In the field of machine learning, vector quantization is a category of low-complexity approaches that are nonetheless powerful for data representation and clustering or classification tasks. Vector quantization is based on the idea of representing a data or a class distribution using a small set of prototypes, and hence, it belongs to interpretable models in machine learning. Further, the low complexity of vector quantizers makes them interesting for the application of quantum concepts for their implementation. This is especially true for current and upcoming generations of quantum devices, which only allow the execution of simple and restricted algorithms. Motivated by different adaptation and optimization paradigms for vector quantizers, we provide an overview of respective existing quantum algorithms and routines to realize vector quantization concepts, maybe only partially, on quantum devices. Thus, the reader can infer the current state-of-the-art when considering quantum computing approaches for vector quantization.
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http://dx.doi.org/10.3390/e25030540 | DOI Listing |
J Phys Condens Matter
January 2025
Departamento de Física, Facultad de Ciencias, Universidad Nacional Autónoma de México, Apartado Postal 70542, Ciudad de México 04510, Mexico.
Magnetic fields can be introduced into discrete models of quantum systems by the Peierls substitution. For tight-binding Hamiltonians, the substitution results in a set of (Peierls) phases that are usually calculated from the magnetic vector potential. As the potential is not unique, a convenient gauge can be chosen to fit the geometry and simplify calculations.
View Article and Find Full Text PDFComput Biol Med
December 2024
Department of Computer Science, University of Toronto, 40 St George St., Toronto, M5S 2E4, ON, Canada; Neurosciences & Mental Health Research Program, The Hospital for Sick Children, 686 Bay St., Toronto, M5G 0A4, ON, Canada; Department of Diagnostic and Interventional Radiology, The Hospital for Sick Children, 170 Elizabeth St., Toronto, M5G 1H3, ON, Canada; Institute of Medical Science, University of Toronto, 1 King's College Circle, Toronto, M5S 1A8, ON, Canada; Department of Medical Imaging, University of Toronto, 263 McCaul St., Toronto, M5T 1W7, ON, Canada; Department of Mechanical and Industrial Engineering, University of Toronto, 5 King's College Road, Toronto, M5S 3G8, ON, Canada. Electronic address:
Medical image analysis has significantly benefited from advancements in deep learning, particularly in the application of Generative Adversarial Networks (GANs) for generating realistic and diverse images that can augment training datasets. The common GAN-based approach is to generate entire image volumes, rather than the region of interest (ROI). Research on deep learning-based brain tumor classification using MRI has shown that it is easier to classify the tumor ROIs compared to the entire image volumes.
View Article and Find Full Text PDFJ Neural Eng
December 2024
Lanzhou University, No. 222 South Tianshui Road, Lanzhou, Gansu, 730000, CHINA.
Objective: Measuring causal brain network from neurophysiological signals has recently attracted much attention in the field of neuroinformatics. Traditional data-driven algorithms are computationally time-consuming and unstable due to parameter settings.
Approach: To resolve these limits, we proposed a novel parameter-free technique, called "non-parametric full cross mapping (NFCM)".
Front Pharmacol
November 2024
State Key Laboratory of Southwestern Chinese Medicine Resources, School of Ethnic Medicine, Chengdu University of Traditional Chinese Medicine, Chengdu, China.
We successfully demonstrate photonics-assisted single-carrier 466.4 Gbit/s wireless transmission over 20 km SSMF and 6 m single-input single-output (SISO) wireless delivery at 92.5 GHz.
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