Neural End-to-End Learning for Computational Argumentation Mining

04/20/2017
by   Steffen Eger, et al.
0

We investigate neural techniques for end-to-end computational argumentation mining (AM). We frame AM both as a token-based dependency parsing and as a token-based sequence tagging problem, including a multi-task learning setup. Contrary to models that operate on the argument component level, we find that framing AM as dependency parsing leads to subpar performance results. In contrast, less complex (local) tagging models based on BiLSTMs perform robustly across classification scenarios, being able to catch long-range dependencies inherent to the AM problem. Moreover, we find that jointly learning 'natural' subtasks, in a multi-task learning setup, improves performance.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
04/11/2018

Multi-Task Learning for Argumentation Mining

We investigate whether and where multi-task learning (MTL) can improve p...
research
04/11/2018

Multi-Task Learning for Argumentation Mining in Low-Resource Settings

We investigate whether and where multi-task learning (MTL) can improve p...
research
08/09/2019

Artificially Evolved Chunks for Morphosyntactic Analysis

We introduce a language-agnostic evolutionary technique for automaticall...
research
05/01/2020

Spatial Dependency Parsing for 2D Document Understanding

Information Extraction (IE) for document images is often approached as a...
research
03/08/2021

"Sharks are not the threat humans are": Argument Component Segmentation in School Student Essays

Argument mining is often addressed by a pipeline method where segmentati...
research
02/28/2019

Better, Faster, Stronger Sequence Tagging Constituent Parsers

Sequence tagging models for constituent parsing are faster, but less acc...
research
09/15/2020

High-order Refining for End-to-end Chinese Semantic Role Labeling

Current end-to-end semantic role labeling is mostly accomplished via gra...

Please sign up or login with your details

Forgot password? Click here to reset