Kalman Filter Learning Algorithms and State Space Representations for Stochastic Claims Reserving

Author:

Chukhrova NataliyaORCID,Johannssen ArneORCID

Abstract

In stochastic claims reserving, state space models have been used for almost 40 years to forecast loss reserves and to compute their mean squared error of prediction. Although state space models and the associated Kalman filter learning algorithms are very powerful and flexible tools, comparatively few articles on this topic were published during this period. Most recently, several articles have been published which highlight the benefits of state space models in stochastic claims reserving and may lead to a significant increase in its popularity for applications in actuarial practice. To further emphasize the merits of these papers, this commentary highlights various additional aspects that are useful for practical applications and offer some fruitful directions for future research.

Publisher

MDPI AG

Subject

Strategy and Management,Economics, Econometrics and Finance (miscellaneous),Accounting

Reference22 articles.

1. A row-wise Stacking of the Runoff Triangle: State Space Alternatives for IBNR Reserve Prediction;Atherino;ASTIN Bulletin,2010

2. COMMON SHOCK MODELS FOR CLAIM ARRAYS

3. A multivariate evolutionary generalised linear model framework with adaptive estimation for claims reserving;Avanzi;Insurance: Mathematics and Economics,2020

4. Interval Kalman filtering

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