Key Point Analysis via Contrastive Learning and Extractive Argument Summarization

Publikation: Beitrag in Buch/Bericht/Sammelwerk/KonferenzbandAufsatz in KonferenzbandForschungPeer-Review

Autoren

Externe Organisationen

  • Universität Paderborn
  • Universität Leipzig
  • Universität Bielefeld
Forschungs-netzwerk anzeigen

Details

OriginalspracheEnglisch
Titel des SammelwerksProceedings of The 8th Workshop on Argument Mining,
Seiten184-189
Seitenumfang6
PublikationsstatusVeröffentlicht - 2021
Extern publiziertJa
Veranstaltung8th Workshop on Argument Mining, ArgMining 2021 - Virtual, Punta Cana, Dominikanische Republik
Dauer: 10 Nov. 202111 Nov. 2021

Abstract

Key point analysis is the task of extracting a set of concise and high-level statements from a given collection of arguments, representing the gist of these arguments. This paper presents our proposed approach to the Key Point Analysis shared task, collocated with the 8th Workshop on Argument Mining. The approach integrates two complementary components. One component employs contrastive learning via a siamese neural network for matching arguments to key points; the other is a graph-based extractive summarization model for generating key points. In both automatic and manual evaluation, our approach was ranked best among all submissions to the shared task.

ASJC Scopus Sachgebiete

Zitieren

Key Point Analysis via Contrastive Learning and Extractive Argument Summarization. / Alshomary, Milad; Gurke, Timon; Syed, Shahbaz et al.
Proceedings of The 8th Workshop on Argument Mining,. 2021. S. 184-189.

Publikation: Beitrag in Buch/Bericht/Sammelwerk/KonferenzbandAufsatz in KonferenzbandForschungPeer-Review

Alshomary, M, Gurke, T, Syed, S, Heinisch, P, Spliethöver, M, Cimiano, P, Potthast, M & Wachsmuth, H 2021, Key Point Analysis via Contrastive Learning and Extractive Argument Summarization. in Proceedings of The 8th Workshop on Argument Mining,. S. 184-189, 8th Workshop on Argument Mining, ArgMining 2021, Virtual, Punta Cana, Dominikanische Republik, 10 Nov. 2021. <https://aclanthology.org/2021.argmining-1.19.pdf>
Alshomary, M., Gurke, T., Syed, S., Heinisch, P., Spliethöver, M., Cimiano, P., Potthast, M., & Wachsmuth, H. (2021). Key Point Analysis via Contrastive Learning and Extractive Argument Summarization. In Proceedings of The 8th Workshop on Argument Mining, (S. 184-189) https://aclanthology.org/2021.argmining-1.19.pdf
Alshomary M, Gurke T, Syed S, Heinisch P, Spliethöver M, Cimiano P et al. Key Point Analysis via Contrastive Learning and Extractive Argument Summarization. in Proceedings of The 8th Workshop on Argument Mining,. 2021. S. 184-189
Alshomary, Milad ; Gurke, Timon ; Syed, Shahbaz et al. / Key Point Analysis via Contrastive Learning and Extractive Argument Summarization. Proceedings of The 8th Workshop on Argument Mining,. 2021. S. 184-189
Download
@inproceedings{cb03975195fb4f9281e0d1ee1b6855c8,
title = "Key Point Analysis via Contrastive Learning and Extractive Argument Summarization",
abstract = "Key point analysis is the task of extracting a set of concise and high-level statements from a given collection of arguments, representing the gist of these arguments. This paper presents our proposed approach to the Key Point Analysis shared task, collocated with the 8th Workshop on Argument Mining. The approach integrates two complementary components. One component employs contrastive learning via a siamese neural network for matching arguments to key points; the other is a graph-based extractive summarization model for generating key points. In both automatic and manual evaluation, our approach was ranked best among all submissions to the shared task.",
author = "Milad Alshomary and Timon Gurke and Shahbaz Syed and Philipp Heinisch and Maximilian Splieth{\"o}ver and Philipp Cimiano and Martin Potthast and Henning Wachsmuth",
year = "2021",
language = "English",
isbn = "9781954085923",
pages = "184--189",
booktitle = "Proceedings of The 8th Workshop on Argument Mining,",
note = "8th Workshop on Argument Mining, ArgMining 2021 ; Conference date: 10-11-2021 Through 11-11-2021",

}

Download

TY - GEN

T1 - Key Point Analysis via Contrastive Learning and Extractive Argument Summarization

AU - Alshomary, Milad

AU - Gurke, Timon

AU - Syed, Shahbaz

AU - Heinisch, Philipp

AU - Spliethöver, Maximilian

AU - Cimiano, Philipp

AU - Potthast, Martin

AU - Wachsmuth, Henning

PY - 2021

Y1 - 2021

N2 - Key point analysis is the task of extracting a set of concise and high-level statements from a given collection of arguments, representing the gist of these arguments. This paper presents our proposed approach to the Key Point Analysis shared task, collocated with the 8th Workshop on Argument Mining. The approach integrates two complementary components. One component employs contrastive learning via a siamese neural network for matching arguments to key points; the other is a graph-based extractive summarization model for generating key points. In both automatic and manual evaluation, our approach was ranked best among all submissions to the shared task.

AB - Key point analysis is the task of extracting a set of concise and high-level statements from a given collection of arguments, representing the gist of these arguments. This paper presents our proposed approach to the Key Point Analysis shared task, collocated with the 8th Workshop on Argument Mining. The approach integrates two complementary components. One component employs contrastive learning via a siamese neural network for matching arguments to key points; the other is a graph-based extractive summarization model for generating key points. In both automatic and manual evaluation, our approach was ranked best among all submissions to the shared task.

UR - http://www.scopus.com/inward/record.url?scp=85118304667&partnerID=8YFLogxK

M3 - Conference contribution

AN - SCOPUS:85118304667

SN - 9781954085923

SP - 184

EP - 189

BT - Proceedings of The 8th Workshop on Argument Mining,

T2 - 8th Workshop on Argument Mining, ArgMining 2021

Y2 - 10 November 2021 through 11 November 2021

ER -

Von denselben Autoren