TOTAL ESTIMATION OF CLAIM RESERVES USING DEEP NEURAL NETWORK
Claim reserve estimation plays an essential role for insurance companies. Better estimation can affect the profitability of insurance companies, and worse estimates can cause serious consequences. Claims reserves are divided into two: Incurred But Not Reported (IBNR) and Reported But Not Settled...
Saved in:
Main Author: | |
---|---|
Format: | Theses |
Language: | Indonesia |
Online Access: | https://digilib.itb.ac.id/gdl/view/68346 |
Tags: |
Add Tag
No Tags, Be the first to tag this record!
|
Institution: | Institut Teknologi Bandung |
Language: | Indonesia |
id |
id-itb.:68346 |
---|---|
spelling |
id-itb.:683462022-09-14T08:48:56ZTOTAL ESTIMATION OF CLAIM RESERVES USING DEEP NEURAL NETWORK Samsir, Rusni Indonesia Theses claim reserving, data run-off triangle, chain ladder, double chain ladder, bornhuetter-ferguson double chain ladder, micro model, individual claim, deep neural network. INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/68346 Claim reserve estimation plays an essential role for insurance companies. Better estimation can affect the profitability of insurance companies, and worse estimates can cause serious consequences. Claims reserves are divided into two: Incurred But Not Reported (IBNR) and Reported But Not Settled (RBNS). Generally, claim reserve estimations are based on run-off triangle data. The run-off triangle data contains an overview of the overall claims and summarizes a data set of individual claims. Chain Ladder, Double Chain Ladder, and Bornhuetter-Ferguson Double Chain Ladder methods are several estimation methods that are pretty well known in estimating claim reserves using aggregate data. Much individual information is lost during the formation of the aggregated data included in calculating claim reserves. Therefore, this study aims to predict the total claims reserve by using the Deep Neural Network approach on individual claim data and determine what components can be controlled in order to obtain an estimated claim reserve with a lower risk. In conclusion, the estimation of the total claims reserve using Deep Neural Network has a lower risk than that of the total claims reserve using the aggregate method. In addition, the influential component in total claims reserve estimation is the recording of claims reporting. Hence it is expected that error in the recording of claims reporting is not more than 10% so that the estimation results of the total claims reserves have a smaller risk. 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 |
Claim reserve estimation plays an essential role for insurance companies. Better
estimation can affect the profitability of insurance companies, and worse estimates
can cause serious consequences. Claims reserves are divided into two: Incurred
But Not Reported (IBNR) and Reported But Not Settled (RBNS). Generally, claim
reserve estimations are based on run-off triangle data. The run-off triangle data
contains an overview of the overall claims and summarizes a data set of individual
claims. Chain Ladder, Double Chain Ladder, and Bornhuetter-Ferguson Double
Chain Ladder methods are several estimation methods that are pretty well known
in estimating claim reserves using aggregate data. Much individual information
is lost during the formation of the aggregated data included in calculating claim
reserves. Therefore, this study aims to predict the total claims reserve by using
the Deep Neural Network approach on individual claim data and determine what
components can be controlled in order to obtain an estimated claim reserve with
a lower risk. In conclusion, the estimation of the total claims reserve using Deep
Neural Network has a lower risk than that of the total claims reserve using the
aggregate method. In addition, the influential component in total claims reserve
estimation is the recording of claims reporting. Hence it is expected that error in
the recording of claims reporting is not more than 10% so that the estimation results
of the total claims reserves have a smaller risk. |
format |
Theses |
author |
Samsir, Rusni |
spellingShingle |
Samsir, Rusni TOTAL ESTIMATION OF CLAIM RESERVES USING DEEP NEURAL NETWORK |
author_facet |
Samsir, Rusni |
author_sort |
Samsir, Rusni |
title |
TOTAL ESTIMATION OF CLAIM RESERVES USING DEEP NEURAL NETWORK |
title_short |
TOTAL ESTIMATION OF CLAIM RESERVES USING DEEP NEURAL NETWORK |
title_full |
TOTAL ESTIMATION OF CLAIM RESERVES USING DEEP NEURAL NETWORK |
title_fullStr |
TOTAL ESTIMATION OF CLAIM RESERVES USING DEEP NEURAL NETWORK |
title_full_unstemmed |
TOTAL ESTIMATION OF CLAIM RESERVES USING DEEP NEURAL NETWORK |
title_sort |
total estimation of claim reserves using deep neural network |
url |
https://digilib.itb.ac.id/gdl/view/68346 |
_version_ |
1822278182854721536 |