2023
DOI: 10.48550/arxiv.2302.04801
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Dimension reduction and redundancy removal through successive Schmidt decompositions

Abstract: Quantum computers are believed to have the ability to process huge data sizes which can be seen in machine learning applications. In these applications, the data in general is classical. Therefore, to process them on a quantum computer, there is a need for efficient methods which can be used to map classical data on quantum states in a concise manner. On the other hand, to verify the results of quantum computers and study quantum algorithms, we need to be able to approximate quantum operations into forms that … Show more

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