Predicting Chaotic Systems with Quantum Echo-state Networks
Recent advancements in artificial neural networks have enabled impressive tasks on classical computers, but they demand significant computational resources. While quantum computing offers potential beyond classical systems, the advantages of quantum neural networks (QNNs) remain largely unexplored....
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Zusammenfassung: | Recent advancements in artificial neural networks have enabled impressive
tasks on classical computers, but they demand significant computational
resources. While quantum computing offers potential beyond classical systems,
the advantages of quantum neural networks (QNNs) remain largely unexplored. In
this work, we present and examine a quantum circuit (QC) that implements and
aims to improve upon the classical echo-state network (ESN), a type of
reservoir-based recurrent neural networks (RNNs), using quantum computers.
Typically, ESNs consist of an extremely large reservoir that learns
high-dimensional embeddings, enabling prediction of complex system
trajectories. Quantum echo-state networks (QESNs) aim to reduce this need for
prohibitively large reservoirs by leveraging the unique capabilities of quantum
computers, potentially allowing for more efficient and higher performing
time-series prediction algorithms. The proposed QESN can be implemented on any
digital quantum computer implementing a universal gate set, and does not
require any sort of stopping or re-initialization of the circuit, allowing
continuous evolution of the quantum state over long time horizons. We conducted
simulated QC experiments on the chaotic Lorenz system, both with noisy and
noiseless models, to demonstrate the circuit's performance and its potential
for execution on noisy intermediate-scale quantum (NISQ) computers. |
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DOI: | 10.48550/arxiv.2412.07910 |