Memory-Augmented Quantum Reservoir Computing
- URL: http://arxiv.org/abs/2409.09886v1
- Date: Sun, 15 Sep 2024 22:44:09 GMT
- Title: Memory-Augmented Quantum Reservoir Computing
- Authors: J. Settino, L. Salatino, L. Mariani, M. Channab, L. Bozzolo, S. Vallisa, P. BarillĂ , A. Policicchio, N. Lo Gullo, A. Giordano, C. Mastroianni, F. Plastina,
- Abstract summary: We present a hybrid quantum-classical approach that implements memory through classical post-processing of quantum measurements.
We tested our model on two physical platforms: a fully connected Ising model and a Rydberg atom array.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Reservoir computing (RC) is an effective method for predicting chaotic systems by using a high-dimensional dynamic reservoir with fixed internal weights, while keeping the learning phase linear, which simplifies training and reduces computational complexity compared to fully trained recurrent neural networks (RNNs). Quantum reservoir computing (QRC) uses the exponential growth of Hilbert spaces in quantum systems, allowing for greater information processing, memory capacity, and computational power. However, the original QRC proposal requires coherent injection of inputs multiple times, complicating practical implementation. We present a hybrid quantum-classical approach that implements memory through classical post-processing of quantum measurements. This approach avoids the need for multiple coherent input injections and is evaluated on benchmark tasks, including the chaotic Mackey-Glass time series prediction. We tested our model on two physical platforms: a fully connected Ising model and a Rydberg atom array. The optimized model demonstrates promising predictive capabilities, achieving a higher number of steps compared to previously reported approaches.
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