NEMay 30, 2014

ELM Solutions for Event-Based Systems

arXiv:1405.7780v18 citations
Originality Incremental advance
AI Analysis

This work addresses signal processing for event-based systems like the brain, but it is incremental as it adapts an existing method (ELM) with straightforward modifications.

The authors tackled the problem of processing spatio-temporal event signals, such as neural spikes, by modifying Extreme Learning Machine (ELM) networks to handle event-based inputs online with high accuracy.

Whilst most engineered systems use signals that are continuous in time, there is a domain of systems in which signals consist of events. Events, like Dirac delta functions, have no meaningful time duration. Many important real-world systems are intrinsically event-based, including the mammalian brain, in which the primary packets of data are spike events, or action potentials. In this domain, signal processing requires responses to spatio-temporal patterns of events. We show that some straightforward modifications to the standard ELM topology produce networks that are able to perform spatio-temporal event processing online with a high degree of accuracy. The modifications involve the re-definition of hidden layer units as synaptic kernels, in which the input delta functions are transformed into continuous-valued signals using a variety of impulse-response functions. This permits the use of linear solution methods in the output layer, which can produce events as output, if modeled as a classifier; the output classes are 'event' or 'no event'. We illustrate the method in application to a spike-processing problem.

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