Kernel Method based on Non-Linear Coherent State
- URL: http://arxiv.org/abs/2007.07887v1
- Date: Wed, 15 Jul 2020 05:07:44 GMT
- Title: Kernel Method based on Non-Linear Coherent State
- Authors: Prayag Tiwari, Shahram Dehdashti, Abdul Karim Obeid, Massimo Melucci,
Peter Bruza
- Abstract summary: We re-interpret the process of encoding inputs in quantum states as a non-linear feature map.
Non-linear coherent states can be considered as natural generalisation of associated kernels.
We study impact of geometrical properties of feature space, obtaining by non-linear coherent states, on the SVM classification task.
- Score: 10.557942353553859
- License: http://creativecommons.org/publicdomain/zero/1.0/
- Abstract: In this paper, by mapping datasets to a set of non-linear coherent states,
the process of encoding inputs in quantum states as a non-linear feature map is
re-interpreted. As a result of this fact that the Radial Basis Function is
recovered when data is mapped to a complex Hilbert state represented by
coherent states, non-linear coherent states can be considered as natural
generalisation of associated kernels. By considering the non-linear coherent
states of a quantum oscillator with variable mass, we propose a kernel function
based on generalized hypergeometric functions, as orthogonal polynomial
functions. The suggested kernel is implemented with support vector machine on
two well known datasets (make circles, and make moons) and outperforms the
baselines, even in the presence of high noise. In addition, we study impact of
geometrical properties of feature space, obtaining by non-linear coherent
states, on the SVM classification task, by using considering the Fubini-Study
metric of associated coherent states.
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