Unsupervised Text Segmentation Based on Native Language Characteristics
2017-07-01ACL 2017Unverified0· sign in to hype
Shervin Malmasi, Mark Dras, Mark Johnson, Lan Du, Magdalena Wolska
Unverified — Be the first to reproduce this paper.
ReproduceAbstract
Most work on segmenting text does so on the basis of topic changes, but it can be of interest to segment by other, stylistically expressed characteristics such as change of authorship or native language. We propose a Bayesian unsupervised text segmentation approach to the latter. While baseline models achieve essentially random segmentation on our task, indicating its difficulty, a Bayesian model that incorporates appropriately compact language models and alternating asymmetric priors can achieve scores on the standard metrics around halfway to perfect segmentation.