期刊文献+
共找到2篇文章
< 1 >
每页显示 20 50 100
Recommender System Combining Popularity and Novelty Based on One-Mode Projection of Weighted Bipartite Network
1
作者 Yong Yu Yongjun Luo +4 位作者 Tong Li Shudong Li Xiaobo Wu Jinzhuo Liu Yu Jiang 《Computers, Materials & Continua》 SCIE EI 2020年第4期489-507,共19页
Personalized recommendation algorithms,which are effective means to solve information overload,are popular topics in current research.In this paper,a recommender system combining popularity and novelty(RSCPN)based on ... Personalized recommendation algorithms,which are effective means to solve information overload,are popular topics in current research.In this paper,a recommender system combining popularity and novelty(RSCPN)based on one-mode projection of weighted bipartite network is proposed.The edge between a user and item is weighted with the item’s rating,and we consider the difference in the ratings of different users for an item to obtain a reasonable method of measuring the similarity between users.RSCPN can be used in the same model for popularity and novelty recommendation by setting different parameter values and analyzing how a change in parameters affects the popularity and novelty of the recommender system.We verify and compare the accuracy,diversity and novelty of the proposed model with those of other models,and results show that RSCPN is feasible. 展开更多
关键词 Personalized recommendation one-mode projection weighted bipartite network novelty recommendation diversity
下载PDF
SLC-index: A scalable skip list-based index for cloud data processing 被引量:2
2
作者 HE Jing YAO Shao-wen +1 位作者 CAI Li ZHOU Wei 《Journal of Central South University》 SCIE EI CAS CSCD 2018年第10期2438-2450,共13页
Due to the increasing number of cloud applications,the amount of data in the cloud shows signs of growing faster than ever before.The nature of cloud computing requires cloud data processing systems that can handle hu... Due to the increasing number of cloud applications,the amount of data in the cloud shows signs of growing faster than ever before.The nature of cloud computing requires cloud data processing systems that can handle huge volumes of data and have high performance.However,most cloud storage systems currently adopt a hash-like approach to retrieving data that only supports simple keyword-based enquiries,but lacks various forms of information search.Therefore,a scalable and efficient indexing scheme is clearly required.In this paper,we present a skip list-based cloud index,called SLC-index,which is a novel,scalable skip list-based indexing for cloud data processing.The SLC-index offers a two-layered architecture for extending indexing scope and facilitating better throughput.Dynamic load-balancing for the SLC-index is achieved by online migration of index nodes between servers.Furthermore,it is a flexible system due to its dynamic addition and removal of servers.The SLC-index is efficient for both point and range queries.Experimental results show the efficiency of the SLC-index and its usefulness as an alternative approach for cloud-suitable data structures. 展开更多
关键词 cloud computing distributed index cloud data processing skip list
下载PDF
上一页 1 下一页 到第
使用帮助 返回顶部