In this task, the systems were required to categorize a tweet into three different groups of propaganda techniques, in addition to a negative class: Group 0: Non-propaganda, Group 1: Appeal to community, Group 2: Discrediting the opponent, and Group 3: Loaded language.
Publication
Moral et al. (2024). Overview of DIPROMATS 2024: Detection, Characterization and Tracking of Propaganda in Messages from Diplomats and Authorities of World Powers. Procesamiento del Lenguaje Natural, Revista, 73: 347-358.
Language
Spanish
English
NLP topic
Dataset
Year
2024
Publication link
Ranking metric
ICM
Task results
| System | ICM Sort ascending |
|---|---|
| DSHacker | 0.5222 |
| Victor Vectors | 0.5066 |
| UMUTeam | 0.4759 |
| UC3M-LCPM | 0.3293 |

