Data Mining Analysis Of Commodity Distribution In Central Aceh Through An Integrated Auction Market System Using The Android-Based Association Rule Mining (ARM) Method

Authors

  • Dita Amelia Universitas Malikussaleh
  • Dahlan Abdullah
  • Zahratul Fitri

Keywords:

Data Mining, Association Rule Mining (ARM), Commodity Distribusion, Android-Based Auction Market System, Apriori Algorithm

Abstract

Commodity distribution in Central Aceh faces inefficiencies due to lengthy distribution chains and limited price control, which often leads to higher costs for consumers and lower profits for farmers. To address these issues, this study develops an integrated auction market system based on Android, utilizing the Association Rule Mining (ARM) method to optimize the distribution and pricing of commodities. ARM is a data mining technique that uncovers high-frequency patterns in transaction data. By applying ARM with the apriori algorithm, the system identifies key associations among commodities, allowing for more efficient and targeted price recommendations. The system calculates the highest bid for each commodity and recommends optimal pricing strategies to sellers based on frequent pattern analysis, improving transparency and reducing distribution inefficiencies. Testing and implementation of this system indicate that it successfully reduces distribution costs while increasing the effectiveness and speed of the auction process. Overall, the Android-based auction market system shows promise as a tool for enhancing distribution efficiency, optimizing bid values, and supporting local economies in Central Aceh through more equitable commodity pricing.

 

Keywords: Data Mining, Association Rule Mining (ARM), Commodity Distribution, Android-Based Auction Market System, Apriori Algorithm.

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Published

2025-01-07

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