Testing of Hybrid Quantum-Classical K-Means for Nonlinear Noise
Mitigation
- URL: http://arxiv.org/abs/2308.03540v2
- Date: Mon, 25 Sep 2023 10:57:58 GMT
- Title: Testing of Hybrid Quantum-Classical K-Means for Nonlinear Noise
Mitigation
- Authors: Alonso Viladomat Jasso, Ark Modi, Roberto Ferrara, Christian Deppe,
Janis Noetzel, Fred Fung, Maximilian Schaedler
- Abstract summary: Quantum k-means clustering promises a speed-up over the classical k-means algorithm.
It has been shown to currently not provide this speed-up due to the embedding of classical data.
This work proposes the generalised inverse stereographic projection as an improved embedding into the Bloch sphere.
- Score: 9.502161131265531
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Nearest-neighbour clustering is a simple yet powerful machine learning
algorithm that finds natural application in the decoding of signals in
classical optical-fibre communication systems. Quantum k-means clustering
promises a speed-up over the classical k-means algorithm; however, it has been
shown to currently not provide this speed-up for decoding optical-fibre signals
due to the embedding of classical data, which introduces inaccuracies and
slowdowns. Although still not achieving an exponential speed-up for NISQ
implementations, this work proposes the generalised inverse stereographic
projection as an improved embedding into the Bloch sphere for quantum distance
estimation in k-nearest-neighbour clustering, which allows us to get closer to
the classical performance. We also use the generalised inverse stereographic
projection to develop an analogous classical clustering algorithm and benchmark
its accuracy, runtime and convergence for decoding real-world experimental
optical-fibre communication data. This proposed `quantum-inspired' algorithm
provides an improvement in both the accuracy and convergence rate with respect
to the k-means algorithm. Hence, this work presents two main contributions.
Firstly, we propose the general inverse stereographic projection into the Bloch
sphere as a better embedding for quantum machine learning algorithms; here, we
use the problem of clustering quadrature amplitude modulated optical-fibre
signals as an example. Secondly, as a purely classical contribution inspired by
the first contribution, we propose and benchmark the use of the general inverse
stereographic projection and spherical centroid for clustering optical-fibre
signals, showing that optimizing the radius yields a consistent improvement in
accuracy and convergence rate.
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