Kalman Filter Learning Algorithms and State Space Representations for Stochastic Claims Reserving
Abstract
:- In addition to the hitherto considered full reserve risk, one could investigate the one-year reserve risk by quantifying the claims development result (see, e.g., Merz and Wüthrich 2008, 2012) via SSMs and KF;
- Instead of assuming linear systems, one could consider non-linear systems, where the extended KF is applicable (see, e.g., Julier and Uhlmann 2004);
- It is also feasible to conduct micro-level claims reserving (see, e.g., De Felice and Moriconi 2019; Duval and Pigeon 2019) by means of SSMs and KF;
- One could consult an outlier-robust KF (see, e.g., Agamennoni et al. 2011) or an interval KF for interval-linear systems (see, e.g., Chen et al. 1997).
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
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Chukhrova, N.; Johannssen, A. Kalman Filter Learning Algorithms and State Space Representations for Stochastic Claims Reserving. Risks 2021, 9, 112. https://doi.org/10.3390/risks9060112
Chukhrova N, Johannssen A. Kalman Filter Learning Algorithms and State Space Representations for Stochastic Claims Reserving. Risks. 2021; 9(6):112. https://doi.org/10.3390/risks9060112
Chicago/Turabian StyleChukhrova, Nataliya, and Arne Johannssen. 2021. "Kalman Filter Learning Algorithms and State Space Representations for Stochastic Claims Reserving" Risks 9, no. 6: 112. https://doi.org/10.3390/risks9060112
APA StyleChukhrova, N., & Johannssen, A. (2021). Kalman Filter Learning Algorithms and State Space Representations for Stochastic Claims Reserving. Risks, 9(6), 112. https://doi.org/10.3390/risks9060112