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mdpi_argumentations's Introduction

mdpi_argumentations

Description

  • Total number of reviews: 115
  • Each review has been annotated two times by different annotators.
  • Total number of annotations: 164

Structure

{article_review_name}.txt - file with collected text from all files from the review {article_review_name}_{reviewer}.tsv - file with annotation of the review

Annotation structure (*.tsv)

Stores all sentences from the review. If sentence is not a review, then all columns will be None except ann and text

Column name Description
side side of the argument.
opponent opponent of the argument.
round Number of round
number Number of argument in the round
attacks Number of attacking argument from the previous round
ann Type of argument (0-not an argument, 1-author, 2-reviewer)
text Text of argument\sentence

Visualization

You can use save_annotated_text_html func from ./src/utils.py

Example of result represented in ./assets/admsci5030125_boyarkin.html:

visualization_example.png

Statistics

Krippendorff's alpha for the dataset is 0.81±0.19 [link]

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