Trimming and Improving Skip-thought Vectors
Abstract
The skip-thought model has been proven to be effective at learning sentence representations and capturing sentence semantics. In this paper, we propose a suite of techniques to trim and improve it. First, we validate a hypothesis that, given a current sentence, inferring the previous and inferring the next sentence provide similar supervision power, therefore only one decoder for predicting the next sentence is preserved in our trimmed skip-thought model. Second, we present a connection layer between encoder and decoder to help the model to generalize better on semantic relatedness tasks. Third, we found that a good word embedding initialization is also essential for learning better sentence representations. We train our model unsupervised on a large corpus with contiguous sentences, and then evaluate the trained model on 7 supervised tasks, which includes semantic relatedness, paraphrase detection, and text classification benchmarks. We empirically show that, our proposed model is a faster, lighter-weight and equally powerful alternative to the original skip-thought model.
Cite
@article{arxiv.1706.03148,
title = {Trimming and Improving Skip-thought Vectors},
author = {Shuai Tang and Hailin Jin and Chen Fang and Zhaowen Wang and Virginia R. de Sa},
journal= {arXiv preprint arXiv:1706.03148},
year = {2017}
}