MACHINE LEARNING ANALYTICS TO IMPROVE VERIFICATION CAPACITY IN SOCIAL HEALTH INSURANCE

In 2018, the Social Security Administrator (SSA) in Indonesia faced a significant mismatch problem between premium collection and healthcare service purchasing, resulting in a negative difference of IDR 12 trillion in the second half of the year. This issue caused financial unrest among healthcare s...

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Main Author: Virlandra, Revien
Format: Theses
Language:Indonesia
Online Access:https://digilib.itb.ac.id/gdl/view/75985
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Institution: Institut Teknologi Bandung
Language: Indonesia
id id-itb.:75985
spelling id-itb.:759852023-08-09T10:17:31ZMACHINE LEARNING ANALYTICS TO IMPROVE VERIFICATION CAPACITY IN SOCIAL HEALTH INSURANCE Virlandra, Revien Indonesia Theses Fraud, Healthcare Billing Claim, Machine Learning INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/75985 In 2018, the Social Security Administrator (SSA) in Indonesia faced a significant mismatch problem between premium collection and healthcare service purchasing, resulting in a negative difference of IDR 12 trillion in the second half of the year. This issue caused financial unrest among healthcare service providers, leading to bill payment delays, and affecting health service delivery to Social Health Insurance (SHI) consumers in Indonesia. Although Social insurance actuaries expect premium mismatch, the potential for fraud in healthcare billing is a critical issue that needs immediate attention. Previous research indicates that fraudulent billing for health services is common across all healthcare financing schemes, including SHI. The SSA faces a significant challenge with limited resources to identify fraudulent health service bills and implement appropriate measures in its operations. In terms of addressing the limited resources challenge, this study uses Machine Learning to assist verifiers in identifying and predicting fraud in health service billing. The study uses the Nearest Neighbour and Random Forest algorithms and adjusted healthcare service billing data for 2020-2021, involving the professional judgment SSA verifiers. The findings of this study demonstrate that social health insurance administration institutions can use predictions based on the Nearest Neighbour and Random Forest algorithms to identify fraud. Testing the two algorithms in this study resulted in valid results reaching 86% (compared to the verifier assessment), which significantly contributes to identifying fraud in the social insurance industry. 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 In 2018, the Social Security Administrator (SSA) in Indonesia faced a significant mismatch problem between premium collection and healthcare service purchasing, resulting in a negative difference of IDR 12 trillion in the second half of the year. This issue caused financial unrest among healthcare service providers, leading to bill payment delays, and affecting health service delivery to Social Health Insurance (SHI) consumers in Indonesia. Although Social insurance actuaries expect premium mismatch, the potential for fraud in healthcare billing is a critical issue that needs immediate attention. Previous research indicates that fraudulent billing for health services is common across all healthcare financing schemes, including SHI. The SSA faces a significant challenge with limited resources to identify fraudulent health service bills and implement appropriate measures in its operations. In terms of addressing the limited resources challenge, this study uses Machine Learning to assist verifiers in identifying and predicting fraud in health service billing. The study uses the Nearest Neighbour and Random Forest algorithms and adjusted healthcare service billing data for 2020-2021, involving the professional judgment SSA verifiers. The findings of this study demonstrate that social health insurance administration institutions can use predictions based on the Nearest Neighbour and Random Forest algorithms to identify fraud. Testing the two algorithms in this study resulted in valid results reaching 86% (compared to the verifier assessment), which significantly contributes to identifying fraud in the social insurance industry.
format Theses
author Virlandra, Revien
spellingShingle Virlandra, Revien
MACHINE LEARNING ANALYTICS TO IMPROVE VERIFICATION CAPACITY IN SOCIAL HEALTH INSURANCE
author_facet Virlandra, Revien
author_sort Virlandra, Revien
title MACHINE LEARNING ANALYTICS TO IMPROVE VERIFICATION CAPACITY IN SOCIAL HEALTH INSURANCE
title_short MACHINE LEARNING ANALYTICS TO IMPROVE VERIFICATION CAPACITY IN SOCIAL HEALTH INSURANCE
title_full MACHINE LEARNING ANALYTICS TO IMPROVE VERIFICATION CAPACITY IN SOCIAL HEALTH INSURANCE
title_fullStr MACHINE LEARNING ANALYTICS TO IMPROVE VERIFICATION CAPACITY IN SOCIAL HEALTH INSURANCE
title_full_unstemmed MACHINE LEARNING ANALYTICS TO IMPROVE VERIFICATION CAPACITY IN SOCIAL HEALTH INSURANCE
title_sort machine learning analytics to improve verification capacity in social health insurance
url https://digilib.itb.ac.id/gdl/view/75985
_version_ 1822007847611793408