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BINGO!: A Novel Neural Network Pruning Mechanism to Allow For Physical Computing in AI Education

Author(s)
Panangat, Aditya
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Abstract
BINGO, during the training pass, studies specific subsets of a neural network one at a time to gauge how significant of a role each weight plays in contributing to a network’s accuracy. By the time training is done, BINGO generates a significance score for each weight, allowing for insignificant weights to be pruned in one shot. BINGO provides an accuracy-preserving pruning technique that is less computationally intensive than current methods, allowing for a world where students can learn about AI through engaging physical computing activities.
Date issued
2025-07
URI
https://hdl.handle.net/1721.1/163130
Journal
2025 MIT AI and Education Summit

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