Dynamic Feature Generation Network for Answer Selection

L Ma, P Wang, L Zhang - arXiv preprint arXiv:1812.05366, 2018 - arxiv.org
L Ma, P Wang, L Zhang
arXiv preprint arXiv:1812.05366, 2018arxiv.org
Extracting appropriate features to represent a corpus is an important task for textual mining.
Previous attention based work usually enhance feature at the lexical level, which lacks the
exploration of feature augmentation at the sentence level. In this paper, we exploit a
Dynamic Feature Generation Network (DFGN) to solve this problem. Specifically, DFGN
generates features based on a variety of attention mechanisms and attaches features to
sentence representation. Then a thresholder is designed to filter the mined features …
Extracting appropriate features to represent a corpus is an important task for textual mining. Previous attention based work usually enhance feature at the lexical level, which lacks the exploration of feature augmentation at the sentence level. In this paper, we exploit a Dynamic Feature Generation Network (DFGN) to solve this problem. Specifically, DFGN generates features based on a variety of attention mechanisms and attaches features to sentence representation. Then a thresholder is designed to filter the mined features automatically. DFGN extracts the most significant characteristics from datasets to keep its practicability and robustness. Experimental results on multiple well-known answer selection datasets show that our proposed approach significantly outperforms state-of-the-art baselines. We give a detailed analysis of the experiments to illustrate why DFGN provides excellent retrieval and interpretative ability.
arxiv.org
以上显示的是最相近的搜索结果。 查看全部搜索结果