2021
DOI: 10.24203/ijcit.v10i2.75
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Developing Hybrid-Based Recommender System with Naïve Bayes Optimization to Increase Prediction Efficiency

Abstract: Commerce and entertainment world today have shifted to the digital platforms where customer preferences are suggested by recommender systems. Recommendations have been made using a variety of methods such as content-based, collaborative filtering-based or their hybrids. Collaborative systems are common recommenders, which use similar users’ preferences. They however have issues such as data sparsity, cold start problem and lack of scalability. When a small percentage of users express their preferences, data be… Show more

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“…Despite these advances, significant research gaps persist in effectively integrating heterogeneous information sources, selecting appropriate architectures, and designing tailored training objectives for recommendation scenarios [7]. Additionally, the high computational complexity and data-hungry nature of deep learning models can impede their large-scale industrial adoption [8].…”
Section: Introductionmentioning
confidence: 99%
“…Despite these advances, significant research gaps persist in effectively integrating heterogeneous information sources, selecting appropriate architectures, and designing tailored training objectives for recommendation scenarios [7]. Additionally, the high computational complexity and data-hungry nature of deep learning models can impede their large-scale industrial adoption [8].…”
Section: Introductionmentioning
confidence: 99%