Abstract
Boosting emerged from the field of machine learning and became rapidly popular among insurance analysts. The Tweedie and Binomial distributions are the most commonly used in insurance for regression analysis. Hainaut et al. (2022) showed that boosting can be conducted directly on the response under Tweedie loss function and log-link, by adapting the weights at each iteration step. In this note, we recall the results of Hainaut et al. (2022) and we supplement them with an easy probabilistic interpretation to the boosting procedure. Next, we draw a parallel between these results and those established by Hastie et al. (2009) for the Bernoulli loss function and logit-link: Hastie et al. (2009) highlighted that, as an approximation, boosting can also be performed directly with responses under Bernoulli loss function and logit-link. Interestingly, we show that this observation can actually been extended to the Binomial case.
Keywords: Clustering analysis, unsupervised learning, k-means, spectral clustering.
Sector: Insurance
Expertise: Machine learning
Authors: Julien Trufin
Publisher: Detralytics
Date: March 2025
Language: English
Pages: 12
Reference: Detra Note 2025-1
About the authors

Julien Trufin
Julien is a Scientific Advisor at Detralytics, as well as a professor in Actuarial Science at the department of mathematics of the Université Libre de Bruxelles. Julien has experience as a consultant and a strong academic background developed at prominent institutions, including Université Laval (Canada), UCL, and ULB (Belgium). At Detralytics, Julien coaches young talents, provide cutting-edge training, fosters innovation and oversees R&D projects.