Neural calibration of hidden inhomogeneous Markov chains -- Information decompression in life insurance
Markov chains play a key role in a vast number of areas, including life insurance mathematics. Standard actuarial quantities as the premium value can be interpreted as compressed, lossy information about the underlying Markov process. We introduce a method to reconstruct the underlying Markov chain...
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Zusammenfassung: | Markov chains play a key role in a vast number of areas, including life
insurance mathematics. Standard actuarial quantities as the premium value can
be interpreted as compressed, lossy information about the underlying Markov
process. We introduce a method to reconstruct the underlying Markov chain given
collective information of a portfolio of contracts. Our neural architecture
explainably characterizes the process by explicitly providing one-step
transition probabilities. Further, we provide an intrinsic, economic model
validation to inspect the quality of the information decompression. Lastly, our
methodology is successfully tested for a realistic data set of German term life
insurance contracts. |
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DOI: | 10.48550/arxiv.2201.02397 |