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.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Image Classification | MNIST (test) | Accuracy99.68 | 882 | |
| Time Series Forecasting | Weather | MSE0.247 | 223 | |
| Image Classification | FashionMNIST (test) | Accuracy94.57 | 218 | |
| Sentiment Classification | SST2 (test) | Accuracy82.11 | 214 | |
| Time Series Forecasting | Exchange | MSE0.522 | 176 | |
| Sentiment Classification | IMDB (test) | -- | 144 | |
| Time Series Forecasting | ETTh | MSE0.786 | 24 | |
| Sentiment Classification | Sentiment140 (test) | Accuracy61.37 | 12 | |
| Implicit Representation | CAMERA (test) | MSE0.6 | 10 | |
| Implicit Representation | Coffee (test) | MSE1.2 | 10 |