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Weighted Automata Extraction from Recurrent Neural Networks via Regression on State Spaces

2019-04-05Unverified0· sign in to hype

Takamasa Okudono, Masaki Waga, Taro Sekiyama, Ichiro Hasuo

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Abstract

We present a method to extract a weighted finite automaton (WFA) from a recurrent neural network (RNN). Our algorithm is based on the WFA learning algorithm by Balle and Mohri, which is in turn an extension of Angluin's classic algorithm. Our technical novelty is in the use of regression methods for the so-called equivalence queries, thus exploiting the internal state space of an RNN to prioritize counterexample candidates. This way we achieve a quantitative/weighted extension of the recent work by Weiss, Goldberg and Yahav that extracts DFAs. We experimentally evaluate the accuracy, expressivity and efficiency of the extracted WFAs.

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