Mapping Unseen Words to Task-Trained Embedding Spaces
Abstract
We consider the supervised training setting in which we learn task-specific word embeddings. We assume that we start with initial embeddings learned from unlabelled data and update them to learn task-specific embeddings for words in the supervised training data. However, for new words in the test set, we must use either their initial embeddings or a single unknown embedding, which often leads to errors. We address this by learning a neural network to map from initial embeddings to the task-specific embedding space, via a multi-loss objective function. The technique is general, but here we demonstrate its use for improved dependency parsing (especially for sentences with out-of-vocabulary words), as well as for downstream improvements on sentiment analysis.
Cite
@article{arxiv.1510.02387,
title = {Mapping Unseen Words to Task-Trained Embedding Spaces},
author = {Pranava Swaroop Madhyastha and Mohit Bansal and Kevin Gimpel and Karen Livescu},
journal= {arXiv preprint arXiv:1510.02387},
year = {2016}
}
Comments
8 + 3 pages, 3 figures