of the objective function, which may cause incorrect solutions. Furthermore, these quantum solvers only identify a limited subset of pure strategy NE solutions, and fail to address mixed strategy NE (i.e., decimal solutions), leaving many solutions undiscovered. In this work, we propose C-Nash, a novel ferroelectric computing-in-memory (CiM) architecture that can efficiently handle both pure and mixed strategy NE solutions. The proposed architecture consists of (i) a transformation method that converts quadratic optimization into a MAX-QUBO form without introducing additional slack variables, thereby avoiding objective function changes; (ii) a ferroelectric FET (FeFET) based bi-crossbar structure for storing payoff matrices and accelerating the core vector-matrix-vector (VMV) multiplications of QUBO form; (iii) A winner-takes-all (WTA) tree implementing the MAX form and a two-phase based simulated annealing (SA) logic for searching NE solutions. Evaluations show that C-Nash has up to 68.6% increase in the success rate for identifying NE solutions, finding all pure and mixed NE solutions rather than only a portion of pure NE solutions, compared to D-Wave based quantum approaches. Moreover, C-Nash boasts a reduction up to 157.9X/79.0X in time-to-solutions compared to D-Wave 2000 Q6 and D-Wave Advantage 4.1, respectively.
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