Causal Influences Decouple From Their Underlying Network Structure In Echo State Networks
Kayson Fakhar, Fatemeh Hadaeghi, Claus C. Hilgetag

TL;DR
This paper investigates how causal influences in Echo State Networks (ESNs) are largely independent of their underlying network structure, revealing insights into the structure-function relationship and the roles of direct and indirect interactions.
Contribution
It introduces a systematic lesioning framework to quantify causal contributions of nodes in ESNs, demonstrating the decoupling of causal influence from network topology.
Findings
Causal influences are largely independent of network structure in well-engineered ESNs.
In non-optimal networks, connectivity patterns significantly influence node interactions.
Indirect interactions through intermediate nodes are crucial for ESN performance.
Abstract
Echo State Networks (ESN) are versatile recurrent neural network models in which the hidden layer remains unaltered during training. Interactions among nodes of this static backbone produce diverse representations of the given stimuli that are harnessed by a read-out mechanism to perform computations needed for solving a given task. ESNs are accessible models of neuronal circuits, since they are relatively inexpensive to train. Therefore, ESNs have become attractive for neuroscientists studying the relationship between neural structure, function, and behavior. For instance, it is not yet clear how distinctive connectivity patterns of brain networks support effective interactions among their nodes and how these patterns of interactions give rise to computation. To address this question, we employed an ESN with a biologically inspired structure and used a systematic multi-site lesioning…
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Taxonomy
TopicsNeural Networks and Reservoir Computing · Advanced Memory and Neural Computing · Neural dynamics and brain function
