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The Ethereal
On the computational power and complexity of Spiking Neural Networks
January 23, 2020 ยท The Ethereal ยท ๐ Neuro Inspired Computational Elements Workshop
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Authors
Johan Kwisthout, Nils Donselaar
arXiv ID
2001.08439
Category
cs.CC: Computational Complexity
Cross-listed
cs.NE
Citations
25
Venue
Neuro Inspired Computational Elements Workshop
Last Checked
2 months ago
Abstract
The last decade has seen the rise of neuromorphic architectures based on artificial spiking neural networks, such as the SpiNNaker, TrueNorth, and Loihi systems. The massive parallelism and co-locating of computation and memory in these architectures potentially allows for an energy usage that is orders of magnitude lower compared to traditional Von Neumann architectures. However, to date a comparison with more traditional computational architectures (particularly with respect to energy usage) is hampered by the lack of a formal machine model and a computational complexity theory for neuromorphic computation. In this paper we take the first steps towards such a theory. We introduce spiking neural networks as a machine model where---in contrast to the familiar Turing machine---information and the manipulation thereof are co-located in the machine. We introduce canonical problems, define hierarchies of complexity classes and provide some first completeness results.
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