State Classification via a Random-Walk-Based Quantum Neural Network
- URL: http://arxiv.org/abs/2304.05662v1
- Date: Wed, 12 Apr 2023 07:39:23 GMT
- Title: State Classification via a Random-Walk-Based Quantum Neural Network
- Authors: Lu-Ji Wang, Jia-Yi Lin, and Shengjun Wu
- Abstract summary: We introduce the quantum neural network (QSNN), and show its capability to accomplish the binary discrimination of quantum states.
Other than binary discrimination, the QSNN is also applied to classify an unknown set of states into two types: entangled ones and separable ones.
Our results suggest that the QSNN has the great potential to process unknown quantum states in quantum information.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: In quantum information technology, crucial information is regularly encoded
in different quantum states. To extract information, the identification of one
state from the others is inevitable. However, if the states are non-orthogonal
and unknown, this task will become awesomely tricky, especially when our
resources are also limited. Here, we introduce the quantum stochastic neural
network (QSNN), and show its capability to accomplish the binary discrimination
of quantum states. After a handful of optimizing iterations, the QSNN achieves
a success probability close to the theoretical optimum, no matter whether the
states are pure or mixed. Other than binary discrimination, the QSNN is also
applied to classify an unknown set of states into two types: entangled ones and
separable ones. After training with four samples, it can classify a number of
states with acceptable accuracy. Our results suggest that the QSNN has the
great potential to process unknown quantum states in quantum information.
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