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作 者:Weitao Ha Sheng Gang Yahya D.Navaei Abubakar S.Gezawa Yaser A.Nanehkaran
机构地区:[1]School of Computer Science and Technology,Weinan Normal University,Weinan,714099,China [2]School of Information&Engineering,Yancheng Teachers University,Yancheng,224002,China [3]Department of Computer and Technology Engineering,Qazvin Branch,Islamic Azad University,Qazvin,34199-15195,Iran [4]School of Information Engineering,Sanming University,Sanming,365004,China [5]Department ofManagement Information Systems,Faculty of Economics and Administrative Sciences,CankayaUniversity,Ankara,06790,Türkiye
出 处:《Computers, Materials & Continua》2025年第5期3025-3057,共33页计算机、材料和连续体(英文)
基 金:funded by the National Nature Sciences Foundation of China with Grant No.42250410321。
摘 要:Music recommendation systems are essential due to the vast amount of music available on streaming platforms,which can overwhelm users trying to find new tracks that match their preferences.These systems analyze users’emotional responses,listening habits,and personal preferences to provide personalized suggestions.A significant challenge they face is the“cold start”problem,where new users have no past interactions to guide recommendations.To improve user experience,these systems aimto effectively recommendmusic even to such users by considering their listening behavior and music popularity.This paper introduces a novel music recommendation system that combines order clustering and a convolutional neural network,utilizing user comments and rankings as input.Initially,the system organizes users into clusters based on semantic similarity,followed by the utilization of their rating similarities as input for the convolutional neural network.This network then predicts ratings for unreviewed music by users.Additionally,the system analyses user music listening behaviour and music popularity.Music popularity can help to address cold start users as well.Finally,the proposed method recommends unreviewed music based on predicted high rankings and popularity,taking into account each user’s music listening habits.The proposed method combines predicted high rankings and popularity by first selecting popular unreviewedmusic that themodel predicts to have the highest ratings for each user.Among these,the most popular tracks are prioritized,defined by metrics such as frequency of listening across users.The number of recommended tracks is aligned with each user’s typical listening rate.The experimental findings demonstrate that the new method outperformed other classification techniques and prior recommendation systems,yielding a mean absolute error(MAE)rate and rootmean square error(RMSE)rate of approximately 0.0017,a hit rate of 82.45%,an average normalized discounted cumulative gain(nDCG)of 82.3%,and a prediction accura
关 键 词:Music recommender system order clustering deep learning
分 类 号:TP391.3[自动化与计算机技术—计算机应用技术]
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