Measurement disturbance tradeoffs in three-qubit unsupervised quantum classification

Hector Spencer-Wood, John Jeffers, Sarah Croke

Research output: Contribution to journalArticlepeer-review

2 Citations (Scopus)
27 Downloads (Pure)

Abstract

We consider measurement disturbance tradeoffs in quantum machine learning protocols which seek to learn about quantum data. We study the simplest example of a binary classification task in the unsupervised regime. Specifically, we investigate how a classification of two qubits, that can each be in one of two unknown states, affects our ability to perform a subsequent classification on three qubits when a third is added. Surprisingly, we find a range of strategies in which a nontrivial first classification does not affect the success rate of the second classification. There is, however, a nontrivial measurement disturbance tradeoff between the success rate of the first and second classifications, and we fully characterize this tradeoff analytically.
Original languageEnglish
Article number062447
JournalPhysical Review A
Volume105
Issue number6
DOIs
Publication statusPublished - 27 Jun 2022

Keywords

  • measurement disturbance tradeoffs
  • quantum machine learning
  • quantum data
  • quantum computing
  • quantum computation
  • quantum information theory

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