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Tweet round-up from #ICWSM24


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10 June 2024



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The 18th International Conference on Web and Social Media (ICWSM) took place from 3-6 June in Buffalo, USA. The conference cuts across many disciplines including network science, machine learning, computational linguistics, sociology, communication, and political science. In this Twitter round-up, we take a look at what the participants got up to at the event.



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