Computational Social Science: Obstacles and Opportunities
David M. J. Lazer, Alex Pentland, Duncan J. Watts, Sinan Aral, Susan Athey, Noshir Contractor, Deen Freelon, Sandra Gonzalez-Bailon, Gary King, Helen Margetts, Alondra Nelson, Matthew J. Salganik, Markus Strohmaier, Alessandro Vespignani, Claudia Wagner. 2020.
"Computational Social Science: Obstacles and Opportunities".
Science, 369, 6507, Pp. 1060–1062.

Abstract
The field of computational social science (CSS) has exploded in prominence over the past decade, with thousands of papers published using observational data, experimental designs, and large-scale simulations that were once unfeasible or unavailable to researchers. These studies have greatly improved our understanding of important phenomena, ranging from social inequality to the spread of infectious diseases. The institutions supporting CSS in the academy have also grown substantially, as evidenced by the proliferation of conferences, workshops, and summer schools across the globe, across disciplines, and across sources of data. But the field has also fallen short in important ways. Many institutional structures around the field—including research ethics, pedagogy, and data infrastructure—are still nascent. We suggest opportunities to address these issues, especially in improving the alignment between the organization of the 20th-century university and the intellectual requirements of the field.
See Also
- [Paper] Computational Social Science (2009)
- [Presentation] Empowering Social Science Research With Industry Partnerships (Dean's Symposium on Social Science Innovations, Harvard) (2021)
- [Presentation] Empowering Social Science to Understand and Ameliorate Major Challenges of Human Society (Federal Interagency Conference on Social Science and Big Data) (2020)
- [Presentation] The Next Big [Social Science] Thing. Some Suggestions for Science Magazine (2015)
- [Paper] Restructuring the Social Sciences: Reflections from Harvard's Institute for Quantitative Social Science (2014)
- [Paper] An Improved Method of Automated Nonparametric Content Analysis for Social Science (2022)
- [Software] Readme2: An R Package for Improved Automated Nonparametric Content Analysis for Social Science (2018)
- [Presentation] The Next Big [Social Science] Thing (2016)