Abstract

Longevity risk management is an area of the life insurance business where the use of Artificial Intelligence is still underdeveloped. The paper retraces the main results of the recent actuarial literature on the topic to draw attention to the potential of Machine Learning in predicting mortality and consequently improving the longevity risk quantification and management, with practical implication on the pricing of life products with long-term duration and lifelong guaranteed options embedded in pension contracts or health insurance products. The application of AI methodologies to mortality forecasts improves both fitting and forecasting of the models traditionally used. In particular, the paper presents the Classification and the Regression Tree framework and the Neural Network algorithm applied to mortality data. The literature results are discussed, focusing on the forecasting performance of the Machine Learning techniques concerning the classical model. Finally, a reflection on both the great potentials of using Machine Learning in longevity management and its drawbacks is offered.

Highlights

  • The availability of large datasets and the advances in Artificial Intelligence (AI) to analyze and extract information from the data represent a challenge for the insurance sector

  • The innovation through Deep Learning (DL) models is driven by constant mortality improvement, addressing the need to better understand future mortality dy

  • The canonical algorithm to verify the goodness of mortality es- Lee-Carter model and its evolutions remain the timates obtained by implementing the Lee-Carter gold standard for comparing future models’ permodel and Renshaw-Haberman model

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Summary

Introduction

The availability of large datasets and the advances in Artificial Intelligence (AI) to analyze and extract information from the data represent a challenge for the insurance sector. It is well known that the insurance industry is a data-driven business, so AI can have significant consequences on its processes and decisions. 56% of the respondents consider the Risk Management the area in which AI has the greatest impact, versus 29% in the banking sector.

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