Modeling Compositionality with Multiplicative Recurrent Neural Networks
Abstract
We present the multiplicative recurrent neural network as a general model for compositional meaning in language, and evaluate it on the task of fine-grained sentiment analysis. We establish a connection to the previously investigated matrix-space models for compositionality, and show they are special cases of the multiplicative recurrent net. Our experiments show that these models perform comparably or better than Elman-type additive recurrent neural networks and outperform matrix-space models on a standard fine-grained sentiment analysis corpus. Furthermore, they yield comparable results to structural deep models on the recently published Stanford Sentiment Treebank without the need for generating parse trees.
Cite
@article{arxiv.1412.6577,
title = {Modeling Compositionality with Multiplicative Recurrent Neural Networks},
author = {Ozan İrsoy and Claire Cardie},
journal= {arXiv preprint arXiv:1412.6577},
year = {2015}
}
Comments
10 pages, 2 figures, published at ICLR 2015