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Quantum-Inspired Machine Learning: a Survey

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arxiv 2308.11269 v2 pith:I46I4CQW submitted 2023-08-22 cs.LG quant-ph

Quantum-Inspired Machine Learning: a Survey

classification cs.LG quant-ph
keywords qimllearningmachinequantumfieldfuturesurveyclassical
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Quantum-inspired Machine Learning (QiML) is a burgeoning field, receiving global attention from researchers for its potential to leverage principles of quantum mechanics within classical computational frameworks. However, current review literature often presents a superficial exploration of QiML, focusing instead on the broader Quantum Machine Learning (QML) field. In response to this gap, this survey provides an integrated and comprehensive examination of QiML, exploring QiML's diverse research domains including tensor network simulations, dequantized algorithms, and others, showcasing recent advancements, practical applications, and illuminating potential future research avenues. Further, a concrete definition of QiML is established by analyzing various prior interpretations of the term and their inherent ambiguities. As QiML continues to evolve, we anticipate a wealth of future developments drawing from quantum mechanics, quantum computing, and classical machine learning, enriching the field further. This survey serves as a guide for researchers and practitioners alike, providing a holistic understanding of QiML's current landscape and future directions.

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Cited by 2 Pith papers

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  2. Quantum Adversarial Machine Learning: From Classical Adaptations to Quantum-Native Methods

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    A survey of quantum adversarial machine learning covering attacks, countermeasures, theoretical underpinnings, trends, and challenges.