QUANT-PHLGFeb 16, 2022

Quantum Lazy Training

arXiv:2202.08232v713 citations
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This addresses the training behavior of quantum machine learning models, showing incremental insights into quantum analogs of classical lazy training phenomena.

The paper demonstrates that geometrically local parameterized quantum circuits enter the lazy training regime as the number of qubits increases, proving bounds on parameter changes and linear approximation precision that approach zero with qubit count.

In the training of over-parameterized model functions via gradient descent, sometimes the parameters do not change significantly and remain close to their initial values. This phenomenon is called lazy training, and motivates consideration of the linear approximation of the model function around the initial parameters. In the lazy regime, this linear approximation imitates the behavior of the parameterized function whose associated kernel, called the tangent kernel, specifies the training performance of the model. Lazy training is known to occur in the case of (classical) neural networks with large widths. In this paper, we show that the training of geometrically local parameterized quantum circuits enters the lazy regime for large numbers of qubits. More precisely, we prove bounds on the rate of changes of the parameters of such a geometrically local parameterized quantum circuit in the training process, and on the precision of the linear approximation of the associated quantum model function; both of these bounds tend to zero as the number of qubits grows. We support our analytic results with numerical simulations.

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