Quantum automated learning with provable and explainable trainability
Qi Ye, Shuangyue Geng, Zizhao Han, Weikang Li, L.-M. Duan, Dong-Ling, Deng

TL;DR
This paper introduces a gradient-free quantum learning method that converts training into quantum state preparation, with proven convergence and good generalization, suitable for large-scale quantum machine learning applications.
Contribution
It proposes a novel quantum automated learning paradigm that avoids variational parameters and gradient-based methods, with rigorous convergence proofs and practical validation.
Findings
Converges exponentially to the global minimum of the loss function.
Demonstrates effective learning on real-life images and quantum data.
Provides theoretical bounds on generalization error.
Abstract
Machine learning is widely believed to be one of the most promising practical applications of quantum computing. Existing quantum machine learning schemes typically employ a quantum-classical hybrid approach that relies crucially on gradients of model parameters. Such an approach lacks provable convergence to global minima and will become infeasible as quantum learning models scale up. Here, we introduce quantum automated learning, where no variational parameter is involved and the training process is converted to quantum state preparation. In particular, we encode training data into unitary operations and iteratively evolve a random initial state under these unitaries and their inverses, with a target-oriented perturbation towards higher prediction accuracy sandwiched in between. Under reasonable assumptions, we rigorously prove that the evolution converges exponentially to the desired…
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Taxonomy
TopicsQuantum Computing Algorithms and Architecture · Quantum Information and Cryptography
