Domain adaptation techniques for improved cross-domain study of galaxy mergers
Aleksandra Ćiprijanović(Fermi National Accelerator Laboratory), B. Nord(Fermi National Accelerator Laboratory), Sandeep Madireddy(Argonne National Laboratory), Gabriel Perdue(Fermi National Accelerator Laboratory), Diana Kafkes(Fermi National Accelerator Laboratory), Sydney Jenkins(University of Chicago), Travis Johnston(Oak Ridge National Laboratory), Kathryn Downey(University of Chicago)
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