A new threshold model based on tropical mathematics reveals network backbones
Ebrahim L. Patel

TL;DR
This paper introduces a novel threshold model called maxmin-ω based on tropical mathematics, revealing network backbones by analyzing attractor networks and their critical circuits, with applications to neural networks like C. elegans.
Contribution
It develops a new threshold model linked to tropical mathematics, providing a method to identify network backbones and analyze network dynamics efficiently.
Findings
Maxmin-ω reduces to a simpler system via tropical mathematics.
Attractor networks depend on initial conditions and ω, with ω=0.5 being most stable.
Critical circuits in attractor networks can be identified without simulation.
Abstract
Maxmin- is a new threshold model, where each node in a network waits for the arrival of states from a fraction of neighborhood nodes before processing its own state, and subsequently transmitting it to downstream nodes. Repeating this sequence of events leads to periodic behavior. We show that maxmin- reduces to a smaller, simpler, system represented by tropical mathematics, which forges a useful link between the nodal state update times and circuits in the network. Thus, the behavior of the system can be analyzed directly from the smaller network structure and is computationally faster. We further show that these reduced networks: (i) are not unique; they are dependent on the initialisation time, (ii) tend towards periodic orbits of networks -- "attractor networks." In light of these features, we vary the initial condition and to obtain statistics on…
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Taxonomy
TopicsNeural dynamics and brain function · Advanced Memory and Neural Computing · Gene Regulatory Network Analysis
