Incremental Learning for Fully Unsupervised Word Segmentation Using Penalized Likelihood and Model Selection
Computation and Language
2016-09-26 v2
Abstract
We present a novel incremental learning approach for unsupervised word segmentation that combines features from probabilistic modeling and model selection. This includes super-additive penalties for addressing the cognitive burden imposed by long word formation, and new model selection criteria based on higher-order generative assumptions. Our approach is fully unsupervised; it relies on a small number of parameters that permits flexible modeling and a mechanism that automatically learns parameters from the data. Through experimentation, we show that this intricate design has led to top-tier performance in both phonemic and orthographic word segmentation.
Cite
@article{arxiv.1607.05822,
title = {Incremental Learning for Fully Unsupervised Word Segmentation Using Penalized Likelihood and Model Selection},
author = {Ruey-Cheng Chen},
journal= {arXiv preprint arXiv:1607.05822},
year = {2016}
}
Comments
12 pages, 2014, unpublished