Novel Complex-Valued Hopfield Neural Networks with Phase and Magnitude Quantization

Ramamurthy, Garimella, Valle, Marcos Eduardo, Swamy, Tata Jagannadha

arXiv.org Artificial Intelligence 

--This research paper introduces two novel complex-valued Hopfield neural networks (CvHNNs) that incorporate phase and magnitude quantization. The first CvHNN employs a ceiling-type activation function that operates on the rectangular coordinate representation of the complex net contribution. The second CvHNN similarly incorporates phase and magnitude quantization but utilizes a ceiling-type activation function based on the polar coordinate representation of the complex net contribution. The proposed CvHNNs, with their phase and magnitude quantization, significantly increase the number of states compared to existing models in the literature, thereby expanding the range of potential applications for CvHNNs. Real-valued neural networks are primarily based on the McCulloch-Pitts model of neurons [1], [2].

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