Neural Lattice-to-sequence Models For Uncertain Inputs | Awesome LLM Papers Contribute to Awesome LLM Papers

Neural Lattice-to-sequence Models For Uncertain Inputs

Matthias Sperber, Graham Neubig, Jan Niehues, Alex Waibel . Proceedings of the 2017 Conference on Empirical Methods in Natural Language Processing 2017 – 75 citations

[Paper]   Search on Google Scholar   Search on Semantic Scholar
EMNLP Uncategorized

The input to a neural sequence-to-sequence model is often determined by an up-stream system, e.g. a word segmenter, part of speech tagger, or speech recognizer. These up-stream models are potentially error-prone. Representing inputs through word lattices allows making this uncertainty explicit by capturing alternative sequences and their posterior probabilities in a compact form. In this work, we extend the TreeLSTM (Tai et al., 2015) into a LatticeLSTM that is able to consume word lattices, and can be used as encoder in an attentional encoder-decoder model. We integrate lattice posterior scores into this architecture by extending the TreeLSTM’s child-sum and forget gates and introducing a bias term into the attention mechanism. We experiment with speech translation lattices and report consistent improvements over baselines that translate either the 1-best hypothesis or the lattice without posterior scores.

Similar Work