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Papers/Multiplicative LSTM for sequence modelling

Multiplicative LSTM for sequence modelling

Ben Krause, Liang Lu, Iain Murray, Steve Renals

2016-09-26Density EstimationLanguage Modelling
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Abstract

We introduce multiplicative LSTM (mLSTM), a recurrent neural network architecture for sequence modelling that combines the long short-term memory (LSTM) and multiplicative recurrent neural network architectures. mLSTM is characterised by its ability to have different recurrent transition functions for each possible input, which we argue makes it more expressive for autoregressive density estimation. We demonstrate empirically that mLSTM outperforms standard LSTM and its deep variants for a range of character level language modelling tasks. In this version of the paper, we regularise mLSTM to achieve 1.27 bits/char on text8 and 1.24 bits/char on Hutter Prize. We also apply a purely byte-level mLSTM on the WikiText-2 dataset to achieve a character level entropy of 1.26 bits/char, corresponding to a word level perplexity of 88.8, which is comparable to word level LSTMs regularised in similar ways on the same task.

Results

TaskDatasetMetricValueModel
Language ModellingText8Bit per Character (BPC)1.27Large mLSTM +emb +WN +VD
Language ModellingText8Bit per Character (BPC)1.4Unregularised mLSTM
Language ModellingHutter PrizeBit per Character (BPC)1.24Large mLSTM +emb +WN +VD
Language Modellingenwik8Bit per Character (BPC)1.24Large mLSTM

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