
Fairness in insurance pricing: From proxy discrimination to demographic parity
This note investigates fairness in insurance pricing, focusing on two complementary notions: proxy discrimination and demographic parity.

This note investigates fairness in insurance pricing, focusing on two complementary notions: proxy discrimination and demographic parity.

This paper proposes a new approach to risk classification based on Generalized Gaussian Pro-cess Regression (GGPR).

The expansion of the cyber insurance market is constantly under the threat of an accumulation event that would simultaneously affect a large number of policyholders…

This paper proposes a new approach to risk classification based on Generalized Gaussian Pro-cess Regression (GGPR).

L’émergence du boosting dans le domaine du machine learning a rapidement gagné en popularité parmi les actuaires. Les distributions de Tweedie (dont la Poisson, la Gamma) et binomiale sont les plus couramment utilisées en assurance par exemple pour les modèles de tarification.

This working note starts with a review of the k-means algorithm and develops next two extensions to manage categorical features.

The expansion of the cyber insurance market is constantly under the threat of an accumulation event that would simultaneously affect a large number of policyholders…

This article introduces an equity-Libor Market Model (LMM) that integrates the investment strategy into the valuation process of participating life insurances.

This article proposes an alternative to standard pricing methods based on physics-inspired neural networks (PINNs)…

Generalized additive models (GAMs) are a leading model class for interpretable machine learning. GAMs were originally trained using smoothing splines.

This paper proposes a variant of the well-known boosting trees algorithm to estimate conditional distributions.

In the present note, we present a general methodology to process text data using neural networks, and how it can be used to determine the severity of a cyber incident when this information is missing.