MODEL ACA(p,q) AND VALUE-AT-RISK PREDICTION

Claim severity is a sum of money that must be paid by insurance companies to policyholder for the occurrence of disasters that cause loss to policyholder. That claim severity is potentially cause losses to the insurance company. Therefore, the claim severity must be modeled into a good forecasting m...

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Main Author: ALVINA MENTANG (NIM: 20816302), CERI
Format: Theses
Language:Indonesia
Online Access:https://digilib.itb.ac.id/gdl/view/26221
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Institution: Institut Teknologi Bandung
Language: Indonesia
id id-itb.:26221
spelling id-itb.:262212018-06-22T15:24:28ZMODEL ACA(p,q) AND VALUE-AT-RISK PREDICTION ALVINA MENTANG (NIM: 20816302), CERI Indonesia Theses INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/26221 Claim severity is a sum of money that must be paid by insurance companies to policyholder for the occurrence of disasters that cause loss to policyholder. That claim severity is potentially cause losses to the insurance company. Therefore, the claim severity must be modeled into a good forecasting model. One model that is used is textit{Autoregressive Conditional Amount}(p,q) stochastic model. In addition to choosing the right model, the selection of parameter estimation method also needs to be considered. One parameter estimation methods for ACA model is Maximum Likelihood method. The method has a principle that the estimation parameter is a parameter which can maximise likelihood function. Furthermore, ACA model is used to measure the risk which is claim severity. <br /> <br /> The risk measure that have been exploited is Value-at-Risk (VaR). VaR is minimum claim severity reserve that must be provided by insurance companies to minimize the 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 severity is a sum of money that must be paid by insurance companies to policyholder for the occurrence of disasters that cause loss to policyholder. That claim severity is potentially cause losses to the insurance company. Therefore, the claim severity must be modeled into a good forecasting model. One model that is used is textit{Autoregressive Conditional Amount}(p,q) stochastic model. In addition to choosing the right model, the selection of parameter estimation method also needs to be considered. One parameter estimation methods for ACA model is Maximum Likelihood method. The method has a principle that the estimation parameter is a parameter which can maximise likelihood function. Furthermore, ACA model is used to measure the risk which is claim severity. <br /> <br /> The risk measure that have been exploited is Value-at-Risk (VaR). VaR is minimum claim severity reserve that must be provided by insurance companies to minimize the risk.
format Theses
author ALVINA MENTANG (NIM: 20816302), CERI
spellingShingle ALVINA MENTANG (NIM: 20816302), CERI
MODEL ACA(p,q) AND VALUE-AT-RISK PREDICTION
author_facet ALVINA MENTANG (NIM: 20816302), CERI
author_sort ALVINA MENTANG (NIM: 20816302), CERI
title MODEL ACA(p,q) AND VALUE-AT-RISK PREDICTION
title_short MODEL ACA(p,q) AND VALUE-AT-RISK PREDICTION
title_full MODEL ACA(p,q) AND VALUE-AT-RISK PREDICTION
title_fullStr MODEL ACA(p,q) AND VALUE-AT-RISK PREDICTION
title_full_unstemmed MODEL ACA(p,q) AND VALUE-AT-RISK PREDICTION
title_sort model aca(p,q) and value-at-risk prediction
url https://digilib.itb.ac.id/gdl/view/26221
_version_ 1821934005877997568