Multi-Valued Quantum Neurons
- URL: http://arxiv.org/abs/2305.02018v5
- Date: Tue, 6 Feb 2024 10:45:07 GMT
- Title: Multi-Valued Quantum Neurons
- Authors: M. W. AlMasri
- Abstract summary: A quantum neural network (QNN) based on multi-valued quantum neurons can be constructed with complex weights, inputs, and outputs encoded by roots of unity.
Our construction can be used in analyzing the energy spectrum of quantum systems.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-sa/4.0/
- Abstract: The multiple-valued quantum logic is formulated systematically such that the
truth values are represented naturally as unique roots of unity placed on the
unit circle. Consequently, multi-valued quantum neuron (MVQN) is based on the
principles of multiple-valued threshold logic over the field of complex
numbers. The training of MVQN is reduced to the movement along the unit circle.
A quantum neural network (QNN) based on multi-valued quantum neurons can be
constructed with complex weights, inputs, and outputs encoded by roots of unity
and an activation function that maps the complex plane into the unit circle.
Such neural networks enjoy fast convergence and higher functionalities compared
with quantum neural networks based on binary input with the same number of
neurons and layers. Our construction can be used in analyzing the energy
spectrum of quantum systems. Possible practical applications can be found using
the quantum neural networks built from orbital angular momentum (OAM) of light
or multi-level systems such as molecular spin qudits.
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