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Constrained quantum optimization for extractive summarization on a trapped-ion quantum computer

ORAL

Abstract

Realizing the potential of near-term quantum computers to solve industry-relevant constrained optimization problems is a promising path to quantum advantage. In this work, we consider the extractive summarization constrained-optimization problem and demonstrate the largest-to-date execution of a quantum optimization algorithm that natively preserves constraints on quantum hardware. We report results with the Quantum Alternating Operator Ansatz algorithm with a Hamming-weight-preserving XY mixer (XY-QAOA) on trapped-ion quantum computer. We successfully execute XY-QAOA circuits that restrict the quantum evolution to the in-constraint subspace, using up to 20 qubits and a two-qubit gate depth of up to 159. We demonstrate the necessity of directly encoding the constraints into the quantum circuit by showing the trade-off between the in-constraint probability and the quality of the solution that is implicit if unconstrained quantum optimization methods are used. We show that this trade-off makes choosing good parameters difficult in general. We compare XY-QAOA to the Layer Variational Quantum Eigensolver algorithm, which has a highly expressive constant-depth circuit, and the Quantum Approximate Optimization Algorithm. We discuss the respective trade-offs of the algorithms and implications for their execution on near-term quantum hardware.

Publication: Publication in Scientific Reports of the journal family of Nature on 10/13/2022: https://www.nature.com/articles/s41598-022-20853-w<br>ArXiv preprint: https://arxiv.org/abs/2206.06290

Presenters

  • Romina Yalovetzky

    JPMorgan Chase

Authors

  • Romina Yalovetzky

    JPMorgan Chase

  • Pradeep Niroula

    University of Maryland, College Park

  • Ruslan Shaydulin

    JPMorgan Chase, JPMorgan Chase, New York, NY, USA

  • Pierre Minssen

    JPMorgan Chase

  • Dylan Herman

    JPMorgan Chase, New York, NY, USA, JPMorgan Chase

  • Shaohan Hu

    JPMorgan Chase, New York, NY, USA, JPMorgan Chase

  • Marco Pistoia

    JPMorgan Chase, New York, NY, USA, JPMorgan Chase, JP Morgan Chase