A Multiplicative Model for Learning Distributed Text-Based Attribute Representations
Abstract
In this paper we propose a general framework for learning distributed representations of attributes: characteristics of text whose representations can be jointly learned with word embeddings. Attributes can correspond to document indicators (to learn sentence vectors), language indicators (to learn distributed language representations), meta-data and side information (such as the age, gender and industry of a blogger) or representations of authors. We describe a third-order model where word context and attribute vectors interact multiplicatively to predict the next word in a sequence. This leads to the notion of conditional word similarity: how meanings of words change when conditioned on different attributes. We perform several experimental tasks including sentiment classification, cross-lingual document classification, and blog authorship attribution. We also qualitatively evaluate conditional word neighbours and attribute-conditioned text generation.
Cite
@article{arxiv.1406.2710,
title = {A Multiplicative Model for Learning Distributed Text-Based Attribute Representations},
author = {Ryan Kiros and Richard S. Zemel and Ruslan Salakhutdinov},
journal= {arXiv preprint arXiv:1406.2710},
year = {2014}
}
Comments
11 pages. An earlier version was accepted to the ICML-2014 Workshop on Knowledge-Powered Deep Learning for Text Mining