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%T Computational reproducibility in computational social science %A Schoch, David %A Chan, Chung-hong %A Wagner, Claudia %A Bleier, Arnim %J EPJ Data Science %V 13 %D 2024 %K Computational Social Science; Open Science; Replicability Crisis; Reproducibility %@ 2193-1127 %~ GESIS %U localfile:/var/local/dda-files/prod/crawlerfiles/7e3a268d6e684f86a6ad481d30cb6c68/7e3a268d6e684f86a6ad481d30cb6c68.pdf %X Open science practices have been widely discussed and have been implemented with varying success in different disciplines. We argue that computational-x disciplines such as computational social science, are also susceptible to the symptoms of the crises, but in terms of reproducibility. We expand the binary definition of reproducibility into a tier system which allows increasing levels of reproducibility based on external verifiability to counteract the practice of open-washing. We provide solutions for barriers in Computational Social Science that hinder researchers from obtaining the highest level of reproducibility, including the use of alternate data sources and considering reproducibility proactively. %C DEU %G en %9 Zeitschriftenartikel %W GESIS - http://www.gesis.org %~ SSOAR - http://www.ssoar.info