Q-means using variational quantum feature embedding
- URL: http://arxiv.org/abs/2112.05969v1
- Date: Sat, 11 Dec 2021 13:00:51 GMT
- Title: Q-means using variational quantum feature embedding
- Authors: Arvind S Menon and Nikaash Puri
- Abstract summary: The objective of the Variational circuit is to maximally separate the clusters in the quantum feature Hilbert space.
The output of the quantum circuit are characteristic cluster quantum states that represent a superposition of all quantum states belonging to a particular cluster.
The gradient of the expectation value is used to optimize the parameters of the variational circuit to learn a better quantum feature map.
- Score: 0.9572675949441442
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: This paper proposes a hybrid quantum-classical algorithm that learns a
suitable quantum feature map that separates unlabelled data that is originally
non linearly separable in the classical space using a Variational quantum
feature map and q-means as a subroutine for unsupervised learning. The
objective of the Variational circuit is to maximally separate the clusters in
the quantum feature Hilbert space. First part of the circuit embeds the
classical data into quantum states. Second part performs unsupervised learning
on the quantum states in the quantum feature Hilbert space using the q-means
quantum circuit. The output of the quantum circuit are characteristic cluster
quantum states that represent a superposition of all quantum states belonging
to a particular cluster. The final part of the quantum circuit performs
measurements on the characteristic cluster quantum states to output the
inter-cluster overlap based on fidelity. The output of the complete quantum
circuit is used to compute the value of the cost function that is based on the
Hilbert-Schmidt distance between the density matrices of the characteristic
cluster quantum states. The gradient of the expectation value is used to
optimize the parameters of the variational circuit to learn a better quantum
feature map.
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