Article ID Journal Published Year Pages File Type
515910 Information Processing & Management 2011 17 Pages PDF
Abstract

In this paper, the task of text segmentation is approached from a topic modeling perspective. We investigate the use of two unsupervised topic models, latent Dirichlet allocation (LDA) and multinomial mixture (MM), to segment a text into semantically coherent parts. The proposed topic model based approaches consistently outperform a standard baseline method on several datasets. A major benefit of the proposed LDA based approach is that along with the segment boundaries, it outputs the topic distribution associated with each segment. This information is of potential use in applications such as segment retrieval and discourse analysis. However, the proposed approaches, especially the LDA based method, have high computational requirements. Based on an analysis of the dynamic programming (DP) algorithm typically used for segmentation, we suggest a modification to DP that dramatically speeds up the process with no loss in performance. The proposed modification to the DP algorithm is not specific to the topic models only; it is applicable to all the algorithms that use DP for the task of text segmentation.

Research Highlights► Use of unsupervised topic models for text segmentation task. ► Reducing the computational cost associated with dynamic programming. ► Evaluation on several datasets to investigate the issues of text segmentation.

Related Topics
Physical Sciences and Engineering Computer Science Computer Science Applications
Authors
, , , ,