MOBILITY ANALYSIS AND PREDICTION OF CUSTOMER DISTRIBUTION FOR BPJS KESEHATAN USING THE MARKOV CHAIN METHOD

BPJS Kesehatan is the provider of social health insurance in Indonesia. With a different system from general insurance companies, BPJS Kesehatan covered 95.75% of the Indonesian population in 2023. Despite this, BPJS Kesehatan is still obliged to maintain its company’s financial stability, one way b...

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Main Author: Pratisena, Andhika
Format: Final Project
Language:Indonesia
Online Access:https://digilib.itb.ac.id/gdl/view/84741
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Institution: Institut Teknologi Bandung
Language: Indonesia
id id-itb.:84741
spelling id-itb.:847412024-08-16T15:41:59ZMOBILITY ANALYSIS AND PREDICTION OF CUSTOMER DISTRIBUTION FOR BPJS KESEHATAN USING THE MARKOV CHAIN METHOD Pratisena, Andhika Indonesia Final Project BPJS Kesehatan, customers distribution, dynamic analysis, Markov Chain INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/84741 BPJS Kesehatan is the provider of social health insurance in Indonesia. With a different system from general insurance companies, BPJS Kesehatan covered 95.75% of the Indonesian population in 2023. Despite this, BPJS Kesehatan is still obliged to maintain its company’s financial stability, one way being through the control of revenue. The revenue received by BPJS Kesehatan is no longer relevant if predicted using time series because the addition of revenue is not significantly influenced by the increase in customers. Therefore, an analysis was conducted on BPJS Kesehatan participants based on customer segmentation that indirectly affects the amount of revenue. Using participant mutation data from 2017-2022, this study predicts participant distribution based on categories using the Markov chain method applied to an automation program in Python language. In line with the prediction calculations, a transition matrix was obtained which describes the probability of movement within customers’ categories. Through this matrix, dynamic analysis can be performed to generate useful information for the company's operational strategy. Prediction results show that the Markov chain method has the highest accuracy when using the most recent year's dataset as the prediction baseline. Predictions in this study show a good accuracy level with an RMSE of 0.941% for modeling participant distribution. 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 BPJS Kesehatan is the provider of social health insurance in Indonesia. With a different system from general insurance companies, BPJS Kesehatan covered 95.75% of the Indonesian population in 2023. Despite this, BPJS Kesehatan is still obliged to maintain its company’s financial stability, one way being through the control of revenue. The revenue received by BPJS Kesehatan is no longer relevant if predicted using time series because the addition of revenue is not significantly influenced by the increase in customers. Therefore, an analysis was conducted on BPJS Kesehatan participants based on customer segmentation that indirectly affects the amount of revenue. Using participant mutation data from 2017-2022, this study predicts participant distribution based on categories using the Markov chain method applied to an automation program in Python language. In line with the prediction calculations, a transition matrix was obtained which describes the probability of movement within customers’ categories. Through this matrix, dynamic analysis can be performed to generate useful information for the company's operational strategy. Prediction results show that the Markov chain method has the highest accuracy when using the most recent year's dataset as the prediction baseline. Predictions in this study show a good accuracy level with an RMSE of 0.941% for modeling participant distribution.
format Final Project
author Pratisena, Andhika
spellingShingle Pratisena, Andhika
MOBILITY ANALYSIS AND PREDICTION OF CUSTOMER DISTRIBUTION FOR BPJS KESEHATAN USING THE MARKOV CHAIN METHOD
author_facet Pratisena, Andhika
author_sort Pratisena, Andhika
title MOBILITY ANALYSIS AND PREDICTION OF CUSTOMER DISTRIBUTION FOR BPJS KESEHATAN USING THE MARKOV CHAIN METHOD
title_short MOBILITY ANALYSIS AND PREDICTION OF CUSTOMER DISTRIBUTION FOR BPJS KESEHATAN USING THE MARKOV CHAIN METHOD
title_full MOBILITY ANALYSIS AND PREDICTION OF CUSTOMER DISTRIBUTION FOR BPJS KESEHATAN USING THE MARKOV CHAIN METHOD
title_fullStr MOBILITY ANALYSIS AND PREDICTION OF CUSTOMER DISTRIBUTION FOR BPJS KESEHATAN USING THE MARKOV CHAIN METHOD
title_full_unstemmed MOBILITY ANALYSIS AND PREDICTION OF CUSTOMER DISTRIBUTION FOR BPJS KESEHATAN USING THE MARKOV CHAIN METHOD
title_sort mobility analysis and prediction of customer distribution for bpjs kesehatan using the markov chain method
url https://digilib.itb.ac.id/gdl/view/84741
_version_ 1822998753403994112