Implementasi Sistem Temu Balik Informasi Data Cryptocurrency Berbasis Atribut Menggunakan Vector Space Model (VSM)

Authors

  • Muhammad Ibnu Rayyan STMIK KAPUTAMA
  • Suci Pratiwi STMIK KAPUTAMA
  • Sofy Ertika Dewi STMIK KAPUTAMA

DOI:

https://doi.org/10.62951/bridge.v3i4.685

Keywords:

Attribute-Based Retrieval, Cosine Similarity, Cryptocurrency, Information Retrieval System, Vector Space Model

Abstract

This study aims to implement an information retrieval system for cryptocurrency data using an attribute-based approach integrated with the Vector Space Model (VSM). The primary objective is to develop a system capable of retrieving the most relevant digital asset information according to specific search attributes, including positive sentiment, price fluctuation, and prediction confidence level. The research adopts a descriptive qualitative method combined with an experimental approach to evaluate the retrieval performance of the cosine similarity algorithm on normalized numerical data. Data preprocessing and attribute weighting were conducted to ensure consistency and improve retrieval accuracy. The experiment demonstrates that the proposed system achieves a Precision@5 value of 1.0, which indicates that all top-five retrieved results are fully relevant to user queries. These findings validate the effectiveness of the attribute-based VSM in analyzing multidimensional cryptocurrency datasets. Overall, this research contributes to the advancement of information retrieval applications in the cryptocurrency domain, particularly for supporting data-driven decision-making and intelligent financial analysis.

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Published

2025-11-25

How to Cite

Muhammad Ibnu Rayyan, Suci Pratiwi, & Sofy Ertika Dewi. (2025). Implementasi Sistem Temu Balik Informasi Data Cryptocurrency Berbasis Atribut Menggunakan Vector Space Model (VSM). Bridge : Jurnal Publikasi Sistem Informasi Dan Telekomunikasi, 3(4), 37–47. https://doi.org/10.62951/bridge.v3i4.685

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