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arxiv: 1807.01406 · v2 · pith:4SZUETUBnew · submitted 2018-07-04 · 💻 cs.LG · cs.FL· stat.ML

Connecting Weighted Automata and Recurrent Neural Networks through Spectral Learning

classification 💻 cs.LG cs.FLstat.ML
keywords algorithmlearninglinearrnnswfasautomatanetworksneural
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In this paper, we unravel a fundamental connection between weighted finite automata~(WFAs) and second-order recurrent neural networks~(2-RNNs): in the case of sequences of discrete symbols, WFAs and 2-RNNs with linear activation functions are expressively equivalent. Motivated by this result, we build upon a recent extension of the spectral learning algorithm to vector-valued WFAs and propose the first provable learning algorithm for linear 2-RNNs defined over sequences of continuous input vectors. This algorithm relies on estimating low rank sub-blocks of the so-called Hankel tensor, from which the parameters of a linear 2-RNN can be provably recovered. The performances of the proposed method are assessed in a simulation study.

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