Long Short-Term Memory-Networks for Machine Reading
Abstract
In this paper we address the question of how to render sequence-level networks better at handling structured input. We propose a machine reading simulator which processes text incrementally from left to right and performs shallow reasoning with memory and attention. The reader extends the Long Short-Term Memory architecture with a memory network in place of a single memory cell. This enables adaptive memory usage during recurrence with neural attention, offering a way to weakly induce relations among tokens. The system is initially designed to process a single sequence but we also demonstrate how to integrate it with an encoder-decoder architecture. Experiments on language modeling, sentiment analysis, and natural language inference show that our model matches or outperforms the state of the art.
Cite
@article{arxiv.1601.06733,
title = {Long Short-Term Memory-Networks for Machine Reading},
author = {Jianpeng Cheng and Li Dong and Mirella Lapata},
journal= {arXiv preprint arXiv:1601.06733},
year = {2016}
}
Comments
Published as a conference paper at EMNLP 2016