QUANT-PHLGJun 14, 2022

Bandwidth Enables Generalization in Quantum Kernel Models

arXiv:2206.06686v356 citationsh-index: 39
Originality Incremental advance
AI Analysis

This addresses a key bottleneck for realizing quantum advantage in machine learning by providing a method to improve generalization in quantum models, though it is incremental as it builds on existing quantum kernel frameworks.

The paper tackles the problem of poor generalization in quantum kernel models with many qubits by introducing a hyperparameter called quantum kernel bandwidth, showing that adjusting it can enable good generalization for well-aligned targets, as demonstrated empirically on challenging datasets.

Quantum computers are known to provide speedups over classical state-of-the-art machine learning methods in some specialized settings. For example, quantum kernel methods have been shown to provide an exponential speedup on a learning version of the discrete logarithm problem. Understanding the generalization of quantum models is essential to realizing similar speedups on problems of practical interest. Recent results demonstrate that generalization is hindered by the exponential size of the quantum feature space. Although these results suggest that quantum models cannot generalize when the number of qubits is large, in this paper we show that these results rely on overly restrictive assumptions. We consider a wider class of models by varying a hyperparameter that we call quantum kernel bandwidth. We analyze the large-qubit limit and provide explicit formulas for the generalization of a quantum model that can be solved in closed form. Specifically, we show that changing the value of the bandwidth can take a model from provably not being able to generalize to any target function to good generalization for well-aligned targets. Our analysis shows how the bandwidth controls the spectrum of the kernel integral operator and thereby the inductive bias of the model. We demonstrate empirically that our theory correctly predicts how varying the bandwidth affects generalization of quantum models on challenging datasets, including those far outside our theoretical assumptions. We discuss the implications of our results for quantum advantage in machine learning.

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