An efficient quantum algorithm for generative machine learning
Xun Gao, Zhengyu Zhang, Luming Duan

TL;DR
This paper introduces a quantum algorithm for generative machine learning that exponentially outperforms classical models in representing probability distributions and offers significant speedups in training and inference.
Contribution
It presents a novel quantum generative model demonstrating exponential advantages over classical models in both representation and computational efficiency.
Findings
Quantum generative model exponentially better at representing distributions
Significant speedup in training and inference for certain instances
Establishes a new direction for quantum machine learning applications
Abstract
A central task in the field of quantum computing is to find applications where quantum computer could provide exponential speedup over any classical computer. Machine learning represents an important field with broad applications where quantum computer may offer significant speedup. Several quantum algorithms for discriminative machine learning have been found based on efficient solving of linear algebraic problems, with potential exponential speedup in runtime under the assumption of effective input from a quantum random access memory. In machine learning, generative models represent another large class which is widely used for both supervised and unsupervised learning. Here, we propose an efficient quantum algorithm for machine learning based on a quantum generative model. We prove that our proposed model is exponentially more powerful to represent probability distributions compared…
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Taxonomy
TopicsQuantum Computing Algorithms and Architecture · Quantum many-body systems · Quantum Information and Cryptography
