2022
DOI: 10.1007/978-3-031-08473-7_21
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Predicting Argument Density from Multiple Annotations

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Cited by 2 publications
(3 citation statements)
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“…While other works that simply partition texts into argument and non argument types might achieve even higher IAA, our task is at a higher difficulty level. Compared to similar efforts annotating refined argument structures (Rocha et al, 2022) ( u α = 0.33), our IAA score is significantly improved.…”
Section: Annotation Rounds All Annotations Were Donementioning
confidence: 91%
“…While other works that simply partition texts into argument and non argument types might achieve even higher IAA, our task is at a higher difficulty level. Compared to similar efforts annotating refined argument structures (Rocha et al, 2022) ( u α = 0.33), our IAA score is significantly improved.…”
Section: Annotation Rounds All Annotations Were Donementioning
confidence: 91%
“…In both cases, argumentation annotations are kept, either manually or automatically projected from the original annotated corpus. Rocha et al (2022b) have made some inroads into applying Freeman's model to a less structured argumentative genre-opinion articles as published in a Portuguese newspaper. In their approach, each of a set of 373 articles has been annotated considering the full Freeman model, including several kinds of argument structures (linked, convergent, divergent, and serial) as well as two kinds of relations (support and attack).…”
Section: Freeman Annotationsmentioning
confidence: 99%
“…However, for the argumentative units in which there is agreement, higher-level component analysis (such as types and roles of propositions, and macro-structure of arguments) can obtain considerable agreement. Based on this corpus, they have explored the recent trend into perspectivist approaches to NLP (Basile et al 2021), by considering different ways of aggregating annotations (Rocha et al 2022a).…”
Section: Freeman Annotationsmentioning
confidence: 99%