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Surprisal-Driven Zoneout

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arxiv 1610.07675 v6 pith:DOHGB4XY submitted 2016-10-24 cs.LG cs.AIcs.NE

Surprisal-Driven Zoneout

classification cs.LG cs.AIcs.NE
keywords zoneoutmethodregularizationachievingadaptivebasisbestbits
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We propose a novel method of regularization for recurrent neural networks called suprisal-driven zoneout. In this method, states zoneout (maintain their previous value rather than updating), when the suprisal (discrepancy between the last state's prediction and target) is small. Thus regularization is adaptive and input-driven on a per-neuron basis. We demonstrate the effectiveness of this idea by achieving state-of-the-art bits per character of 1.31 on the Hutter Prize Wikipedia dataset, significantly reducing the gap to the best known highly-engineered compression methods.

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