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Architectural Complexity Measures of Recurrent Neural Networks

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arxiv 1602.08210 v3 pith:HN3HAB7N submitted 2016-02-26 cs.LG cs.NE

Architectural Complexity Measures of Recurrent Neural Networks

classification cs.LG cs.NE
keywords recurrentdepthrnnscapturescomplexityfeedforwardnetworksneural
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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In this paper, we systematically analyze the connecting architectures of recurrent neural networks (RNNs). Our main contribution is twofold: first, we present a rigorous graph-theoretic framework describing the connecting architectures of RNNs in general. Second, we propose three architecture complexity measures of RNNs: (a) the recurrent depth, which captures the RNN's over-time nonlinear complexity, (b) the feedforward depth, which captures the local input-output nonlinearity (similar to the "depth" in feedforward neural networks (FNNs)), and (c) the recurrent skip coefficient which captures how rapidly the information propagates over time. We rigorously prove each measure's existence and computability. Our experimental results show that RNNs might benefit from larger recurrent depth and feedforward depth. We further demonstrate that increasing recurrent skip coefficient offers performance boosts on long term dependency problems.

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