The Point Of Interest (POI) Recommendation for Mobile Digital Culture Heritage (M-DCH) Based on the Behavior Analysis using the Recurrent Neural Networks (RNN) and User-Collaborative Filtering,ERICDATA高等教育知識庫
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熱門: 崔雪娟  王美玲  李明昆  王善边  黃昱倫  黃乃熒  
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篇名
The Point Of Interest (POI) Recommendation for Mobile Digital Culture Heritage (M-DCH) Based on the Behavior Analysis using the Recurrent Neural Networks (RNN) and User-Collaborative Filtering
並列篇名
The Point Of Interest (POI) Recommendation for Mobile Digital Culture Heritage (M-DCH) Based on the Behavior Analysis using the Recurrent Neural Networks (RNN) and User-Collaborative Filtering
作者 Chung-Ming HuangChen-Yi Wu
英文摘要
Many Point Of Interest (POI) recommendation systems need to collect past users’ scoring to generate the recommendation for current users. It always results in the not so precise recommendation because not a lot of users are willing to do the scoring. With the advanced deep learning technique, this work proposes the POIs’ recommendation method that doesn’t require a scoring mechanism to have the great precision, recall and diversity. The proposed POIs’ recommendation method utilizes the deep learning model to analyze user’s operational behaviors and then judge the user’s preference. As a result, the proposed POI’s recommendation method (i) can be built in an environment without a scoring mechanism because it can catch the user’s preferences by analyzing his operational behaviors and (ii) considers similar users’ historical data to make the recommended results more diversity. The performance evaluation shown that the precision, recall, f1-score and the next POI predicted rate of the proposed method is better than that of the Multi-Layer Perceptrons (MLPs) and the Long Short-Term Memory (LSTM) models. The diversities of the proposed method’s results are better than that of the LSTM model. Therefore, the proposed method balances the precision, recall and diversities.
起訖頁 821-833
關鍵詞 Deep learningRecommendation systemCollaborative filteringRecurrent Neural Networks (RNN)Point Of Interest (POI)
刊名 網際網路技術學刊  
期數 202107 (22:4期)
出版單位 台灣學術網路管理委員會
DOI 10.53106/160792642021072204010   複製DOI
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