QUANT-PHLGMay 28, 2022

Introducing Non-Linear Activations into Quantum Generative Models

arXiv:2205.14506v412 citationsh-index: 22
Originality Incremental advance
AI Analysis

This addresses the problem of limited non-linearity in quantum machine learning for researchers, though it appears incremental as it builds on existing quantum neuron subroutines and Born Machine frameworks.

The paper tackles the challenge of incorporating non-linear activations into quantum generative models by introducing the Quantum Neuron Born Machine (QNBM), which integrates a neural network structure with the Born Machine framework. The results show that on a challenging distribution, QNBM achieves an almost 3x smaller error rate compared to a linear Quantum Circuit Born Machine with similar parameters.

Due to the linearity of quantum mechanics, it remains a challenge to design quantum generative machine learning models that embed non-linear activations into the evolution of the statevector. However, some of the most successful classical generative models, such as those based on neural networks, involve highly non-linear dynamics for quality training. In this paper, we explore the effect of these dynamics in quantum generative modeling by introducing a model that adds non-linear activations via a neural network structure onto the standard Born Machine framework - the Quantum Neuron Born Machine (QNBM). To achieve this, we utilize a previously introduced Quantum Neuron subroutine, which is a repeat-until-success circuit with mid-circuit measurements and classical control. After introducing the QNBM, we investigate how its performance depends on network size, by training a 3-layer QNBM with 4 output neurons and various input and hidden layer sizes. We then compare our non-linear QNBM to the linear Quantum Circuit Born Machine (QCBM). We allocate similar time and memory resources to each model, such that the only major difference is the qubit overhead required by the QNBM. With gradient-based training, we show that while both models can easily learn a trivial uniform probability distribution, on a more challenging class of distributions, the QNBM achieves an almost 3x smaller error rate than a QCBM with a similar number of tunable parameters. We therefore provide evidence that suggests that non-linearity is a useful resource in quantum generative models, and we put forth the QNBM as a new model with good generative performance and potential for quantum advantage.

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