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Response versus gradient boosting trees, GLMs and neural networks under Tweedie loss and log-link

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  • Donatien Hainaut
  • Julien Trufin
  • Michel Denuit

Abstract

Thanks to its outstanding performances, boosting has rapidly gained wide acceptance among actuaries. To speed up calculations, boosting is often applied to gradients of the loss function, not to responses (hence the name gradient boosting). When the model is trained by minimizing Poisson deviance, this amounts to apply the least-squares principle to raw residuals. This exposes gradient boosting to the same problems that lead to replace least-squares with Poisson Generalized Linear Models (GLM) to analyze low counts (typically, the number of reported claims at policy level in personal lines). This paper shows that boosting can be conducted directly on the response under Tweedie loss function and log-link, by adapting the weights at each step. Numerical illustrations demonstrate similar or better performances compared to gradient boosting when trees are used as weak learners, with a higher level of transparency since responses are used instead of gradients.

Suggested Citation

  • Donatien Hainaut & Julien Trufin & Michel Denuit, 2022. "Response versus gradient boosting trees, GLMs and neural networks under Tweedie loss and log-link," Scandinavian Actuarial Journal, Taylor & Francis Journals, vol. 2022(10), pages 841-866, November.
  • Handle: RePEc:taf:sactxx:v:2022:y:2022:i:10:p:841-866
    DOI: 10.1080/03461238.2022.2037016
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    Cited by:

    1. Freek Holvoet & Katrien Antonio & Roel Henckaerts, 2023. "Neural networks for insurance pricing with frequency and severity data: a benchmark study from data preprocessing to technical tariff," Papers 2310.12671, arXiv.org, revised Aug 2024.

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