Multilingual topic models for unaligned text

TitleMultilingual topic models for unaligned text
Publication TypeConference Papers
Year of Publication2009
AuthorsBoyd-Graber J, Blei DM
Conference NameProceedings of the Twenty-Fifth Conference on Uncertainty in Artificial Intelligence
Date Published2009///
PublisherAUAI Press
Conference LocationArlington, Virginia, United States
ISBN Number978-0-9749039-5-8
Abstract

We develop the multilingual topic model for unaligned text (MuTo), a probabilistic model of text that is designed to analyze corpora composed of documents in two languages. From these documents, MuTo uses stochastic EM to simultaneously discover both a matching between the languages and multilingual latent topics. We demonstrate that MuTo is able to find shared topics on real-world multilingual corpora, successfully pairing related documents across languages. MuTo provides a new framework for creating multilingual topic models without needing carefully curated parallel corpora and allows applications built using the topic model formalism to be applied to a much wider class of corpora.

URLhttp://dl.acm.org/citation.cfm?id=1795114.1795124