Multi-cell LSTM Based Neural Language Model
This work addresses language modeling for NLP researchers, but it appears incremental as it builds on existing LSTM variants.
The authors tackled the problem of improving neural language modeling by proposing a multi-cell LSTM architecture, which outperformed state-of-the-art results on the Penn Treebank dataset.
Language models, being at the heart of many NLP problems, are always of great interest to researchers. Neural language models come with the advantage of distributed representations and long range contexts. With its particular dynamics that allow the cycling of information within the network, `Recurrent neural network' (RNN) becomes an ideal paradigm for neural language modeling. Long Short-Term Memory (LSTM) architecture solves the inadequacies of the standard RNN in modeling long-range contexts. In spite of a plethora of RNN variants, possibility to add multiple memory cells in LSTM nodes was seldom explored. Here we propose a multi-cell node architecture for LSTMs and study its applicability for neural language modeling. The proposed multi-cell LSTM language models outperform the state-of-the-art results on well-known Penn Treebank (PTB) setup.