Learning Robust Representations of Text
Computation and Language
2016-09-21 v1
Abstract
Deep neural networks have achieved remarkable results across many language processing tasks, however these methods are highly sensitive to noise and adversarial attacks. We present a regularization based method for limiting network sensitivity to its inputs, inspired by ideas from computer vision, thus learning models that are more robust. Empirical evaluation over a range of sentiment datasets with a convolutional neural network shows that, compared to a baseline model and the dropout method, our method achieves superior performance over noisy inputs and out-of-domain data.
Cite
@article{arxiv.1609.06082,
title = {Learning Robust Representations of Text},
author = {Yitong Li and Trevor Cohn and Timothy Baldwin},
journal= {arXiv preprint arXiv:1609.06082},
year = {2016}
}
Comments
5 pages with 2 pages reference, 2 tables, 1 figure