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Main Authors: Soures, Nicholas, Helfer, Peter, Daram, Anurag, Pandit, Tej, Kudithipudi, Dhireesha
Format: Preprint
Udgivet: 2024
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Online adgang:https://arxiv.org/abs/2409.00021
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author Soures, Nicholas
Helfer, Peter
Daram, Anurag
Pandit, Tej
Kudithipudi, Dhireesha
author_facet Soures, Nicholas
Helfer, Peter
Daram, Anurag
Pandit, Tej
Kudithipudi, Dhireesha
contents Catastrophic interference, the loss of previously learned information when learning new information, remains a major challenge in machine learning. Since living organisms do not seem to suffer from this problem, researchers have taken inspiration from biology to improve memory retention in artificial intelligence systems. However, previous attempts to use bio-inspired mechanisms have typically resulted in systems that rely on task boundary information during training and/or explicit task identification during inference, information that is not available in real-world scenarios. Here, we show that neuro-inspired mechanisms such as synaptic consolidation and metaplasticity can mitigate catastrophic interference in a spiking neural network, using only synapse-local information, with no need for task awareness, and with a fixed memory size that does not need to be increased when training on new tasks. Our model, TACOS, combines neuromodulation with complex synaptic dynamics to enable new learning while protecting previous information. We evaluate TACOS on sequential image recognition tasks and demonstrate its effectiveness in reducing catastrophic interference. Our results show that TACOS outperforms existing regularization techniques in domain-incremental learning scenarios. We also report the results of an ablation study to elucidate the contribution of each neuro-inspired mechanism separately.
format Preprint
id arxiv_https___arxiv_org_abs_2409_00021
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle TACOS: Task Agnostic Continual Learning in Spiking Neural Networks
Soures, Nicholas
Helfer, Peter
Daram, Anurag
Pandit, Tej
Kudithipudi, Dhireesha
Neural and Evolutionary Computing
Artificial Intelligence
Machine Learning
Catastrophic interference, the loss of previously learned information when learning new information, remains a major challenge in machine learning. Since living organisms do not seem to suffer from this problem, researchers have taken inspiration from biology to improve memory retention in artificial intelligence systems. However, previous attempts to use bio-inspired mechanisms have typically resulted in systems that rely on task boundary information during training and/or explicit task identification during inference, information that is not available in real-world scenarios. Here, we show that neuro-inspired mechanisms such as synaptic consolidation and metaplasticity can mitigate catastrophic interference in a spiking neural network, using only synapse-local information, with no need for task awareness, and with a fixed memory size that does not need to be increased when training on new tasks. Our model, TACOS, combines neuromodulation with complex synaptic dynamics to enable new learning while protecting previous information. We evaluate TACOS on sequential image recognition tasks and demonstrate its effectiveness in reducing catastrophic interference. Our results show that TACOS outperforms existing regularization techniques in domain-incremental learning scenarios. We also report the results of an ablation study to elucidate the contribution of each neuro-inspired mechanism separately.
title TACOS: Task Agnostic Continual Learning in Spiking Neural Networks
topic Neural and Evolutionary Computing
Artificial Intelligence
Machine Learning
url https://arxiv.org/abs/2409.00021