2022
DOI: 10.36227/techrxiv.21533610.v1
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Robust Quantum Feature Selection Algorithm

Abstract: <p>High dimensional data has been a notoriously challenging issue. Existing quantum dimension reduction technology mainly focuses on quantum principal component analysis. There are only a few works on the direction of quantum feature selection algorithm which they are not robust. Also, there are few quantum circuits designed for feature selection, in which some steps are not quantized yet. For example, existing quantum circuits cannot solve the objective function based on sparse learning. To deal with th… Show more

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