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Echo State Network

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Echo State Network

Discover seminars, jobs, and research tagged with Echo State Network across World Wide.
2 curated items1 Position1 Seminar
Updated 1 day ago
2 items · Echo State Network
2 results
PositionComputer Science

Nicolas P. Rougier

Institute of Neurodegenerative Diseases / Inria
Bordeaux, France
Dec 5, 2025

The goal of this PhD is to explore a minimal model of decision making using a simulated agent in a contiguous environment (T-Maze like). The goal for the agent is to learn to alternate between left and right, independently of the geometry of the maze, even though topology remains the same. This will be done using an echo state network of limited size in order to be able to perform a thorough analysis of its dynamics and representations from three different perspectives (sensory-motor space, external behavior and neural activity). The goal is to find the conditions for the emergence of concepts such as left and right using a manifold-based approach and to prove for their existence independently an external observer.

SeminarNeuroscienceRecording

A Game Theoretical Framework for Quantifying​ Causes in Neural Networks

Kayson Fakhar​
ICNS Hamburg
Jul 5, 2022

Which nodes in a brain network causally influence one another, and how do such interactions utilize the underlying structural connectivity? One of the fundamental goals of neuroscience is to pinpoint such causal relations. Conventionally, these relationships are established by manipulating a node while tracking changes in another node. A causal role is then assigned to the first node if this intervention led to a significant change in the state of the tracked node. In this presentation, I use a series of intuitive thought experiments to demonstrate the methodological shortcomings of the current ‘causation via manipulation’ framework. Namely, a node might causally influence another node, but how much and through which mechanistic interactions? Therefore, establishing a causal relationship, however reliable, does not provide the proper causal understanding of the system, because there often exists a wide range of causal influences that require to be adequately decomposed. To do so, I introduce a game-theoretical framework called Multi-perturbation Shapley value Analysis (MSA). Then, I present our work in which we employed MSA on an Echo State Network (ESN), quantified how much its nodes were influencing each other, and compared these measures with the underlying synaptic strength. We found that: 1. Even though the network itself was sparse, every node could causally influence other nodes. In this case, a mere elucidation of causal relationships did not provide any useful information. 2. Additionally, the full knowledge of the structural connectome did not provide a complete causal picture of the system either, since nodes frequently influenced each other indirectly, that is, via other intermediate nodes. Our results show that just elucidating causal contributions in complex networks such as the brain is not sufficient to draw mechanistic conclusions. Moreover, quantifying causal interactions requires a systematic and extensive manipulation framework. The framework put forward here benefits from employing neural network models, and in turn, provides explainability for them.