Learning Operations on a Stack with Neural Turing Machines
Abstract
Neural Turing Machines demonstrate capability in handling long-term dependencies and recognizing balanced parentheses through stack emulation and strong generalization to longer sequences.
Multiple extensions of Recurrent Neural Networks (RNNs) have been proposed recently to address the difficulty of storing information over long time periods. In this paper, we experiment with the capacity of Neural Turing Machines (NTMs) to deal with these long-term dependencies on well-balanced strings of parentheses. We show that not only does the NTM emulate a stack with its heads and learn an algorithm to recognize such words, but it is also capable of strongly generalizing to much longer sequences.
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