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Biologically Inspired Neural Path Finding

2022-06-13 08:33:22
Hang Li, Qadeer Khan, Volker Tresp, Daniel Cremers

Abstract

The human brain can be considered to be a graphical structure comprising of tens of billions of biological neurons connected by synapses. It has the remarkable ability to automatically re-route information flow through alternate paths in case some neurons are damaged. Moreover, the brain is capable of retaining information and applying it to similar but completely unseen scenarios. In this paper, we take inspiration from these attributes of the brain, to develop a computational framework to find the optimal low cost path between a source node and a destination node in a generalized graph. We show that our framework is capable of handling unseen graphs at test time. Moreover, it can find alternate optimal paths, when nodes are arbitrarily added or removed during inference, while maintaining a fixed prediction time. Code is available here: this https URL

Abstract (translated)

URL

https://arxiv.org/abs/2206.05971

PDF

https://arxiv.org/pdf/2206.05971.pdf


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