We introduce a robust, error-tolerant adaptive training algorithm for generalized learning paradigms in high-dimensional superposed quantum networks, or adaptive quantum networks. The formalized procedure applies standard backpropagation training across a coherent ensemble of discrete topological configurations of individual neural networks, each of which is formally merged into appropriate linear superposition within a predefined, decoherence-free subspace. Quantum parallelism facilitates simultaneous training and revision of the system within this coherent state space, resulting in accelerated convergence to a stable network attractor under consequent iteration of the implemented backpropagation algorithm. Parallel evolution of linear superposed networks incorporating backpropagation training provides quantitative, numerical indications for optimization of both single-neuron activation functions and optimal reconfiguration of whole-network quantum structure.
Backpropagation training in adaptive quantum networks
Adaptive quantum networks utilize backpropagation and quantum parallelism to train robust neural networks within decoherence-free subspaces, optimizing activation functions and network structure simultaneously.
- Year
- 2009
- Venue
- arXiv 2009
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- 2
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- Abstract onlyARXIV-DEFAULT
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- arxiv.org/abs/0903.4416ARXIV-DEFAULT
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