Group Sparse CNNs for Question Classification with Answer Sets
Computation and Language
2017-10-10 v1
Abstract
Question classification is an important task with wide applications. However, traditional techniques treat questions as general sentences, ignoring the corresponding answer data. In order to consider answer information into question modeling, we first introduce novel group sparse autoencoders which refine question representation by utilizing group information in the answer set. We then propose novel group sparse CNNs which naturally learn question representation with respect to their answers by implanting group sparse autoencoders into traditional CNNs. The proposed model significantly outperform strong baselines on four datasets.
Keywords
Cite
@article{arxiv.1710.02717,
title = {Group Sparse CNNs for Question Classification with Answer Sets},
author = {Mingbo Ma and Liang Huang and Bing Xiang and Bowen Zhou},
journal= {arXiv preprint arXiv:1710.02717},
year = {2017}
}
Comments
6, ACL 2017