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      Semi-supervised time series classification method for quantum computing

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          Abstract

          In this paper we develop methods to solve two problems related to time series (TS) analysis using quantum computing: reconstruction and classification. We formulate the task of reconstructing a given TS from a training set of data as an unconstrained binary optimization (QUBO) problem, which can be solved by both quantum annealers and gate-model quantum processors. We accomplish this by discretizing the TS and converting the reconstruction to a set cover problem, allowing us to perform a one-versus-all method of reconstruction. Using the solution to the reconstruction problem, we show how to extend this method to perform semi-supervised classification of TS data. We present results indicating our method is competitive with current semi- and unsupervised classification techniques, but using less data than classical techniques.

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          Author and article information

          Journal
          19 June 2020
          Article
          2006.11031
          3ba7b5c8-e8ec-4716-bd50-efd6f6949a74

          http://arxiv.org/licenses/nonexclusive-distrib/1.0/

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          Custom metadata
          quant-ph cs.LG

          Quantum physics & Field theory,Artificial intelligence
          Quantum physics & Field theory, Artificial intelligence

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