Biological neurons act as generalization filters in reservoir computing
Takuma Sumi, Hideaki Yamamoto, Yuichi Katori, Satoshi Moriya, Tomohiro, Konno, Shigeo Sato, Ayumi Hirano-Iwata

TL;DR
This study demonstrates that biological neuronal networks can serve as effective reservoirs for processing time-series data, with modular architecture enhancing classification and transfer learning capabilities, advancing understanding of neural computation.
Contribution
It provides experimental evidence that biological neural networks act as generalization filters in reservoir computing, integrating modular architecture with biophysical properties for improved computation.
Findings
Modular BNNs classify static patterns with high accuracy.
BNNs exhibit short-term memory of about 1 second.
BNNs enable transfer learning across datasets.
Abstract
Reservoir computing is a machine learning paradigm that transforms the transient dynamics of high-dimensional nonlinear systems for processing time-series data. Although reservoir computing was initially proposed to model information processing in the mammalian cortex, it remains unclear how the non-random network architecture, such as the modular architecture, in the cortex integrates with the biophysics of living neurons to characterize the function of biological neuronal networks (BNNs). Here, we used optogenetics and fluorescent calcium imaging to record the multicellular responses of cultured BNNs and employed the reservoir computing framework to decode their computational capabilities. Micropatterned substrates were used to embed the modular architecture in the BNNs. We first show that modular BNNs can be used to classify static input patterns with a linear decoder and that the…
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Taxonomy
TopicsNeural dynamics and brain function · Neural Networks and Reservoir Computing · Advanced Memory and Neural Computing
