ASTIN Bulletin, volume 50, issue 1, pages 25-60
A NEURAL NETWORK BOOSTED DOUBLE OVERDISPERSED POISSON CLAIMS RESERVING MODEL
Andrea Gabrielli
1
Publication type: Journal Article
Publication date: 2019-12-17
Journal:
ASTIN Bulletin
scimago Q1
SJR: 0.979
CiteScore: 3.2
Impact factor: 1.7
ISSN: 05150361, 17831350
Economics and Econometrics
Finance
Accounting
Abstract
We present an actuarial claims reserving technique that takes into account both claim counts and claim amounts. Separate (overdispersed) Poisson models for the claim counts and the claim amounts are combined by a joint embedding into a neural network architecture. As starting point of the neural network calibration, we use exactly these two separate (overdispersed) Poisson models. Such a nested model can be interpreted as a boosting machine. It allows us for joint modeling and mutual learning of claim counts and claim amounts beyond the two individual (overdispersed) Poisson models.
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