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 -means clustering promises a speed-up over the classical -means algorithm; however, it has been shown to not currently 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 -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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http://dx.doi.org/10.3390/e25091361 | DOI Listing |
Entropy (Basel)
September 2023
Optical and Quantum Laboratory, Munich Research Center, Huawei Technologies Düsseldorf GmbH, Riesstr. 25-C3, 80992 Munich, Germany.
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 -means clustering promises a speed-up over the classical -means algorithm; however, it has been shown to not currently 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.
View Article and Find Full Text PDFThe data related to many medical, environmental and ecological variables are often measured in terms of angles wherein its range is defined in [0,π). This type of data is referred to as axial or half circular data. Modeling based on half circular data has not received its due share of attention in statistical literature.
View Article and Find Full Text PDFBiomed Sci Instrum
February 2016
DEEI, University of Trieste, Trieste, Italy, UE.
This paper presents an original problem solving framework specifically conceived and designed to achieve high performance three-dimensional (3D) reconstruction of the sources of electroencephalographic (EEG) brain activity, named TEBAM (True Electrical Brain Activity Mapping). We describe the integrated framework that has been proposed and developed, specifying TEBAM's design characteristics, implementation and tools interconnections (pipelines). TEBAM relays on patient's specific realistic head modeling for the EEG forward and inverse problem evaluation and is implemented and optimized with a very flexible approach to solve in short time, by means of High Performance Computing resources, the large scale computations needed.
View Article and Find Full Text PDFBiostatistics
January 2008
Institut de Recherche Mathématique Avancée (IRMA), UMR 7501 CNRS, Université Louis Pasteur, Strasbourg, France.
We consider model-based clustering of data that lie on a unit sphere. Such data arise in the analysis of microarray experiments when the gene expressions are standardized so that they have mean 0 and variance 1 across the arrays. We propose to model the clusters on the sphere with inverse stereographic projections of multivariate normal distributions.
View Article and Find Full Text PDFAn Acad Bras Cienc
December 2004
Departamento de Matemática, UFC, B1 914, Campus do Pici, 60455-760 Fortaleza, CE, Brazil.
In this note we will show that the inverse image under the stereographic projection of a circular torus of revolution in the 3-dimensional euclidean space has constant mean curvature in the unit 3-sphere if and only if their radii are the catet and the hypotenuse of an appropriate right triangle.
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