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arxiv: 1808.09607 · v1 · submitted 2018-08-29 · 🪐 quant-ph · cs.LG

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Nonlinear regression based on a hybrid quantum computer

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classification 🪐 quant-ph cs.LG
keywords quantumcomputerhybridlearningnonlinearnonlinearityproposeregression
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Incorporating nonlinearity into quantum machine learning is essential for learning a complicated input-output mapping. We here propose quantum algorithms for nonlinear regression, where nonlinearity is introduced with feature maps when loading classical data into quantum states. Our implementation is based on a hybrid quantum computer, exploiting both discrete and continuous variables, for their capacity to encode novel features and efficiency of processing information. We propose encoding schemes that can realize well-known polynomial and Gaussian kernel ridge regressions, with exponentially speed-up regarding to the number of samples.

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