Crossref Citations
This article has been cited by the following publications. This list is generated based on data provided by
Crossref.
Wuthrich, Mario V.
2013.
Non-Life Insurance: Mathematics & Statistics.
SSRN Electronic Journal,
Wuthrich, Mario V.
and
Buser, Christoph
2017.
Data Analytics for Non-Life Insurance Pricing.
SSRN Electronic Journal ,
Blier-Wong, Christopher
Cossette, Hélène
Lamontagne, Luc
and
Marceau, Etienne
2020.
Machine Learning in P&C Insurance: A Review for Pricing and Reserving.
Risks,
Vol. 9,
Issue. 1,
p.
4.
Wuthrich, Mario V.
and
Merz, Michael
2021.
Statistical Foundations of Actuarial Learning and its Applications.
SSRN Electronic Journal ,
Antonio, Katrien
Dutang, Christophe
and
Tsanakas, Andreas
2021.
Editorial.
Annals of Actuarial Science,
Vol. 15,
Issue. 2,
p.
205.
Lim, Hong Beng
and
Shyamalkumar, Nariankadu
2021.
Incorporating Industry Stylized Facts into Mortality Tables: Transfer Learning with Monotonicity Constraints.
SSRN Electronic Journal ,
Meng, Shengwang
Wang, He
Shi, Yanlin
and
Gao, Guangyuan
2022.
IMPROVING AUTOMOBILE INSURANCE CLAIMS FREQUENCY PREDICTION WITH TELEMATICS CAR DRIVING DATA.
ASTIN Bulletin,
Vol. 52,
Issue. 2,
p.
363.
Manathunga, Vajira
and
Zhu, Danlei
2022.
Unearned premium risk and machine learning techniques.
Frontiers in Applied Mathematics and Statistics,
Vol. 8,
Issue. ,
Embrechts, Paul
and
Wüthrich, Mario V.
2022.
Recent Challenges in Actuarial Science.
Annual Review of Statistics and Its Application,
Vol. 9,
Issue. 1,
p.
119.
Gao, Guangyuan
Wang, He
and
Wüthrich, Mario V.
2022.
Boosting Poisson regression models with telematics car driving data.
Machine Learning,
Vol. 111,
Issue. 1,
p.
243.
Scognamiglio, Salvatore
2022.
CALIBRATING THE LEE-CARTER AND THE POISSON LEE-CARTER MODELS VIA NEURAL NETWORKS.
ASTIN Bulletin,
Vol. 52,
Issue. 2,
p.
519.
Richman, Ronald
and
Wuthrich, Mario V.
2023.
Conditional Expectation Network for SHAP.
SSRN Electronic Journal,
Lee, Dawn
and
McNamara, Simon
2023.
Dynamic Mortality Modeling: Incorporating Predictions of Future General Population Mortality Into Cost-Effectiveness Analysis.
Value in Health,
Vol. 26,
Issue. 8,
p.
1145.
Tzougas, George
and
Kutzkov, Konstantin
2023.
Enhancing Logistic Regression Using Neural Networks for Classification in Actuarial Learning.
Algorithms,
Vol. 16,
Issue. 2,
p.
99.
Richman, Ronald
and
Wüthrich, Mario V.
2023.
LocalGLMnet: interpretable deep learning for tabular data.
Scandinavian Actuarial Journal,
Vol. 2023,
Issue. 1,
p.
71.
Perla, Francesca
and
Scognamiglio, Salvatore
2023.
Locally-coherent multi-population mortality modelling via neural networks.
Decisions in Economics and Finance,
Vol. 46,
Issue. 1,
p.
157.
Jessup, Sébastien
Mailhot, Mélina
and
Pigeon, Mathieu
2023.
Impact of combination methods on extreme precipitation projections.
Annals of Actuarial Science,
Vol. 17,
Issue. 3,
p.
459.
Jose, Alex
Macdonald, Angus S.
Tzougas, George
and
Streftaris, George
2024.
Interpretable zero-inflated neural network models for predicting admission counts.
Annals of Actuarial Science,
p.
1.
Bourget, Mathilde
Boudreault, Mathieu
Carozza, David A.
Boudreault, Jérémie
and
Raymond, Sébastien
2024.
A data science approach to climate change risk assessment applied to pluvial flood occurrences for the United States and Canada.
ASTIN Bulletin,
Vol. 54,
Issue. 3,
p.
495.
Avanzi, Benjamin
Taylor, Greg
Wang, Melantha
and
Wong, Bernard
2024.
Machine Learning with High-Cardinality Categorical Features in Actuarial Applications.
ASTIN Bulletin,
Vol. 54,
Issue. 2,
p.
213.