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arxiv: 1808.04444 · v2 · pith:ACOHDHWEnew · submitted 2018-08-09 · 💻 cs.CL · cs.AI· cs.LG· stat.ML

Character-Level Language Modeling with Deeper Self-Attention

classification 💻 cs.CL cs.AIcs.LGstat.ML
keywords character-levelintermediatelanguagemodelingvariantsabilityachievingassume
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LSTMs and other RNN variants have shown strong performance on character-level language modeling. These models are typically trained using truncated backpropagation through time, and it is common to assume that their success stems from their ability to remember long-term contexts. In this paper, we show that a deep (64-layer) transformer model with fixed context outperforms RNN variants by a large margin, achieving state of the art on two popular benchmarks: 1.13 bits per character on text8 and 1.06 on enwik8. To get good results at this depth, we show that it is important to add auxiliary losses, both at intermediate network layers and intermediate sequence positions.

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Cited by 4 Pith papers

Reviewed papers in the Pith corpus that reference this work. Sorted by Pith novelty score.

  1. Reformer: The Efficient Transformer

    cs.LG 2020-01 accept novelty 8.0

    Reformer matches standard Transformer accuracy on long sequences while using far less memory and running faster via LSH attention and reversible residual layers.

  2. XLNet: Generalized Autoregressive Pretraining for Language Understanding

    cs.CL 2019-06 accept novelty 7.0

    XLNet is a generalized autoregressive pretraining method that learns bidirectional contexts via permutation-based factorization and outperforms BERT on 20 NLP tasks.

  3. Generating Long Sequences with Sparse Transformers

    cs.LG 2019-04 unverdicted novelty 7.0

    Sparse Transformers factorize attention to handle sequences tens of thousands long, achieving new SOTA density modeling on Enwik8, CIFAR-10, and ImageNet-64.

  4. R-Transformer: Recurrent Neural Network Enhanced Transformer

    cs.LG 2019-07 unverdicted novelty 6.0

    R-Transformer integrates RNNs with multi-head attention to model local and global sequence dependencies without position embeddings and reports large-margin gains over prior methods on diverse tasks.