SISTEM PEREKOMENDASI DENGAN SINGULAR VALUE DECOMPOSITION DAN TEKNIK SIMILARITAS PEARSON CORRELATION

Authors

  • Rimbun Siringoringo Universitas Methodist Indonesia
  • Jamaluddin Universitas Methodist Indonesia
  • Gortap Lumbantoruan Universitas Methodist Indonesia

DOI:

https://doi.org/10.46880/mtk.v7i1.257

Keywords:

Singular Value Decomposition, Teknik Similaritas, Pearson Correlation

Abstract

The growth of e-commerce has resulted in massive product information and huge volumes of data. This results in data overload problems. In the case of e-commerce, consumers or users spend a lot of time choosing the goods they need. The urgent question to be answered at this time is how to provide solutions related to intelligent information restrictions so that the existing information is truly information that is by preferences and needs. This research performs information filtering by applying the singular value decomposition method and the Pearson similarity technique to the book recommendation system. The data used is the Book-Crossing Dataset which is the reference dataset for many research recommendation systems. The resulting recommendations are then compared with e-commerce recommendations such as amazom.com. Based on the results of the study obtained data that the results of the recommendations in this study are very good and accurate.

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Published

10-03-2021

How to Cite

[1]
R. Siringoringo, Jamaluddin, and G. Lumbantoruan, “SISTEM PEREKOMENDASI DENGAN SINGULAR VALUE DECOMPOSITION DAN TEKNIK SIMILARITAS PEARSON CORRELATION”, METHODIKA, vol. 7, no. 1, pp. 19–24, Mar. 2021.

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Section

Articles