A Novel Spatial-Temporal Variational Quantum Circuit to Enable Deep Learning on NISQ Devices | IEEE Conference Publication | IEEE Xplore

A Novel Spatial-Temporal Variational Quantum Circuit to Enable Deep Learning on NISQ Devices


Abstract:

Quantum computing presents a promising approach for machine learning with its capability for extremely parallel computation in high-dimension through superposition and en...Show More

Abstract:

Quantum computing presents a promising approach for machine learning with its capability for extremely parallel computation in high-dimension through superposition and entanglement. Despite its potential, existing quantum learning algorithms, such as Variational Quantum Circuits (VQCs), face challenges in handling more complex datasets, particularly those that are not linearly separable. What's more, it encounters the deployability issue, making the learning models suffer a drastic accuracy drop after deploying them to the actual quantum devices. To overcome these limitations, this paper proposes a novel spatial-temporal design, namely “ST-VQC”, to integrate non-linearity in quantum learning and improve the robustness of the learning model to noise. Specifically, ST-VQC can extract spatial features via a novel block-based encoding quantum sub-circuit coupled with a layer-wise computation quantum sub-circuit to enable temporal-wise deep learning. Additionally, a SWAP-Free physical circuit design is devised to improve robustness. These designs bring a number of hyperparameters. After a systematic analysis of the design space for each design component, an automated optimization framework is proposed to generate the ST-VQC quantum circuit. The proposed ST-VQC has been evaluated on two IBM quantum processors, ibm_cairo with 27 qubits and ibmq_lima with 7 qubits to assess its effectiveness. The results of the evaluation on the standard dataset for binary classification show that ST-VQC can achieve over 30% accuracy improvement compared with existing VQCs on actual quantum computers. Moreover, on a non-linear synthetic dataset, the ST-VQC outperforms a linear classifier by 27.9%, while the linear classifier using classical computing outperforms the existing VQC by 15.58%.
Date of Conference: 17-22 September 2023
Date Added to IEEE Xplore: 30 November 2023
ISBN Information:
Conference Location: Bellevue, WA, USA

I. Introduction

Quantum computing is rapidly growing and evolving. With the emergence of real-world quantum computers from companies like IBM, IonQ, and Quantinuum, the potential for solving complex problems that were previously intractable for traditional computers has become a reality. A promising application of quantum computing is in the realm of machine learning, known as quantum learning [1]–[21]. These algorithms take advantage of the unique features of quantum computing, such as superposition and entanglement, to perform highly parallel and efficient computations. The ultimate goal of quantum learning is to develop algorithms that can tackle learning problems that are too challenging for traditional computers, such as large-scale optimization problems and deep learning.

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References

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