Our new X account is live! Follow @wizwand_team for updates
WorkDL logo mark

Q-RUN: Quantum-Inspired Data Re-uploading Networks

About

Data re-uploading quantum circuits (DRQC) are a key approach to implementing quantum neural networks and have been shown to outperform classical neural networks in fitting high-frequency functions. However, their practical application is limited by the scalability of current quantum hardware. In this paper, we introduce the mathematical paradigm of DRQC into classical models by proposing a quantum-inspired data re-uploading network (Q-RUN), which retains the Fourier-expressive advantages of quantum models without any quantum hardware. Experimental results demonstrate that Q-RUN delivers superior performance across both data modeling and predictive modeling tasks. Compared to the fully connected layers and the state-of-the-art neural network layers, Q-RUN reduces model parameters while decreasing error by approximately one to three orders of magnitude on certain tasks. Notably, Q-RUN can serve as a drop-in replacement for standard fully connected layers, improving the performance of a wide range of neural architectures. This work illustrates how principles from quantum machine learning can guide the design of more expressive artificial intelligence.

Wenbo Qiao, Shuaixian Wang, Peng Zhang, Yan Ming, Jiaming Zhao• 2025

Related benchmarks

TaskDatasetResultRank
Image ClassificationMNIST (test)
Accuracy99.68
882
Time Series ForecastingWeather
MSE0.247
223
Image ClassificationFashionMNIST (test)
Accuracy94.57
218
Sentiment ClassificationSST2 (test)
Accuracy82.11
214
Time Series ForecastingExchange
MSE0.522
176
Sentiment ClassificationIMDB (test)--
144
Time Series ForecastingETTh
MSE0.786
24
Sentiment ClassificationSentiment140 (test)
Accuracy61.37
12
Implicit RepresentationCAMERA (test)
MSE0.6
10
Implicit RepresentationCoffee (test)
MSE1.2
10
Showing 10 of 19 rows

Other info

Follow for update