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      Capacity and quantum geometry of parametrized quantum circuits

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          Abstract

          To harness the potential of noisy intermediate-scale quantum devices, it is paramount to find the best type of circuits to run hybrid quantum-classical algorithms. Key candidates are parametrized quantum circuits that can be effectively implemented on current devices. Here, we evaluate the capacity and trainability of these circuits using the geometric structure of the parameter space via the effective quantum dimension, which reveals the expressive power of circuits in general as well as of particular initialization strategies. We assess the representation power of various popular circuit types and find striking differences depending on the type of entangling gates used. Particular circuits are characterized by scaling laws in their expressiveness. We identify a transition in the quantum geometry of the parameter space, which leads to a decay of the quantum natural gradient for deep circuits. For shallow circuits, the quantum natural gradient can be orders of magnitude larger in value compared to the regular gradient; however, both of them can suffer from vanishing gradients. By tuning a fixed set of circuit parameters to randomized ones, we find a region where the circuit is expressive, but does not suffer from barren plateaus, hinting at a good way to initialize circuits. Our results enhance the understanding of parametrized quantum circuits for improving variational quantum algorithms.

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          Author and article information

          Journal
          02 February 2021
          Article
          2102.01659
          347c8577-5558-4996-94fb-f72ed1b624cb

          http://arxiv.org/licenses/nonexclusive-distrib/1.0/

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          Custom metadata
          10 pages, 9 figures. Code available at https://github.com/txhaug/quantum-geometry
          quant-ph cs.LG stat.ML

          Quantum physics & Field theory,Machine learning,Artificial intelligence
          Quantum physics & Field theory, Machine learning, Artificial intelligence

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