Categories
- ACTUARIAL DATA SCIENCE
- AFIR / ERM / RISK
- ASTIN / NON-LIFE
- BANKING / FINANCE
- DIVERSITY & INCLUSION
- EDUCATION
- HEALTH
- IACA / CONSULTING
- LIFE
- PENSIONS
- PROFESSIONALISM
- THOUGHT LEADERSHIP
- MISC
ICA LIVE: Workshop "Diversity of Thought #14
Italian National Actuarial Congress 2023 - Plenary Session with Frank Schiller
Italian National Actuarial Congress 2023 - Parallel Session on "Science in the Knowledge"
Italian National Actuarial Congress 2023 - Parallel Session with Lutz Wilhelmy, Daniela Martini and International Panelists
Italian National Actuarial Congress 2023 - Parallel Session with Kartina Thompson, Paola Scarabotto and International Panelists
40 views
0 comments
0 likes
0 favorites
Machine learning has gained popularity due to advances in computing power and access to large datasets, enabling the training of complex models. This thesis explored its potential in insurance reserve setting by comparing Gradient Boosting Machines (GBM) and neural networks with traditional statistical models. The results showed that machine learning often provided more accurate reserve estimates, with GBM performing best in most cases by balancing over- and underestimations. While all models worked well on simulated data, they faced challenges with real-world data. Overall, the findings suggest that machine learning, offers an interesting approach for improving reserve accuracy in non-life insurance.
0 Comments
There are no comments yet. Add a comment.