Share your thoughts, 1 month free Claude Pro on usSee more
WorkDL logo mark

Neural End-to-End Learning for Computational Argumentation Mining

About

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.

Steffen Eger, Johannes Daxenberger, Iryna Gurevych• 2017

Related benchmarks

TaskDatasetResultRank
Argument MiningAAEC paragraph level
Component F170.83
14
Argument MiningAAEC essay level
Component F166.21
11
Argument Component IdentificationCMV Modes (test)
Claim Precision0.19
7
Showing 3 of 3 rows

Other info

Follow for update