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A multi-preference integrated algorithm(MPIA)for the deep learning-based recommender framework(DLRF)
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作者 Vikram Maditham N.Sudhakar Reddy madhavi kasa 《International Journal of Intelligent Computing and Cybernetics》 EI 2022年第4期625-641,共17页
Purpose-The deep learning-based recommender framework(DLRF)is based on an improved long short-term memory(LSTM)structurewith additional controllers;thus,it considers contextual information for state transition.It also... Purpose-The deep learning-based recommender framework(DLRF)is based on an improved long short-term memory(LSTM)structurewith additional controllers;thus,it considers contextual information for state transition.It also handles irregularities in the data to enhance performance in generating recommendations while modelling short-term preferences.An algorithm named a multi-preference integrated algorithm(MPIA)is proposed to have dynamic integration of both kinds of user preferences aforementioned.Extensive experiments are made using Amazon benchmark datasets,and the results are compared with many existing recommender systems(RSs).Design/methodology/approach-RSs produce quality information filtering to the users based on their preferences.In the contemporary era,online RSs-based collaborative filtering(CF)techniques are widely used to model long-term preferences of users.With deep learning models,such as recurrent neural networks(RNNs),it became viable to model short-term preferences of users.In the existing RSs,there is a lack of dynamic integration of both long-and short-term preferences.In this paper,the authors proposed a DLRF for improving the state of the art in modelling short-term preferences and generating recommendations as well.Findings-The results of the empirical study revealed that the MPIA outperforms existing algorithms in terms of performance measured using metrics such as area under the curve(AUC)and F1-score.The percentage of improvement in terms AUC is observed as 1.3,2.8,3 and 1.9%and in terms of F-1 score 0.98,2.91,2 and 2.01%on the datasets.Originality/value-The algorithm uses attention-based approaches to integrate the preferences by incorporating contextual information. 展开更多
关键词 Collaborative filtering Deep learning User preference integration Recommender systems
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