Abstract
AbstractPrototype-based models like the Generalized Learning Vector Quantization (GLVQ) belong to the class of interpretable classifiers. Moreover, quantum-inspired methods get more and more into focus in machine learning due to its potential efficient computing. Further, its interesting mathematical perspectives offer new ideas for alternative learning scenarios. This paper proposes a quantum computing-inspired variant of the prototype-based GLVQ for classification learning. We start considering kernelized GLVQ with real- and complex-valued kernels and their respective feature mapping. Thereafter, we explain how quantum space ideas could be integrated into a GLVQ using quantum bit vector space in the quantum state space $${\mathcal {H}}^{n}$$
H
n
and show the relations to kernelized GLVQ. In particular, we explain the related feature mapping of data into the quantum state space $${\mathcal {H}}^{n}$$
H
n
. A key feature for this approach is that $${\mathcal {H}}^{n}$$
H
n
is an Hilbert space with particular inner product properties, which finally restrict the prototype adaptations to be unitary transformations. The resulting approach is denoted as Qu-GLVQ. We provide the mathematical framework and give exemplary numerical results.
Funder
Hochschule Mittweida, University of Applied Sciences
Publisher
Springer Science and Business Media LLC
Subject
Artificial Intelligence,Software
Reference71 articles.
1. Ashok P, Praveen B, Dholakia K (2011) Near infrared spectroscopic analysis of single malt Scotch whisky on an optofluidic chip. Opt Express 19(23):1–11
2. Backhaus A, Ashok P, Praveen B, Dholakia K, Seiffert U (2012) Classifying scotch whisky from near-infrared Raman spectra with a radial basis function network with relevance learning. In: Verleysen M (ed) Proceedings of the European symposium on artificial neural networks and machine learning (ESANN), pp 411–416. i6doc.com, Brussels
3. Biamonte J, Wittek P, Pancotti N, Rebentrost P, Wiebe N, Lloyd S (2017) Quantum machine learning. Nature 549(9):195–202
4. Biehl M, Hammer B, Villmann T (2016) Prototype-based models in machine learning. Wiley Interdiscip Rev Cognit Sci 2:92–111
5. Bishop C (2006) Pattern recognition and machine learning. Springer, Berlin
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