二进制数
感知器
哈密顿量(控制论)
算法
计算机科学
模拟退火
人工神经网络
量子
最优化问题
二次无约束二元优化
量子计算机
数学优化
数学
人工智能
物理
量子力学
算术
作者
Pietro Torta,Glen Bigan Mbeng,Carlo Baldassi,Riccardo Zecchina,Giuseppe E. Santoro
出处
期刊:Cornell University - arXiv
日期:2021-12-19
标识
DOI:10.48550/arxiv.2112.10219
摘要
We apply digitized Quantum Annealing (QA) and Quantum Approximate Optimization Algorithm (QAOA) to a paradigmatic task of supervised learning in artificial neural networks: the optimization of synaptic weights for the binary perceptron. At variance with the usual QAOA applications to MaxCut, or to quantum spin-chains ground state preparation, the classical Hamiltonian is characterized by highly non-local multi-spin interactions. Yet, we provide evidence for the existence of optimal smooth solutions for the QAOA parameters, which are transferable among typical instances of the same problem, and we prove numerically an enhanced performance of QAOA over traditional QA. We also investigate on the role of the QAOA optimization landscape geometry in this problem, showing that the detrimental effect of a gap-closing transition encountered in QA is also negatively affecting the performance of our implementation of QAOA.
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