Beyond spiking networks: the computational advantages of dendritic amplification and input segregation
Cristiano Capone, Cosimo Lupo, Paolo Muratore, Pier Stanislao Paolucci

TL;DR
This paper introduces a biologically inspired neuron model with dendritic compartments and burst mechanisms, enabling efficient, target-based learning for complex spatio-temporal tasks without error propagation.
Contribution
It proposes a novel three-compartment pyramidal neuron model supporting biologically plausible target-based learning, advancing AI capabilities inspired by neural structures.
Findings
The model efficiently solves spatio-temporal tasks like 3D trajectory recall.
It enables hierarchical imitation learning for complex decision-making.
The architecture supports burst-dependent learning rules based on dendritic input segregation.
Abstract
The brain can efficiently learn a wide range of tasks, motivating the search for biologically inspired learning rules for improving current artificial intelligence technology. Most biological models are composed of point neurons, and cannot achieve the state-of-the-art performances in machine learning. Recent works have proposed that segregation of dendritic input (neurons receive sensory information and higher-order feedback in segregated compartments) and generation of high-frequency bursts of spikes would support error backpropagation in biological neurons. However, these approaches require propagating errors with a fine spatio-temporal structure to the neurons, which is unlikely to be feasible in a biological network. To relax this assumption, we suggest that bursts and dendritic input segregation provide a natural support for biologically plausible target-based learning, which…
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