Back to Search Start Over

Six Attributes of Unhealthy Conversation

Authors :
Price, Ilan
Gifford-Moore, Jordan
Fleming, Jory
Musker, Saul
Roichman, Maayan
Sylvain, Guillaume
Thain, Nithum
Dixon, Lucas
Sorensen, Jeffrey
Publication Year :
2020

Abstract

We present a new dataset of approximately 44000 comments labeled by crowdworkers. Each comment is labelled as either 'healthy' or 'unhealthy', in addition to binary labels for the presence of six potentially 'unhealthy' sub-attributes: (1) hostile; (2) antagonistic, insulting, provocative or trolling; (3) dismissive; (4) condescending or patronising; (5) sarcastic; and/or (6) an unfair generalisation. Each label also has an associated confidence score. We argue that there is a need for datasets which enable research based on a broad notion of 'unhealthy online conversation'. We build this typology to encompass a substantial proportion of the individual comments which contribute to unhealthy online conversation. For some of these attributes, this is the first publicly available dataset of this scale. We explore the quality of the dataset, present some summary statistics and initial models to illustrate the utility of this data, and highlight limitations and directions for further research.<br />Comment: Appearing in the 4th Workshop on Online Abuse and Harms (2020)

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2010.07410
Document Type :
Working Paper