2021
DOI: 10.24203/ijcit.v10i1.71
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Using Feature Selection Methods to Discover Common Users’ Preferences for Online Recommender Systems

Abstract: Recommender systems have taken over user’s choice to choose the items/services they want from online markets, where lots of merchandise is traded. Collaborative filtering-based recommender systems uses user opinions and preferences. Determination of commonly used attributes that influence preferences used for prediction and subsequent recommendation of unknown or new items to users is a significant objective while developing recommender engines.  In conventional systems, study of user behavior to know their di… Show more

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“…The minimum error also appeared on test data with all user attributes (Figure 6d), showing a least performance of 0.2. As the advancement in development of eye movement algorithm continues user attributes that show the least likely appearance will prove redundant, based on the result of this paper and similar but different research outputs in some papers [26,27] , these attributes contributes the least to behaviour predictions.…”
Section: Performance On Dataset Modelsmentioning
confidence: 88%
“…The minimum error also appeared on test data with all user attributes (Figure 6d), showing a least performance of 0.2. As the advancement in development of eye movement algorithm continues user attributes that show the least likely appearance will prove redundant, based on the result of this paper and similar but different research outputs in some papers [26,27] , these attributes contributes the least to behaviour predictions.…”
Section: Performance On Dataset Modelsmentioning
confidence: 88%