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Key Point Analysis via Contrastive Learning and Extractive Argument Summarization

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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.

Milad Alshomary, Timon Gurcke, Shahbaz Syed, Philipp Heinrich, Maximilian Splieth\"over, Philipp Cimiano, Martin Potthast, Henning Wachsmuth• 2021

Related benchmarks

TaskDatasetResultRank
Key Point AnalysisArgKP 2021 (test)
R-118.9
14
Qualitative Evaluation of Stance Distribution and Argument OrganizationAllsides Election
Informativeness3.51
8
Argument OrganizationAllsides Terrorism
Coherence3.48
5
Argument OrganizationPerspectrum Abolish nuclear weapons
Coherence3.62
5
Argument OrganizationPerspectrum Social networking sites are good for our society
Coherence3.58
5
Argument OrganizationPerspectrum There is a need for developing tactical nuclear weapons
Coherence3.87
5
Argument OrganizationAllsides Politics
Coherence2.16
5
Argument OrganizationAllsides Immigration
Coherence3.69
5
Argument OrganizationAllsides Foreign Policy
Coherence2.63
5
Argument OrganizationAllsides Healthcare
Coherence3.66
5
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