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,
Fung, Tsz Chai
Badescu, Andrei L.
and
Lin, X. Sheldon
2019.
A class of mixture of experts models for general insurance: Theoretical developments.
Insurance: Mathematics and Economics,
Vol. 89,
Issue. ,
p.
111.
Tseung, Spark C.
Badescu, Andrei
Fung, Tsz Chai
and
Lin, Xiaodong Sheldon
2020.
LRMoE: An R Package for Flexible Actuarial Loss Modelling Using Mixture of Experts Regression Model.
SSRN Electronic Journal ,
Počuča, Nikola
Jevtić, Petar
McNicholas, Paul D.
and
Miljkovic, Tatjana
2020.
Modeling frequency and severity of claims with the zero-inflated generalized cluster-weighted models.
Insurance: Mathematics and Economics,
Vol. 94,
Issue. ,
p.
79.
Delong, Lukasz
Lindholm, Mathias
and
Wuthrich, Mario V.
2020.
Fitting Gamma Mixture Density Networks with Expectation-Maximization Algorithm.
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.
Makariou, Despoina
Barrieu, Pauline
and
Tzougas, George
2021.
A Finite Mixture Modelling Perspective for Combining Experts’ Opinions with an Application to Quantile-Based Risk Measures.
Risks,
Vol. 9,
Issue. 6,
p.
115.
Tzougas, George
and
Pignatelli di Cerchiara, Alice
2021.
The multivariate mixed Negative Binomial regression model with an application to insurance a posteriori ratemaking.
Insurance: Mathematics and Economics,
Vol. 101,
Issue. ,
p.
602.
Jiang, Weiwei
Li, Rongqiang
Cao, Deshun
Li, Chuankun
and
Tao, Shaohui
2021.
A Modified Expectation Maximization Approach for Process Data Rectification.
Processes,
Vol. 9,
Issue. 2,
p.
270.
Delong, Łukasz
Lindholm, Mathias
and
Wüthrich, Mario V.
2021.
Gamma Mixture Density Networks and their application to modelling insurance claim amounts.
Insurance: Mathematics and Economics,
Vol. 101,
Issue. ,
p.
240.
Wuthrich, Mario V.
and
Merz, Michael
2021.
Statistical Foundations of Actuarial Learning and its Applications.
SSRN Electronic Journal ,
Tseung, Spark C.
Badescu, Andrei L.
Fung, Tsz Chai
and
Lin, X. Sheldon
2021.
LRMoE.jl: a software package for insurance loss modelling using mixture of experts regression model.
Annals of Actuarial Science,
Vol. 15,
Issue. 2,
p.
419.
Ki Kang, Seul
Peng, Liang
and
Golub, Andrew
2021.
Two-step risk analysis in insurance ratemaking.
Scandinavian Actuarial Journal,
Vol. 2021,
Issue. 6,
p.
532.
Fung, Tsz Chai
Badescu, Andrei L.
and
Lin, X. Sheldon
2021.
A New Class of Severity Regression Models with an Application to IBNR Prediction.
North American Actuarial Journal,
Vol. 25,
Issue. 2,
p.
206.
Chen, Zezhun
Dassios, Angelos
and
Tzougas, George
2022.
EM Estimation for the Bivariate Mixed Exponential Regression Model.
Risks,
Vol. 10,
Issue. 5,
p.
105.
Corradin, Alexandre
Denuit, Michel
Detyniecki, Marcin
Grari, Vincent
Sammarco, Matteo
and
Trufin, Julien
2022.
JOINT MODELING OF CLAIM FREQUENCIES AND BEHAVIORAL SIGNALS IN MOTOR INSURANCE.
ASTIN Bulletin,
Vol. 52,
Issue. 1,
p.
33.
Zhang, Pengcheng
Chen, Zezhun
Tzougas, George
Wu, Xueyuan
Dassios, Angelos
and
Wu, Xueyuan
2022.
Multivariate Zero-Inflated Inar(1) Model with an Application in Automobile Insurance.
SSRN Electronic Journal ,
Fung, Tsz Chai
Badescu, Andrei L.
and
Lin, X. Sheldon
2022.
Fitting Censored and Truncated Regression Data Using the Mixture of Experts Models.
North American Actuarial Journal,
Vol. 26,
Issue. 4,
p.
496.
Tzougas, George
and
Makariou, Despoina
2022.
The multivariate Poisson‐Generalized Inverse Gaussian claim count regression model with varying dispersion and shape parameters.
Risk Management and Insurance Review,
Vol. 25,
Issue. 4,
p.
401.
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.