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Speeding up Learning Quantum States through Group Equivariant Convolutional Quantum Ansätze

14 December 2021
Han Zheng
Zimu Li
Junyu Liu
Sergii Strelchuk
Risi Kondor
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Abstract

We develop a theoretical framework for SnS_nSn​-equivariant convolutional quantum circuits with SU(d)(d)(d)-symmetry, building on and significantly generalizing Jordan's Permutational Quantum Computing (PQC) formalism based on Schur-Weyl duality connecting both SU(d)(d)(d) and SnS_nSn​ actions on qudits. In particular, we utilize the Okounkov-Vershik approach to prove Harrow's statement (Ph.D. Thesis 2005 p.160) on the equivalence between SU⁡(d)\operatorname{SU}(d)SU(d) and SnS_nSn​ irrep bases and to establish the SnS_nSn​-equivariant Convolutional Quantum Alternating Ans\"atze (SnS_nSn​-CQA) using Young-Jucys-Murphy (YJM) elements. We prove that SnS_nSn​-CQA is able to generate any unitary in any given SnS_nSn​ irrep sector, which may serve as a universal model for a wide array of quantum machine learning problems with the presence of SU(ddd) symmetry. Our method provides another way to prove the universality of Quantum Approximate Optimization Algorithm (QAOA) and verifies that 4-local SU(ddd) symmetric unitaries are sufficient to build generic SU(ddd) symmetric quantum circuits up to relative phase factors. We present numerical simulations to showcase the effectiveness of the ans\"atze to find the ground state energy of the J1J_1J1​--J2J_2J2​ antiferromagnetic Heisenberg model on the rectangular and Kagome lattices. Our work provides the first application of the celebrated Okounkov-Vershik's SnS_nSn​ representation theory to quantum physics and machine learning, from which to propose quantum variational ans\"atze that strongly suggests to be classically intractable tailored towards a specific optimization problem.

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