Grouping of Contracts in Insurance using Neural Networks
Despite the high importance of grouping in practice, there exists little research on the respective topic. The present work presents a complete framework for grouping and a novel method to optimize model points. Model points are used to substitute clusters of contracts in an insurance portfolio and...
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Zusammenfassung: | Despite the high importance of grouping in practice, there exists little
research on the respective topic. The present work presents a complete
framework for grouping and a novel method to optimize model points. Model
points are used to substitute clusters of contracts in an insurance portfolio
and thus yield a smaller, computationally less burdensome portfolio. This
grouped portfolio is controlled to have similar characteristics as the original
portfolio. We provide numerical results for term life insurance and defined
contribution plans, which indicate the superiority of our approach compared to
K-means clustering, a common baseline algorithm for grouping. Lastly, we show
that the presented concept can optimize a fixed number of model points for the
entire portfolio simultaneously. This eliminates the need for any
pre-clustering of the portfolio, e.g. by K-means clustering, and therefore
presents our method as an entirely new and independent methodology. |
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DOI: | 10.48550/arxiv.1912.09964 |