Crossref Citations
This article has been cited by the following publications. This list is generated based on data provided by
Crossref.
Souleimanov, Emil Aslan
and
Siroky, David S.
2016.
Random or Retributive?.
World Politics,
Vol. 68,
Issue. 4,
p.
677.
Woiski, Emanuel Rocha
2017.
Probabilistic Prognostics and Health Management of Energy Systems.
p.
169.
Cranmer, Skyler J.
and
Desmarais, Bruce A.
2017.
What Can We Learn from Predictive Modeling?.
Political Analysis,
Vol. 25,
Issue. 2,
p.
145.
Chadefaux, Thomas
2017.
Conflict Forecasting and Its Limits.
SSRN Electronic Journal ,
Chiba, Daina
and
Gleditsch, Kristian Skrede
2017.
The shape of things to come? Expanding the inequality and grievance model for civil war forecasts with event data.
Journal of Peace Research,
Vol. 54,
Issue. 2,
p.
275.
Cederman, Lars-Erik
and
Weidmann, Nils B.
2017.
Predicting armed conflict: Time to adjust our expectations?.
Science,
Vol. 355,
Issue. 6324,
p.
474.
Jiang, Junyan
and
Wallace, Jeremy
2017.
Informal Institutions and Authoritarian Information Systems: Theory and Evidence from China.
SSRN Electronic Journal,
Usanov, Artur N
and
Sweijs, Tim
2017.
Models Versus Rankings: Forecasting Political Violence.
SSRN Electronic Journal ,
Bagozzi, Benjamin E.
and
Koren, Ore
2017.
Using machine learning methods to identify atrocity perpetrators.
p.
3042.
Colaresi, Michael
and
Mahmood, Zuhaib
2017.
Do the robot.
Journal of Peace Research,
Vol. 54,
Issue. 2,
p.
193.
Lee, Sunmin
Kim, Jeong-Cheol
Jung, Hyung-Sup
Lee, Moung Jin
and
Lee, Saro
2017.
Spatial prediction of flood susceptibility using random-forest and boosted-tree models in Seoul metropolitan city, Korea.
Geomatics, Natural Hazards and Risk,
Vol. 8,
Issue. 2,
p.
1185.
Chadefaux, Thomas
and
Kuhn, Tobias
2017.
Conflict forecasting and its limits.
Data Science,
Vol. 1,
Issue. 1-2,
p.
7.
RRRs, Hannes
Usanov, Artur N
Farnham, Nicholas
and
Sweijs, Tim
2017.
Improving the Early Warning Function of Civil War Onset Models Using Automated Event Data.
SSRN Electronic Journal ,
Poulos, Jason
and
Valle, Rafael
2018.
Missing Data Imputation for Supervised Learning.
Applied Artificial Intelligence,
Vol. 32,
Issue. 2,
p.
186.
Wilhelm, Adalbert F. X.
2018.
Classification, (Big) Data Analysis and Statistical Learning.
p.
173.
Beiser-McGrath, Liam F.
and
Huber, Robert A.
2018.
Assessing the relative importance of psychological and demographic factors for predicting climate and environmental attitudes.
Climatic Change,
Vol. 149,
Issue. 3-4,
p.
335.
Basuchoudhary, Atin
and
Bang, James T.
2018.
Predicting Terrorism with Machine Learning: Lessons from “Predicting Terrorism: A Machine Learning Approach”.
Peace Economics, Peace Science and Public Policy,
Vol. 24,
Issue. 4,
Wu, Karen
Chen, Chuansheng
Moyzis, Robert K.
Nuno, Michelle
Yu, Zhaoxia
and
Greenberger, Ellen
2018.
More than skin deep: Major histocompatibility complex (MHC)-based attraction among Asian American speed-daters.
Evolution and Human Behavior,
Vol. 39,
Issue. 4,
p.
447.
Booker, Douglas J.
and
Whitehead, Amy L.
2018.
Inside or Outside: Quantifying Extrapolation Across River Networks.
Water Resources Research,
Vol. 54,
Issue. 9,
p.
6983.
Montgomery, Jacob M.
and
Olivella, Santiago
2018.
Tree‐Based Models for Political Science Data.
American Journal of Political Science,
Vol. 62,
Issue. 3,
p.
729.