中文

Superpositional Quantum Network Topologies

神经元与认知 2009-11-10 v3 量子物理

摘要

We introduce superposition-based quantum networks composed of (i) the classical perceptron model of multilayered, feedforward neural networks and (ii) the algebraic model of evolving reticular quantum structures as described in quantum gravity. The main feature of this model is moving from particular neural topologies to a quantum metastructure which embodies many differing topological patterns. Using quantum parallelism, training is possible on superpositions of different network topologies. As a result, not only classical transition functions, but also topology becomes a subject of training. The main feature of our model is that particular neural networks, with different topologies, are quantum states. We consider high-dimensional dissipative quantum structures as candidates for implementation of the model.

关键词

引用

@article{arxiv.q-bio/0311016,
  title  = {Superpositional Quantum Network Topologies},
  author = {Christopher Altman and Jaroslaw Pykacz and Roman Zapatrin},
  journal= {arXiv preprint arXiv:q-bio/0311016},
  year   = {2009}
}

备注

10 pages, LaTeX2e