Risk/return/retention efficient frontier discovery through evolutionary optimization for non-life insurance portfolio
Số trang: 30
Loại file: pdf
Dung lượng: 711.58 KB
Lượt xem: 21
Lượt tải: 0
Xem trước 3 trang đầu tiên của tài liệu này:
Thông tin tài liệu:
Policyholder capability to easily and promptly change their insurance cover, in terms of contract conditions and provider, has substantially increased during last decades due to high market competency levels and favourable regulations. Consequently, policyholder behaviour modelling acquired increasing attention since being able to predict costumer reaction to future market’s fluctuations and company’s decision achieved a pivotal role within most mature insurance markets. Integrating existing modelling platform with policyholder behavioural predictions allows companies to create synthetic responding environments where several market projections and company’s strategies can be simulated and, through sets of defined objective functions, compared. In this way, companies are able to identify optimal strategies by means of a Multi-Objective optimization problem where the ultimate goal is to approximate the entire set of optimal solutions defining the socalled Pareto Efficient Frontier.
Nội dung trích xuất từ tài liệu:
Risk/return/retention efficient frontier discovery through evolutionary optimization for non-life insurance portfolio
Nội dung trích xuất từ tài liệu:
Risk/return/retention efficient frontier discovery through evolutionary optimization for non-life insurance portfolio
Tìm kiếm theo từ khóa liên quan:
Policyholder behaviour Portfolio optimization Renewal price Evolutionary computation Multi-objective optimization Differential evolution Monte carlo optimizationTài liệu liên quan:
-
Ebook The handbook of evolutionary computation
940 trang 37 0 0 -
10 trang 34 0 0
-
Note on fano ratio and portfolio optimization
33 trang 33 0 0 -
Portfolio Optimization: Some Aspects of Modeling & Computing
9 trang 31 0 0 -
What are the benefits of globally invested mutual funds? Evidence from statistical arbitrage models
27 trang 30 0 0 -
User driven multi-criteria source selection
21 trang 22 0 0 -
13 trang 22 0 0
-
Ebook Frontiers of evolutionary computation
296 trang 19 0 0 -
Bài giảng Tính toán tiến hóa: Bài 9 - TS. Huỳnh Thị Thanh Bình
30 trang 17 0 0 -
Optimization of steel roof trusses using machine learning-assisted differential evolution
12 trang 16 0 0