ROBUST AND SEMI-ROBUST CREDIBILITY MODEL FOR HEAVY-TAILED DATA

Credibility model is a model that is used to calculate insurance pure premium by combining industry-standard pure premium with past claim data. The most common credibility model used are Classical Credibility Model, Bayesian Credibility Model, and B¨uhlmann Credibility Model. These credibility mo...

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Main Author: Christopher Aryento, Jevan
Format: Final Project
Language:Indonesia
Online Access:https://digilib.itb.ac.id/gdl/view/81486
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Institution: Institut Teknologi Bandung
Language: Indonesia
id id-itb.:81486
spelling id-itb.:814862024-06-28T08:08:17ZROBUST AND SEMI-ROBUST CREDIBILITY MODEL FOR HEAVY-TAILED DATA Christopher Aryento, Jevan Indonesia Final Project Credibility Model, Pure Premium, Insurance, B¨uhlmann , Robust INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/81486 Credibility model is a model that is used to calculate insurance pure premium by combining industry-standard pure premium with past claim data. The most common credibility model used are Classical Credibility Model, Bayesian Credibility Model, and B¨uhlmann Credibility Model. These credibility models have their advantages and disadvantages, but none of them can provide accurate and simple pure premium calculation for heavy-tailed data which is prone to outlier. Moreover, those models are using sample mean as their statistic to represent past data. Whereas general insurance data is prone to outlier, which will result in over-penalized premium. Hence, this research will provide 2 new credibility model, called Robust Credibility Model, which consist of sample median and sample upper quartile, and Semi-Robust Credibility Model, which consist of sample mean and sample median. Both models is more resistant to outlier. Both models will be tested with B¨uhlmann Credibility Model for 2 types of data, that is heavy-tailed (Pareto-distributed) and light-tailed (exponent-distributed) data. Based on the simulation, Semi-robust Credibility Model is the best model for heavy-tailed data, while B¨uhlmann and Semi-robust Credibility Model has near identical performance for light-tailed data. In conclusion, Robust and Semi-robust Credibility Model is an excellent alternative for heavy-tailed data, but not as good of an alternative for light-tailed data due to its complexity. text
institution Institut Teknologi Bandung
building Institut Teknologi Bandung Library
continent Asia
country Indonesia
Indonesia
content_provider Institut Teknologi Bandung
collection Digital ITB
language Indonesia
description Credibility model is a model that is used to calculate insurance pure premium by combining industry-standard pure premium with past claim data. The most common credibility model used are Classical Credibility Model, Bayesian Credibility Model, and B¨uhlmann Credibility Model. These credibility models have their advantages and disadvantages, but none of them can provide accurate and simple pure premium calculation for heavy-tailed data which is prone to outlier. Moreover, those models are using sample mean as their statistic to represent past data. Whereas general insurance data is prone to outlier, which will result in over-penalized premium. Hence, this research will provide 2 new credibility model, called Robust Credibility Model, which consist of sample median and sample upper quartile, and Semi-Robust Credibility Model, which consist of sample mean and sample median. Both models is more resistant to outlier. Both models will be tested with B¨uhlmann Credibility Model for 2 types of data, that is heavy-tailed (Pareto-distributed) and light-tailed (exponent-distributed) data. Based on the simulation, Semi-robust Credibility Model is the best model for heavy-tailed data, while B¨uhlmann and Semi-robust Credibility Model has near identical performance for light-tailed data. In conclusion, Robust and Semi-robust Credibility Model is an excellent alternative for heavy-tailed data, but not as good of an alternative for light-tailed data due to its complexity.
format Final Project
author Christopher Aryento, Jevan
spellingShingle Christopher Aryento, Jevan
ROBUST AND SEMI-ROBUST CREDIBILITY MODEL FOR HEAVY-TAILED DATA
author_facet Christopher Aryento, Jevan
author_sort Christopher Aryento, Jevan
title ROBUST AND SEMI-ROBUST CREDIBILITY MODEL FOR HEAVY-TAILED DATA
title_short ROBUST AND SEMI-ROBUST CREDIBILITY MODEL FOR HEAVY-TAILED DATA
title_full ROBUST AND SEMI-ROBUST CREDIBILITY MODEL FOR HEAVY-TAILED DATA
title_fullStr ROBUST AND SEMI-ROBUST CREDIBILITY MODEL FOR HEAVY-TAILED DATA
title_full_unstemmed ROBUST AND SEMI-ROBUST CREDIBILITY MODEL FOR HEAVY-TAILED DATA
title_sort robust and semi-robust credibility model for heavy-tailed data
url https://digilib.itb.ac.id/gdl/view/81486
_version_ 1822281925407014912