Abstract
How well can social scientists predict societal change, and what processes underlie their predictions? To answer these questions, we ran two forecasting tournaments testing the accuracy of predictions of societal change in domains commonly studied in the social sciences: ideological preferences, political polarization, life satisfaction, sentiment on social media, and gender–career and racial bias. After we provided them with historical trend data on the relevant domain, social scientists submitted pre-registered monthly forecasts for a year (Tournament 1; N = 86 teams and 359 forecasts), with an opportunity to update forecasts on the basis of new data six months later (Tournament 2; N = 120 teams and 546 forecasts). Benchmarking forecasting accuracy revealed that social scientists’ forecasts were on average no more accurate than those of simple statistical models (historical means, random walks or linear regressions) or the aggregate forecasts of a sample from the general public (N = 802). However, scientists were more accurate if they had scientific expertise in a prediction domain, were interdisciplinary, used simpler models and based predictions on prior data.
Original language | English |
---|---|
Pages (from-to) | 484–501 |
Number of pages | 23 |
Journal | Nature Human Behaviour |
Volume | 7 |
DOIs | |
Publication status | Published - Apr 2023 |
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In: Nature Human Behaviour, Vol. 7, 04.2023, p. 484–501.
Research output: Contribution to journal › Article › Research › peer-review
TY - JOUR
T1 - Insights into the accuracy of social scientists’ forecasts of societal change
AU - Grossmann, Igor
AU - Rotella, Amanda
AU - Hutcherson, Cendri A.
AU - Sharpinskyi, Konstantyn
AU - Varnum, Michael E.W.
AU - Achter, Sebastian
AU - Dhami, Mandeep K.
AU - Guo, Xinqi Evie
AU - Kara-Yakoubian, Mane
AU - Mandel, David R.
AU - Raes, Louis
AU - Tay, Louis
AU - Vie, Aymeric
AU - Wagner, Lisa
AU - Adamkovic, Matus
AU - Arami, Arash
AU - Arriaga, Patrícia
AU - Bandara, Kasun
AU - Baník, Gabriel
AU - Bartoš, František
AU - Baskin, Ernest
AU - Bergmeir, Christoph
AU - Białek, Michał
AU - Børsting, Caroline K.
AU - Browne, Dillon T.
AU - Caruso, Eugene M.
AU - Chen, Rong
AU - Chie, Bin Tzong
AU - Chopik, William J.
AU - Collins, Robert N.
AU - Cong, Chin Wen
AU - Conway, Lucian G.
AU - Davis, Matthew
AU - Day, Martin V.
AU - Dhaliwal, Nathan A.
AU - Durham, Justin D.
AU - Dziekan, Martyna
AU - Elbaek, Christian T.
AU - Shuman, Eric
AU - Fabrykant, Marharyta
AU - Firat, Mustafa
AU - Fong, Geoffrey T.
AU - Frimer, Jeremy A.
AU - Gallegos, Jonathan M.
AU - Goldberg, Simon B.
AU - Gollwitzer, Anton
AU - Goyal, Julia
AU - Graf-Vlachy, Lorenz
AU - Gronlund, Scott D.
AU - Hafenbrädl, Sebastian
AU - Hartanto, Andree
AU - Hirshberg, Matthew J.
AU - Hornsey, Matthew J.
AU - Howe, Piers D.L.
AU - Izadi, Anoosha
AU - Jaeger, Bastian
AU - Kačmár, Pavol
AU - Kim, Yeun Joon
AU - Krenzler, Ruslan
AU - Lannin, Daniel G.
AU - Lin, Hung Wen
AU - Lou, Nigel Mantou
AU - Lua, Verity Y.Q.
AU - Lukaszewski, Aaron W.
AU - Ly, Albert L.
AU - Madan, Christopher R.
AU - Maier, Maximilian
AU - Majeed, Nadyanna M.
AU - March, David S.
AU - Marsh, Abigail A.
AU - Misiak, Michal
AU - Myrseth, Kristian Ove R.
AU - Napan, Jaime M.
AU - Nicholas, Jonathan
AU - Nikolopoulos, Konstantinos
AU - O, Jiaqing
AU - Otterbring, Tobias
AU - Paruzel-Czachura, Mariola
AU - Pauer, Shiva
AU - Protzko, John
AU - Raffaelli, Quentin
AU - Ropovik, Ivan
AU - Ross, Robert M.
AU - Roth, Yefim
AU - Røysamb, Espen
AU - Schnabel, Landon
AU - Schütz, Astrid
AU - Seifert, Matthias
AU - Sevincer, A. T.
AU - Sherman, Garrick T.
AU - Simonsson, Otto
AU - Sung, Ming Chien
AU - Tai, Chung Ching
AU - Talhelm, Thomas
AU - Teachman, Bethany A.
AU - Tetlock, Philip E.
AU - Thomakos, Dimitrios
AU - Tse, Dwight C.K.
AU - Twardus, Oliver J.
AU - Tybur, Joshua M.
AU - Ungar, Lyle
AU - Vandermeulen, Daan
AU - Vaughan Williams, Leighton
AU - Vosgerichian, Hrag A.
AU - Wang, Qi
AU - Wang, Ke
AU - Whiting, Mark E.
AU - Wollbrant, Conny E.
AU - Yang, Tao
AU - Yogeeswaran, Kumar
AU - Yoon, Sangsuk
AU - Alves, Ventura R.
AU - Andrews-Hanna, Jessica R.
AU - Bloom, Paul A.
AU - Boyles, Anthony
AU - Charis, Loo
AU - Choi, Mingyeong
AU - Darling-Hammond, Sean
AU - Ferguson, Z. E.
AU - Kaiser, Cheryl R.
AU - Karg, Simon T.
AU - Ortega, Alberto López
AU - Mahoney, Lori
AU - Marsh, Melvin S.
AU - Martinie, Marcellin F.R.C.
AU - Michaels, Eli K.
AU - Millroth, Philip
AU - Naqvi, Jeanean B.
AU - Ng, Weiting
AU - Rutledge, Robb B.
AU - Slattery, Peter
AU - Smiley, Adam H.
AU - Strijbis, Oliver
AU - Sznycer, Daniel
AU - Tsukayama, Eli
AU - van Loon, Austin
AU - Voelkel, Jan G.
AU - Wienk, Margaux N.A.
AU - Wilkening, Tom
AU - The Forecasting Collaborative
N1 - Funding Information: This programme of research was supported by the Basic Research Program at the National Research University Higher School of Economics (M. Fabrykant), John Templeton Foundation grant no. 62260 (I.G. and P.E.T.), Kega 079UK-4/2021 (P.K.), Ministerio de Ciencia e Innovación España grants no. PID2019-111512RB-I00-HMDM and no. HDL-HS-280218 (A.A.), the National Center for Complementary & Integrative Health of the National Institutes of Health under award no. K23AT010879 (S.B.G.), National Science Foundation RAPID grant no. 2026854 (M.E.W.V.), PID2019-111512RB-I00 (M.S.), NPO Systemic Risk Institute grant no. LX22NPO5101 (I.R.), the Slovak Research and Development Agency under contract no. APVV-20-0319 (M.A.), Social Sciences and Humanities Research Council of Canada Insight grant no. 435-2014-0685 (I.G.), Social Sciences and Humanities Research Council of Canada Connection grant no. 611-2020-0190 (I.G.), and Swiss National Science Foundation grant no. PP00P1_170463 (O. Strijbis). The funders had no role in study design, data collection and analysis, decision to publish or preparation of the manuscript. We thank J. Axt for providing monthly estimates of Project Implicit data and the members of the Forecasting Collaborative who chose to remain anonymous for their contribution to the tournaments. Publisher Copyright: © 2023, The Author(s), under exclusive licence to Springer Nature Limited.
PY - 2023/4
Y1 - 2023/4
N2 - How well can social scientists predict societal change, and what processes underlie their predictions? To answer these questions, we ran two forecasting tournaments testing the accuracy of predictions of societal change in domains commonly studied in the social sciences: ideological preferences, political polarization, life satisfaction, sentiment on social media, and gender–career and racial bias. After we provided them with historical trend data on the relevant domain, social scientists submitted pre-registered monthly forecasts for a year (Tournament 1; N = 86 teams and 359 forecasts), with an opportunity to update forecasts on the basis of new data six months later (Tournament 2; N = 120 teams and 546 forecasts). Benchmarking forecasting accuracy revealed that social scientists’ forecasts were on average no more accurate than those of simple statistical models (historical means, random walks or linear regressions) or the aggregate forecasts of a sample from the general public (N = 802). However, scientists were more accurate if they had scientific expertise in a prediction domain, were interdisciplinary, used simpler models and based predictions on prior data.
AB - How well can social scientists predict societal change, and what processes underlie their predictions? To answer these questions, we ran two forecasting tournaments testing the accuracy of predictions of societal change in domains commonly studied in the social sciences: ideological preferences, political polarization, life satisfaction, sentiment on social media, and gender–career and racial bias. After we provided them with historical trend data on the relevant domain, social scientists submitted pre-registered monthly forecasts for a year (Tournament 1; N = 86 teams and 359 forecasts), with an opportunity to update forecasts on the basis of new data six months later (Tournament 2; N = 120 teams and 546 forecasts). Benchmarking forecasting accuracy revealed that social scientists’ forecasts were on average no more accurate than those of simple statistical models (historical means, random walks or linear regressions) or the aggregate forecasts of a sample from the general public (N = 802). However, scientists were more accurate if they had scientific expertise in a prediction domain, were interdisciplinary, used simpler models and based predictions on prior data.
UR - http://www.scopus.com/inward/record.url?scp=85147648888&partnerID=8YFLogxK
U2 - 10.1038/s41562-022-01517-1
DO - 10.1038/s41562-022-01517-1
M3 - Article
C2 - 36759585
AN - SCOPUS:85147648888
SN - 2397-3374
VL - 7
SP - 484
EP - 501
JO - Nature Human Behaviour
JF - Nature Human Behaviour
ER -