ICML Topological Deep Learning Challenge 2024: Beyond the Graph Domain
Guillermo Bernárdez(Universitat Politècnica de Catalunya), German Magai, Maxim Beketov, Mathilde Papillon, Matouš Elphick, Yun Young Choi, Michael Banf, Sharvaree Vadgama, Boshko Koloski(Jožef Stefan Institute), Federica Baccini(Sapienza University of Rome), Manuel Lecha, Thomas Gebhart, Johan Mathe, Marco Montagna, Audun Myers, Dominik Filipiak, Nikos Kanakaris, Nesreen K. Ahmed(Intel (United States)), Andrei Irimia(University of Southern California), George Dasoulas, Vı́ctor Guallar(Institució Catalana de Recerca i Estudis Avançats), Claudio Battiloro(Harvard University Press), Henry Kvinge, Tim Doster, Tegan Emerson, Miquel Ferriol-Galmés(Universitat Politècnica de Catalunya), Pierrick Leroy, Miguel Carrasco(Adolfo Ibáñez University), Theodore Papamarkou, Maria Sofia Bucarelli, Lev Telyatnikov, Olga Zaghen, Hansen Lillemark, Veljko Kovač, Minho Lee, Graham Johnson(Royal Derby Hospital), Andrea Cavallo, Hongwei Jin, Pengfei Bai, Paul Bogdan(University of Southern California), Scott Mahan(Broad Institute), Theodore Long, Katrina Agate, Giordan Escalona, Halley Fritze, Manel Gil-Sorribes, Salvish Goomanee, Erik J. Bekkers(Eindhoven University of Technology), Liliya Imasheva, Mustafa Hajij
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