AI Article Synopsis

  • Humans can learn multiple tasks sequentially with less interference, while deep neural networks struggle with this; the proposed computational model addresses this issue by mimicking how the prefrontal cortex manages task switching.
  • The model incorporates "sluggish" task units and a Hebbian training mechanism to reduce interference and create clear representations for different tasks.
  • Validation against human behavioral data shows that the model effectively simulates performance differences in task learning, highlighting the impact of training methods on understanding category boundaries.

Article Abstract

Humans can learn several tasks in succession with minimal mutual interference but perform more poorly when trained on multiple tasks at once. The opposite is true for standard deep neural networks. Here, we propose novel computational constraints for artificial neural networks, inspired by earlier work on gating in the primate prefrontal cortex, that capture the cost of interleaved training and allow the network to learn two tasks in sequence without forgetting. We augment standard stochastic gradient descent with two algorithmic motifs, so-called "sluggish" task units and a Hebbian training step that strengthens connections between task units and hidden units that encode task-relevant information. We found that the "sluggish" units introduce a switch-cost during training, which biases representations under interleaved training towards a joint representation that ignores the contextual cue, while the Hebbian step promotes the formation of a gating scheme from task units to the hidden layer that produces orthogonal representations which are perfectly guarded against interference. Validating the model on previously published human behavioural data revealed that it matches performance of participants who had been trained on blocked or interleaved curricula, and that these performance differences were driven by misestimation of the true category boundary.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC9851563PMC
http://dx.doi.org/10.1371/journal.pcbi.1010808DOI Listing

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