SubmissionNumber#=%=#128 FinalPaperTitle#=%=#Snarci at SemEval-2024 Task 4: Themis Model for Binary Classification of Memes ShortPaperTitle#=%=# NumberOfPages#=%=#6 CopyrightSigned#=%=#Luca Zedda JobTitle#==# Organization#==#Department of Mathematics and Computer Science, University of Cagliari, Via Ospedale 72, Cagliari (Italy) Abstract#==#This paper introduces an approach developed for multimodal meme analysis, specifically targeting the identification of persuasion techniques embedded within memes. Our methodology integrates Large Language Models (LLMs) and contrastive learning image encoders to discern the presence of persuasive elements in memes across diverse platforms. By capitalizing on the contextual understanding facilitated by LLMs and the discriminative power of contrastive learning for image encoding, our framework provides a robust solution for detecting and classifying memes with persuasion techniques. The system was used in Task 4 of Semeval 2024, precisely for Substask 2b (binary classification of presence of persuasion techniques). It showed promising results overall, achieving a Macro-F1=0.7986 on the English test data (i.e., the language the system was trained on) and Macro-F1=0.66777/0.47917/0.5554, respectively, on the other three "surprise'' languages proposed by the task organizers, i.e., Bulgarian, North Macedonian and Arabic. The paper provides an overview of the system, along with a discussion of the results obtained and its main limitations. Author{1}{Firstname}#=%=#Luca Author{1}{Lastname}#=%=#Zedda Author{1}{Username}#=%=#lucazedda Author{1}{Email}#=%=#luca.zedda@unica.it Author{1}{Affiliation}#=%=#University of Cagliari Author{2}{Firstname}#=%=#Alessandra Author{2}{Lastname}#=%=#Perniciano Author{2}{Username}#=%=#alessandraperniciano Author{2}{Email}#=%=#a.pernician@unica.it Author{2}{Affiliation}#=%=#University of Cagliari Author{3}{Firstname}#=%=#Andrea Author{3}{Lastname}#=%=#Loddo Author{3}{Username}#=%=#andrealoddo Author{3}{Email}#=%=#andrea.loddo@unica.it Author{3}{Affiliation}#=%=#University of Cagliari Author{4}{Firstname}#=%=#Cecilia Author{4}{Lastname}#=%=#Di Ruberto Author{4}{Username}#=%=#ceciliadir Author{4}{Email}#=%=#dirubert@unica.it Author{4}{Affiliation}#=%=#University of Cagliari Author{5}{Firstname}#=%=#Manuela Author{5}{Lastname}#=%=#Sanguinetti Author{5}{Username}#=%=#manu_start Author{5}{Email}#=%=#manu.sanguin@gmail.com Author{5}{Affiliation}#=%=#University of Cagliari, Department of Mathematics and Computer Science Author{6}{Firstname}#=%=#Maurizio Author{6}{Lastname}#=%=#Atzori Author{6}{Username}#=%=#atzori Author{6}{Email}#=%=#atzori@unica.it Author{6}{Affiliation}#=%=#University of Cagliari ========== èéáğö