Optimizing Marketing Strategies Using FP-Growth and Association Rule Mining Algorithms in the Textile Industry
DOI:
https://doi.org/10.58344/jws.v3i5.599Keywords:
Association Rule Mining, FP-Growth Algorithm, Textile Industry Marketing, Customer Purchasing Behavior, Inventory Management StrategiesAbstract
This study leverages association rule mining to analyze transaction data from PT. Labda Anugerah Tekstil, a prominent player in the textile industry, to uncover significant purchasing patterns and associations between different fabric types. Utilizing data from January 1, 2022, to December 31, 2023, which includes 7,143 transaction entries, the research applies the FP-Growth algorithm followed by Association Rule Mining to identify and evaluate frequent itemsets and strong association rules within the dataset. The analysis revealed robust associations among fabrics such as Cotton, Linen, Rayon, and Viscose, suggesting substantial opportunities for targeted marketing strategies and inventory management enhancements. The findings indicate that strategically bundling and promoting associated fabrics can drive higher sales volumes and improve customer purchasing experiences. The insights from this study provide actionable strategies for optimizing marketing efforts and inventory management, aiming to enhance sales performance and customer satisfaction in the competitive textile market.
References
Abbate, S., Centobelli, P., Cerchione, R., Nadeem, S. P., & Riccio, E. (2024). Sustainability trends and gaps in the textile, apparel and fashion industries. Environment, Development and Sustainability, 26(2), 2837–2864.
Ahmed, S. A., & Nath, B. (2019). Modified fp-growth: an efficient frequent pattern mining approach from fp-tree. Pattern Recognition and Machine Intelligence: 8th International Conference, PReMI 2019, Tezpur, India, December 17-20, 2019, Proceedings, Part I, 47–55.
Arcos, J. R. D., & Hernandez, A. A. (2019). Analyzing online transaction data using association rule mining: Misumi philippines market basket analysis. Proceedings of the 2019 7th International Conference on Information Technology: IoT and Smart City, 45–49.
Gu, J., Wang, B., Zhang, F., Wang, W., & Gao, M. (2011). An Improved Apriori Algorithm BT - Applied Informatics and Communication (D. Zeng (ed.); pp. 127–133). Springer Berlin Heidelberg.
Jiang, H., & Meng, H. (2017). A parallel FP-growth algorithm based on GPU. 2017 IEEE 14th International Conference on E-Business Engineering (ICEBE), 97–102.
Majumdar, A., Garg, H., & Jain, R. (2021). Managing the barriers of Industry 4.0 adoption and implementation in textile and clothing industry: Interpretive structural model and triple helix framework. Computers in Industry, 125, 103372.
Nugroho, A., & Fadhilah, M. (2023). Customer-Centric Strategy Dalam Menghadapi Persaingan Perusahaan Jasa Konstruksi. Jurnal Teknologi Dan Manajemen Industri Terapan, 2(4), 316–325.
Pan, Z., Liu, P., & Yi, J. (2018). An improved FP-tree algorithm for mining maximal frequent patterns. 2018 10th International Conference on Measuring Technology and Mechatronics Automation (ICMTMA), 309–312.
Ramkumar, A., Kulkarni, P., Obaid, A. J., Abdulbaqi, A. S., & Yakin, A. Al. (2023). Big data analytics and its application in E-commerce. AIP Conference Proceedings, 2736(1).
Safitri, N. (2022). Penggunaan Algoritma Apriori Dalam Penerapan Data Mining Untuk Analisis Pola Pembelian Pelanggan (Studi Kasus: Toko Diengva Bandar Jaya). Jurnal Portal Data, 2(1).
Shah, S. M., Lütjen, M., & Freitag, M. (2021). Text mining for supply chain risk management in the apparel industry. Applied Sciences, 11(5), 2323.
Shaukat, K., Zaheer, S., & Nawaz, I. (2015). Association rule mining: An application perspective. International Journal of Computer Science and Innovation, 2015(1), 29–38.
Soepriyono, G., & Triayudi, A. (2023). Implementasi Data Mining dengan Algoritma Apriori dalam Menentukan Pola Pembelian Aksesoris Laptop. JURNAL MEDIA INFORMATIKA BUDIDARMA, 7(4), 2087–2096.
Tsai, H. T., Ho, T. H., & Wang, C.-N. (2020). Productivity evaluation of Asia textile industry. 2020 IEEE International Conference on Industrial Engineering and Engineering Management (IEEM), 620–624.
Yin, M., Wang, W., Liu, Y., & Jiang, D. (2018). An improvement of FP-Growth association rule mining algorithm based on adjacency table. MATEC Web of Conferences, 189, 10012.
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