- Sinop Üniversitesi Fen Bilimleri Dergisi
- Cilt: 10 Sayı: 2
- Book Rating Analysis Based on Feature Selection and Apriori Algorithm
Book Rating Analysis Based on Feature Selection and Apriori Algorithm
Authors : Merve Köle, Emin Borandag
Pages : 474-496
Doi:10.33484/sinopfbd.1688898
View : 62 | Download : 153
Publication Date : 2025-12-24
Article Type : Research Paper
Abstract :Digital systems record data on the books we read, items we purchase, or the products we enjoy, all within their own framework for the purpose of data mining. The information to be derived from these data through data mining methods is of great importance for these systems. Data mining aims to speed up the decision-making process by uncovering hidden relationships and information in data via mathematical and statistical techniques. In this context, data mining techniques were applied to the dataset containing book votes through the use of the Apriori algorithm in this study. In this way, the relationships within the data set were identified, rules were generated, and the connections between the generated rules and user preferences were disclosed. With the application of the Apriori algorithm, rules were generated that show books associated with other books, as well as authors often liked together with other authors. The study developed rules indicating which other books a reader might enjoy based on their interest in a particular book, as well as which authors might appeal to readers who like a given author. The rules produced in the study are intended to be used in book recommendation lists and sales strategies.Keywords : özellik seçimi, veri madenciliği, ilişkilendirme kuralları, apriori algoritması, kitap önerileri, makine öğrenmesi
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