PASCIDEV: Pasundan Social Science Development
Vol. 6 No. 1 (2025): Pasundan Social Science Development (PASCIDEV)

Implementation of Association Rule Mining Using the FP-Growth Algorithm on Non-Procedural Indonesian Migrant Worker (PMI) Data in South Sulawesi

Syahirah, Dayini (Unknown)



Article Info

Publish Date
15 Nov 2025

Abstract

This study examines patterns in non-procedural Indonesian Migrant Workers (PMI) data in South Sulawesi and utilizes them to strengthen data-driven prevention. The method used is association rule mining using the FP-Growth algorithm within the CRISP-DM framework implemented through Altair AI Studio software. Modeling is run based on a minimum support value of 30% with a minimum confidence of 80%) for the Makassar, Pare-Pare, and Palopo Immigration Office datasets. Patterns are retained if the lift value is > 1 and selecting the top 10 patterns for each dataset. The results show consistent frequent itemsets and association rules indicating a general pattern of non-procedural PMI dominated by adult males with destinations in Malaysia with illegal/undocumented issues. The findings can be used as a preventive measure in strengthening interviews and document verification in the passport issuance process and the Immigration fostered village program. The study confirms that the application of FP-Growth with support, confidence, and lift evaluations provides evidence-based insights relevant to a more targeted and effective non-procedural PMI prevention policy by the Immigration Office

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Journal Info

Abbrev

pascidev

Publisher

Subject

Social Sciences

Description

The Pasundan Social Science Development (PASCIDEV) aims to publish articles that show high levels of theoretical insight or empirical analytic work and gives preference to articles that demonstrate engagement on the key issues that face society issues. The Pasundan Social Science Development ...