Quantum learning: optimal classification of qubit states
Madalin Guta, Wojciech Kotlowski

TL;DR
This paper develops an optimal quantum classification method for unknown qubit states, outperforming traditional state estimation strategies by achieving a faster error rate decay.
Contribution
It introduces the first asymptotically optimal quantum classification strategy with a precise error rate for unknown qubit states.
Findings
Optimal classification strategy achieves rate n^{-1}
Performs better than plug-in state estimation methods
Precisely computes the constant in the error rate decay
Abstract
Pattern recognition is a central topic in Learning Theory with numerous applications such as voice and text recognition, image analysis, computer diagnosis. The statistical set-up in classification is the following: we are given an i.i.d. training set where represents a feature and is a label attached to that feature. The underlying joint distribution of is unknown, but we can learn about it from the training set and we aim at devising low error classifiers used to predict the label of new incoming features. Here we solve a quantum analogue of this problem, namely the classification of two arbitrary unknown qubit states. Given a number of `training' copies from each of the states, we would like to `learn' about them by performing a measurement on the training set. The outcome is then used to design…
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