Evolutionary aspects of Reservoir Computing
Lu\'is F Seoane

TL;DR
This paper reviews Reservoir Computing from an evolutionary perspective, exploring its potential natural occurrence, evolution, and stability, and proposing a conceptual framework to study its evolutionary aspects.
Contribution
It introduces a morphospace framework to analyze the evolutionary viability of Reservoir Computing in biological systems.
Findings
RC's high versatility suggests potential natural occurrence.
The paper proposes a conceptual morphospace for evolutionary analysis.
Discussion on RC's stability and evolution in biological contexts.
Abstract
Reservoir Computing (RC) is a powerful computational paradigm that allows high versatility with cheap learning. While other artificial intelligence approaches need exhaustive resources to specify their inner workings, RC is based on a reservoir with highly non-linear dynamics that does not require a fine tuning of its parts. These dynamics project input signals into high-dimensional spaces, where training linear readouts to extract input features is vastly simplified. Thus, inexpensive learning provides very powerful tools for decision making, controlling dynamical systems, classification, etc. RC also facilitates solving multiple tasks in parallel, resulting in a high throughput. Existing literature focuses on applications in artificial intelligence and neuroscience. We review this literature from an evolutionary perspective. RC's versatility make it a great candidate to solve…
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Taxonomy
TopicsNeural Networks and Reservoir Computing · Neural dynamics and brain function · Advanced Memory and Neural Computing
