Thus Spoke the Algorithm: On the Functional Constructs and Mathematical Foundations of Spiking Neural Networks

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Abstract

The human brain is a marvel of evolutionary engineering, a system of astonishing complexity and efficiency. Its ability to process vast amounts of information and withstand disruptions is largely due to the elaborate networks of neurons and synapses. The efforts of modern science to replicate this natural efficiency through the development of artificial neural systems is, in essence, an attempt to externalize and actualize the implicit potential of nature’s order. This challenge has long eluded traditional computational models. Artificial Neural Networks despite their sophistication, are energy-intensive and cumbersome, requiring vast amounts of memory and processing power to account for the temporal variability of events that unfold over varying durations and intensities. These systems, while useful, often fall short of capturing the full complexity of nature’s patterns. Enter Spiking Neural Networks, a new class of bio-inspired models that draw directly from the brain’s way of processing information. Unlike conventional neural networks, which operate continuously, SNNs rely on discrete spikes, closely mimicking the time-based behavior of biological neurons. This ability to handle time-varying information efficiently mirrors the brain’s rhythms and offers a more energy-conscious solution to understanding dynamic systems.

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