Mapping (Dis-)Information Flow about the MH17 Plane Crash

Research output: Contribution to conferencePaperResearch

Standard

Mapping (Dis-)Information Flow about the MH17 Plane Crash. / Hartmann, Mareike ; Golovchenko, Yevgeniy; Augenstein, Isabelle.

2019. 45-55 Paper presented at Natural Language Processing for Internet Freedom, Hong Kong.

Research output: Contribution to conferencePaperResearch

Harvard

Hartmann, M, Golovchenko, Y & Augenstein, I 2019, 'Mapping (Dis-)Information Flow about the MH17 Plane Crash', Paper presented at Natural Language Processing for Internet Freedom, Hong Kong, 04/11/2019 pp. 45-55.

APA

Hartmann, M., Golovchenko, Y., & Augenstein, I. (2019). Mapping (Dis-)Information Flow about the MH17 Plane Crash. 45-55. Paper presented at Natural Language Processing for Internet Freedom, Hong Kong.

Vancouver

Hartmann M, Golovchenko Y, Augenstein I. Mapping (Dis-)Information Flow about the MH17 Plane Crash. 2019. Paper presented at Natural Language Processing for Internet Freedom, Hong Kong.

Author

Hartmann, Mareike ; Golovchenko, Yevgeniy ; Augenstein, Isabelle. / Mapping (Dis-)Information Flow about the MH17 Plane Crash. Paper presented at Natural Language Processing for Internet Freedom, Hong Kong.

Bibtex

@conference{d157e0ef8b1646c3bd6602355a29c516,
title = "Mapping (Dis-)Information Flow about the MH17 Plane Crash",
abstract = "Digital media enables not only fast sharingof information, but also disinformation. Oneprominent case of an event leading to circu-lation of disinformation on social media isthe MH17 plane crash. Studies analysing thespread of information about this event on Twit-ter have focused on small, manually anno-tated datasets, or used proxys for data anno-tation. In this work, we examine to what ex-tent text classifiers can be used to label datafor subsequent content analysis, in particularwe focus on predicting pro-Russian and pro-Ukrainian Twitter content related to the MH17plane crash. Even though we find that a neuralclassifier improves over a hashtag based base-line, labeling pro-Russian and pro-Ukrainiancontent with high precision remains a chal-lenging problem. We provide an error analysisunderlining the difficulty of the task and iden-tify factors that might help improve classifica-tion in future work. Finally, we show how theclassifier can facilitate the annotation task forhuman annotators",
author = "Mareike Hartmann and Yevgeniy Golovchenko and Isabelle Augenstein",
note = "Proceedings of the Workshop; Natural Language Processing for Internet Freedom : Censorship, Disinformation, and Propaganda, NLP4IF 2019 ; Conference date: 04-11-2019",
year = "2019",
language = "English",
pages = "45--55",
url = "https://www.aclweb.org/anthology/D19-50.pdf#page=55",

}

RIS

TY - CONF

T1 - Mapping (Dis-)Information Flow about the MH17 Plane Crash

AU - Hartmann, Mareike

AU - Golovchenko, Yevgeniy

AU - Augenstein, Isabelle

N1 - Conference code: EMNLP-IJCNLP 2019

PY - 2019

Y1 - 2019

N2 - Digital media enables not only fast sharingof information, but also disinformation. Oneprominent case of an event leading to circu-lation of disinformation on social media isthe MH17 plane crash. Studies analysing thespread of information about this event on Twit-ter have focused on small, manually anno-tated datasets, or used proxys for data anno-tation. In this work, we examine to what ex-tent text classifiers can be used to label datafor subsequent content analysis, in particularwe focus on predicting pro-Russian and pro-Ukrainian Twitter content related to the MH17plane crash. Even though we find that a neuralclassifier improves over a hashtag based base-line, labeling pro-Russian and pro-Ukrainiancontent with high precision remains a chal-lenging problem. We provide an error analysisunderlining the difficulty of the task and iden-tify factors that might help improve classifica-tion in future work. Finally, we show how theclassifier can facilitate the annotation task forhuman annotators

AB - Digital media enables not only fast sharingof information, but also disinformation. Oneprominent case of an event leading to circu-lation of disinformation on social media isthe MH17 plane crash. Studies analysing thespread of information about this event on Twit-ter have focused on small, manually anno-tated datasets, or used proxys for data anno-tation. In this work, we examine to what ex-tent text classifiers can be used to label datafor subsequent content analysis, in particularwe focus on predicting pro-Russian and pro-Ukrainian Twitter content related to the MH17plane crash. Even though we find that a neuralclassifier improves over a hashtag based base-line, labeling pro-Russian and pro-Ukrainiancontent with high precision remains a chal-lenging problem. We provide an error analysisunderlining the difficulty of the task and iden-tify factors that might help improve classifica-tion in future work. Finally, we show how theclassifier can facilitate the annotation task forhuman annotators

UR - https://www.aclweb.org/anthology/D19-50.pdf#page=55

M3 - Paper

SP - 45

EP - 55

T2 - Natural Language Processing for Internet Freedom

Y2 - 4 November 2019

ER -

ID: 234936965