Encoding of Probability Distributions for Quantum Monte Carlo Using Tensor Networks
The application of Tensor Networks (TN) in quantum computing has shown promise, particularly for data loading. However, the assumption that data is readily available often renders the integration of TN techniques into Quantum Monte Carlo (QMC) inefficient, as complete probability distributions would...
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Zusammenfassung: | The application of Tensor Networks (TN) in quantum computing has shown
promise, particularly for data loading. However, the assumption that data is
readily available often renders the integration of TN techniques into Quantum
Monte Carlo (QMC) inefficient, as complete probability distributions would have
to be calculated classically. In this paper the tensor-train cross
approximation (TT-cross) algorithm is evaluated as a means to address the
probability loading problem. We demonstrate the effectiveness of this method on
financial distributions, showcasing the TT-cross approach's scalability and
accuracy. Our results indicate that the TT-cross method significantly improves
circuit depth scalability compared to traditional methods, offering a more
efficient pathway for implementing QMC on near-term quantum hardware. The
approach also shows high accuracy and scalability in handling high-dimensional
financial data, making it a promising solution for quantum finance
applications. |
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DOI: | 10.48550/arxiv.2411.11660 |