SECTOR: A Neural Model for Coherent Topic Segmentation and Classification
Abstract
When searching for information, a human reader first glances over a document, spots relevant sections and then focuses on a few sentences for resolving her intention. However, the high variance of document structure complicates to identify the salient topic of a given section at a glance. To tackle this challenge, we present SECTOR, a model to support machine reading systems by segmenting documents into coherent sections and assigning topic labels to each section. Our deep neural network architecture learns a latent topic embedding over the course of a document. This can be leveraged to classify local topics from plain text and segment a document at topic shifts. In addition, we contribute WikiSection, a publicly available dataset with 242k labeled sections in English and German from two distinct domains: diseases and cities. From our extensive evaluation of 20 architectures, we report a highest score of 71.6% F1 for the segmentation and classification of 30 topics from the English city domain, scored by our SECTOR LSTM model with bloom filter embeddings and bidirectional segmentation. This is a significant improvement of 29.5 points F1 compared to state-of-the-art CNN classifiers with baseline segmentation.
Cite
@article{arxiv.1902.04793,
title = {SECTOR: A Neural Model for Coherent Topic Segmentation and Classification},
author = {Sebastian Arnold and Rudolf Schneider and Philippe Cudré-Mauroux and Felix A. Gers and Alexander Löser},
journal= {arXiv preprint arXiv:1902.04793},
year = {2019}
}
Comments
Author's final version, accepted for publication at TACL, 2019