Improving Context Modeling in Neural Topic Segmentation

10/07/2020
by   Linzi Xing, et al.
0

Topic segmentation is critical in key NLP tasks and recent works favor highly effective neural supervised approaches. However, current neural solutions are arguably limited in how they model context. In this paper, we enhance a segmenter based on a hierarchical attention BiLSTM network to better model context, by adding a coherence-related auxiliary task and restricted self-attention. Our optimized segmenter outperforms SOTA approaches when trained and tested on three datasets. We also the robustness of our proposed model in domain transfer setting by training a model on a large-scale dataset and testing it on four challenging real-world benchmarks. Furthermore, we apply our proposed strategy to two other languages (German and Chinese), and show its effectiveness in multilingual scenarios.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
02/15/2019

Context-Aware Self-Attention Networks

Self-attention model have shown its flexibility in parallel computation ...
research
05/31/2021

A Multilingual Modeling Method for Span-Extraction Reading Comprehension

Span-extraction reading comprehension models have made tremendous advanc...
research
10/24/2018

Modeling Localness for Self-Attention Networks

Self-attention networks have proven to be of profound value for its stre...
research
07/26/2019

Investigating Self-Attention Network for Chinese Word Segmentation

Neural network has become the dominant method for Chinese word segmentat...
research
09/18/2022

Improving Topic Segmentation by Injecting Discourse Dependencies

Recent neural supervised topic segmentation models achieve distinguished...
research
04/04/2019

Topic Spotting using Hierarchical Networks with Self Attention

Success of deep learning techniques have renewed the interest in develop...
research
01/05/2023

Topic Segmentation Model Focusing on Local Context

Topic segmentation is important in understanding scientific documents si...

Please sign up or login with your details

Forgot password? Click here to reset