
TL;DR
This paper develops a formal framework to relate different levels of abstraction in Spiking Neural Networks, enabling understanding of detailed network failures through simpler, reliable models.
Contribution
It introduces a systematic method to connect abstract neural network models with detailed failure-prone networks, providing guarantees on their behavior and effects on external neurons.
Findings
Established relationships between abstract and detailed networks.
Proved firing and non-firing guarantees for failure-prone networks.
Linked network behavior to external actuator effects.
Abstract
We show how brain networks, modeled as Spiking Neural Networks, can be viewed at different levels of abstraction. Lower levels include complications such as failures of neurons and edges. Higher levels are more abstract, making simplifying assumptions to avoid these complications. We show precise relationships between executions of networks at different levels, which enables us to understand the behavior of lower-level networks in terms of the behavior of higher-level networks. We express our results using two abstract networks, A1 and A2, one to express firing guarantees and the other to express non-firing guarantees, and one detailed network D. The abstract networks contain reliable neurons and edges, whereas the detailed network has neurons and edges that may fail, subject to some constraints. Here we consider just initial stopping failures. To define these networks, we begin with…
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Taxonomy
TopicsNeural Networks and Applications
