Studi Literatur Information Retrieval System Semantik Untuk Pencarian Produk E-Commerce

Authors

  • Maulana Farras Institut Teknologi dan Bisnis Indonesia
  • Silvia Hanum Institut Teknologi dan Bisnis Indonesia
  • Roberto Kaban Institut Teknologi dan Bisnis Indonesia

DOI:

https://doi.org/10.58918/lofian.v5i2.291

Keywords:

Semantic Information Retrieval System, Description-Based Product Search, Dense Retrieval, Late Interaction, Multimodal Product Search

Abstract

This research aims to analyze the development of the Semantic Information Retrieval System (Semantic IRS) approach in e-commerce product search based on descriptions through a literature study of 15 scientific articles consisting of national and international publications. The results of the analysis show that 33% of articles use the semantic IR and dense retrieval approaches as the basis for semantic mapping between queries and product documents. The late interaction and multimodal semantic retrieval approaches were each applied in 27% of articles, indicating an increasing research focus on token-level semantic interaction modeling and the integration of textual and visual information. Additionally, 13% of articles utilized query expansion and semantic relation modeling as supporting methods to improve search relevance. In terms of methodology, 80% of article used a quantitative experimental approach with information retrieval system metric-based evaluation, and 67% of articles adopted neural models. Overall, these quantitative findings indicate that neural model-based Semantic IR, late interaction, and multimodal approaches are the dominant and most relevant directions for handling long and unstructured description-based product searches in modern e-commerce systems.

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References

O. Rudiansyah, Ariansyah, R., Nanda, R., Wiranda, “Search Engine Menggunakan Metode Information Retrival,” Jurnal Santi - Sistem Informasi Dan Teknik Informasi, Vol. 2, No. 1, Pp. 49–55, 2022, Doi: 10.58794/Santi.V2i1.68.

I. M. A. W. Jayarana, I. G. N. A., Darma, I. G. W., Juliantara, I. W. A., & Putra, “Study Literatur Information Retrieval Model: Teknik Dan Aplikasi,” Jurnal Sutasoma, Vol. 3, No. 1, Pp. 61–69, 2025, Doi: 10.58878/Sutasoma.V3i2.392.

W. G. Adam, S. I., & Mokodaser, “Implementasi Sistem Rekomendasi Produk E-Commerce Menggunakan Content-Based Filtering Berbasis Cosine Similarity,” Jurnal Sistem Informasi Dan Teknik Komputer, Vol. 10, No. 2, Pp. 427–434, 2025, Doi: 10.33795/Jip.V11i4.7398.

A. Syaifuddin, “Sistem Rekomendasi Produk Berbahasa Indonesia Pada Marketplace Tokopedia Menggunakan Metode Content Base Filtering,” Jurnal Ilmiah Teknologi Informasi Dan Sains, Vol. 3, No. 1, Pp. 70–74, 2023.

M. A. Herdiansyah, B. W., & Setiawan, “Implementasi Rag Multimodal Untuk Rekomendasi Teks Dan Gambar Di E-Commerce,” Jurnal Pendidikan, Sains Dan Teknologi, Vol. 12, No. 3, Pp. 1767–1788, 2025.

A. Z. Mafazi, L., Akhsani, Z., Fadillah, F., Iskandar, D. M., Akbar, Y., & Hidayat, “Pengembangan Fitur Pencarian Dan Filter Produk Pada Aplikasi E-Commerce Gallery Muslim Berbasis Android,” Jurnal Indonesia : Manajemen Informatika Dan Komunikasi, Vol. 6, No. 3, Pp. 1789–1795, 2025, Doi: 10.63447/Jimik.V6i3.1587.

A. Rachmaniar, S. Widayati, And K. Rokoyah, “Sistem Rekomendasi Produk E-Commerce Menggunakan Collaborative Filtering Dan Content-Based Filtering (E-Commerce Product Recommendation System Using Collaborative Filtering And Content-Based Filtering),” Journal Of Information System, Informatics And Computing Issue Period, Vol. 9, No. 1, Pp. 40–54, 2025, Doi: 10.52362/Jisicom.V9i1.1904.

L. C. Amalia, A. A., Setyawati, N., & Munggaran, “Sistematik Literatur Sistem Temu Kembali Informasi Dengan Vector Space Model Dan Depth First Search,” Jurnal Ilmiah Komputasi, Vol. 20, No. 4, Pp. 541–548, 2021, Doi: Https://Doi.Org/10.32409/Jiksti.20.4.2793.

T. Ramadhani, S. Nabilah, A. Abimayu, And T. Loi, “Pengembangan Sistem Rekomendasi Produk E-Commerce Menggunakan Algoritma Collaborative Filtering,” Riggs: Journal Of Artificial Intelligence And Digital Business, Vol. 4, No. 2, Pp. 4848–4854, 2025, Doi: 10.31004/Riggs.V4i2.1349.

P. Sapanji, R. A. E. V. T., Hamdani, D., & Harahap, “Sentiment Analysis Of The Top 5 E-Commerce Platforms In Indonesia Using Text Mining And Natural Language Processing (Nlp),” Journal Of Applied Informatics And Computing, Vol. 7, No. 2, Pp. 202–211, 2023, Doi: 10.30871/Jaic.V7i2.6517.

F. Kalimantan, M. A. N., & Agustin, “Implentasi Information Retrieval System Menggunakan Metode Latent Semantic,” Jurnal Info Digit, Vol. 1, No. 2, Pp. 744–755, 2023, [Online]. Available: Http://Kti.Potensi-Utama.Ac.Id/Index.Php/Jid

G. He, Y. Lan, J. Jiang, W. X. Zhao, And J. R. Wen, “Improving Multi-Hop Knowledge Base Question Answering By Learning Intermediate Supervision Signals,” Wsdm 2021 - Proceedings Of The 14th Acm International Conference On Web Search And Data Mining, No. March 2021, Pp. 553–561, 2021, Doi: 10.1145/3437963.3441753.

L. Fan Et Al., Modeling User Behavior With Graph Convolution For Personalized Product Search, Vol. 1, No. 1. Association For Computing Machinery, 2022. Doi: 10.1145/3485447.3511949.

G. Xv Et Al., “E-Commerce Search Via Content Collaborative Graph Neural Network,” Proceedings Of The Acm Sigkdd International Conference On Knowledge Discovery And Data Mining, Pp. 2885–2897, 2023, Doi: 10.1145/3580305.3599320.

Z. Zhou Et Al., Semantic-Enhanced Modality-Asymmetric Retrieval For Online E-Commerce Search, Vol. 1, No. 1. Arxiv, 2023. Doi: 10.1145/3539618.3591863.

L. Massai, “Evaluation Of Semantic Relations Impact In Query Expansion-Based Retrieval Systems,” Knowl. Based. Syst., Vol. 283, No. June 2023, P. 111183, 2024, Doi: 10.1016/J.Knosys.2023.111183.

D. Liu And E. Lopez Ramos, Multimodal Semantic Retrieval For Product Search, Vol. 1, No. 1. Association For Computing Machinery, 2025. Doi: 10.1145/3701716.3717567.

Z. Hu, S. Li, M. Du, A. Dhua, And D. Gray, “Multimodal Learning With Online Text Cleaning For E-Commerce Product Search 2 Amazon Visual Shopping 3 Amazon Visual Shopping 4 Amazon Visual Shopping 5 Amazon Visual Shopping,” 2024.

D. R. Don, Y. Xie, L. Yu, S. Hughes, And Y. Zhu, “Cluster Language Model For Improved E-Commerce Retrieval And Ranking: Leveraging Query Similarity And Fine-Tuning For Personalized Results,” 7th Workshop On E-Commerce And Nlp, Ecnlp 2024 At Lrec-Coling 2024 - Workshop Proceedings, No. Ecnlp 7, Pp. 145–153, 2024.

Z. Liu, W. Zhang, Y. Chen, W. Sun, M. Du, And B. Schroeder, “Towards Generalizable Semantic Product Search By Text Similarity Pre-Training On Search Click Logs,” Ecnlp 2022 - 5th Workshop On E-Commerce And Nlp, Proceedings Of The Workshop, No. Ecnlp 5, Pp. 224–233, 2022, Doi: 10.18653/V1/2022.Ecnlp-1.26.

A. S. Gill, S. Patel, P. Varga, P. Miller, And S. Athanasiadis, “From Keywords To Concepts: A Late Interaction Approach To Semantic Product Search On Ikea.Com,” Sigir 2025 - Proceedings Of The 48th International Acm Sigir Conference On Research And Development In Information Retrieval, No. July 2025, Pp. 4280–4283, 2025, Doi: 10.1145/3726302.3731948.

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Published

2026-02-23

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Articles

How to Cite

Studi Literatur Information Retrieval System Semantik Untuk Pencarian Produk E-Commerce. (2026). LOFIAN: Jurnal Teknologi Informasi Dan Komunikasi, 5(2), 14-28. https://doi.org/10.58918/lofian.v5i2.291

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