Learning to solve arithmetic problems with a virtual abacus
Petruzzellis, Flavio, Chen, Ling Xuan, Testolin, Alberto
–arXiv.org Artificial Intelligence
Acquiring mathematical skills is considered a key challenge for modern Artificial Intelligence systems. Inspired by the way humans discover numerical knowledge, here we introduce a deep reinforcement learning framework that allows to simulate how cognitive agents could gradually learn to solve arithmetic problems by interacting with a virtual abacus. The proposed model successfully learn to perform multi-digit additions and subtractions, achieving an error rate below 1% even when operands are much longer than those observed during training. We also compare the performance of learning agents receiving a different amount of explicit supervision, and we analyze the most common error patterns to better understand the limitations and biases resulting from our design choices.
arXiv.org Artificial Intelligence
Jan-17-2023