FINGERPRINT REGISTRATION FRAUD DETECTION USING TIGHT CLUSTERING ON EMPLOYEE’S PRESENCE AND ACTIVITY DATA

Detecting fraud in fingerprint registration poses a unique challenge as we cannot rely on an existing employee’s attribute. Furthermore, analyzing using a supervised algorithm cannot handle unlabeled data that generated uniquely for this case. We study the patterns of employee’s presence and acti...

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Main Author: Kamil, Irfan
Format: Theses
Language:Indonesia
Online Access:https://digilib.itb.ac.id/gdl/view/70698
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Institution: Institut Teknologi Bandung
Language: Indonesia
id id-itb.:70698
spelling id-itb.:706982023-01-19T10:07:31ZFINGERPRINT REGISTRATION FRAUD DETECTION USING TIGHT CLUSTERING ON EMPLOYEE’S PRESENCE AND ACTIVITY DATA Kamil, Irfan Indonesia Theses DBSCAN algorithm, tight clustering, fingerprint registration fraud detection. INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/70698 Detecting fraud in fingerprint registration poses a unique challenge as we cannot rely on an existing employee’s attribute. Furthermore, analyzing using a supervised algorithm cannot handle unlabeled data that generated uniquely for this case. We study the patterns of employee’s presence and activity report data and found that fraud action tends to be closely similar to other fraud action. Therefore, we propose a tight clustering method to detect fraud in fingerprint data using Density-based spatial clustering of applications with noise algorithm (DBSCAN), as tight distance calculation removes non-fraud data because non-fraud data is generated to be unique naturally. This research proposes three methods to detect high likelihood between historical presence data and employee activity. These similarities tend to indicate fraud for employee presence and activity report because naturally those data should be generated dynamically. P2 methods with 3 days minimum distance shows highest F-Measure for 100%. But coverage for that method only 55%. To increase coverage to 100%, P2 methods with 5 days minimum distance or 7 days minimum distance may be used. For next research, activity research may be checked substantially as an indicator for presence fraud. Thus, those fraud indications also need to be investigated whether it is a fraud or just a coincidence. This investigation is required to measure accuracy for outlier detection method. 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 Detecting fraud in fingerprint registration poses a unique challenge as we cannot rely on an existing employee’s attribute. Furthermore, analyzing using a supervised algorithm cannot handle unlabeled data that generated uniquely for this case. We study the patterns of employee’s presence and activity report data and found that fraud action tends to be closely similar to other fraud action. Therefore, we propose a tight clustering method to detect fraud in fingerprint data using Density-based spatial clustering of applications with noise algorithm (DBSCAN), as tight distance calculation removes non-fraud data because non-fraud data is generated to be unique naturally. This research proposes three methods to detect high likelihood between historical presence data and employee activity. These similarities tend to indicate fraud for employee presence and activity report because naturally those data should be generated dynamically. P2 methods with 3 days minimum distance shows highest F-Measure for 100%. But coverage for that method only 55%. To increase coverage to 100%, P2 methods with 5 days minimum distance or 7 days minimum distance may be used. For next research, activity research may be checked substantially as an indicator for presence fraud. Thus, those fraud indications also need to be investigated whether it is a fraud or just a coincidence. This investigation is required to measure accuracy for outlier detection method.
format Theses
author Kamil, Irfan
spellingShingle Kamil, Irfan
FINGERPRINT REGISTRATION FRAUD DETECTION USING TIGHT CLUSTERING ON EMPLOYEE’S PRESENCE AND ACTIVITY DATA
author_facet Kamil, Irfan
author_sort Kamil, Irfan
title FINGERPRINT REGISTRATION FRAUD DETECTION USING TIGHT CLUSTERING ON EMPLOYEE’S PRESENCE AND ACTIVITY DATA
title_short FINGERPRINT REGISTRATION FRAUD DETECTION USING TIGHT CLUSTERING ON EMPLOYEE’S PRESENCE AND ACTIVITY DATA
title_full FINGERPRINT REGISTRATION FRAUD DETECTION USING TIGHT CLUSTERING ON EMPLOYEE’S PRESENCE AND ACTIVITY DATA
title_fullStr FINGERPRINT REGISTRATION FRAUD DETECTION USING TIGHT CLUSTERING ON EMPLOYEE’S PRESENCE AND ACTIVITY DATA
title_full_unstemmed FINGERPRINT REGISTRATION FRAUD DETECTION USING TIGHT CLUSTERING ON EMPLOYEE’S PRESENCE AND ACTIVITY DATA
title_sort fingerprint registration fraud detection using tight clustering on employee’s presence and activity data
url https://digilib.itb.ac.id/gdl/view/70698
_version_ 1822991693049233408