Starting from an extended nondeterministic spiking neural P system that solves the Subset Sum problem in a constant number of computation steps, recently proposed in a previous paper, we investigate how different properties of spiking neural P systems affect the capability to solve numerical NP–complete problems. In particular, we show that by using maximal parallelism we can convert any given integer number from the usual binary notation to the unary form, and thus we can initialize the above P system with the required (exponential) number of spikes in polynomial time. On the other hand, we prove that this conversion cannot be performed in polynomial time if the use of maximal parallelism is forbidden. Finally, we show that if we can choose whether each neuron works in the nondeterministic vs. deterministic and/or in the maximal parallel vs. sequential way, then there exists a uniform family of spiking neural P systems that solves the Subset Sum problem

Leporati, A., Zandron, C., Ferretti, C., Mauri, G. (2007). Solving numerical NP-complete problems with spiking neural P systems. In Membrane Computing. 8th International Workshop, WMC 2007 Thessaloniki, Greece, June 25-28, 2007 Revised Selected and Invited Papers Proceedings (pp.336-352). Berlin : Springer [10.1007/978-3-540-77312-2_21].

Solving numerical NP-complete problems with spiking neural P systems

LEPORATI, ALBERTO OTTAVIO;ZANDRON, CLAUDIO;FERRETTI, CLAUDIO;MAURI, GIANCARLO
2007

Abstract

Starting from an extended nondeterministic spiking neural P system that solves the Subset Sum problem in a constant number of computation steps, recently proposed in a previous paper, we investigate how different properties of spiking neural P systems affect the capability to solve numerical NP–complete problems. In particular, we show that by using maximal parallelism we can convert any given integer number from the usual binary notation to the unary form, and thus we can initialize the above P system with the required (exponential) number of spikes in polynomial time. On the other hand, we prove that this conversion cannot be performed in polynomial time if the use of maximal parallelism is forbidden. Finally, we show that if we can choose whether each neuron works in the nondeterministic vs. deterministic and/or in the maximal parallel vs. sequential way, then there exists a uniform family of spiking neural P systems that solves the Subset Sum problem
slide + paper
spiking neural P system, NP–complete problems, Subset Sum
English
Workshop on Membrane Computing (WMC)
2007
Membrane Computing. 8th International Workshop, WMC 2007 Thessaloniki, Greece, June 25-28, 2007 Revised Selected and Invited Papers Proceedings
9783540773115
2007
4860
336
352
none
Leporati, A., Zandron, C., Ferretti, C., Mauri, G. (2007). Solving numerical NP-complete problems with spiking neural P systems. In Membrane Computing. 8th International Workshop, WMC 2007 Thessaloniki, Greece, June 25-28, 2007 Revised Selected and Invited Papers Proceedings (pp.336-352). Berlin : Springer [10.1007/978-3-540-77312-2_21].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10281/16486
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