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Review Expert Collaborative Recommendation Algorithm Based on Topic Relationship
被引量:
4
1
作者
Shengxiang Gao
Zhengtao Yu
+2 位作者
linbin shi
Xin Yan
Haixia Song
《IEEE/CAA Journal of Automatica Sinica》
SCIE
EI
2015年第4期403-411,共9页
The project review information plays an important role in the recommendation of review experts. In this paper, we aim to determine review expert's rating by using the historical rating records and the final decisi...
The project review information plays an important role in the recommendation of review experts. In this paper, we aim to determine review expert's rating by using the historical rating records and the final decision results on the previous projects, and by means of some rules, we construct a rating matrix for projects and experts. For the data sparseness problem of the rating matrix and the 'cold start' problem of new expert recommendation, we assume that those projects/experts with similar topics have similar feature vectors and propose a review expert collaborative recommendation algorithm based on topic relationship. Firstly, we obtain topics of projects/experts based on latent Dirichlet allocation (LDA) model, and build the topic relationship network of projects/experts. Then, through the topic relationship between projects/experts, we find a neighbor collection which shares the largest similarity with target project/expert, and integrate the collection into the collaborative filtering recommendation algorithm based on matrix factorization. Finally, by learning the rating matrix to get feature vectors of the projects and experts, we can predict the ratings that a target project will give candidate review experts, and thus achieve the review expert recommendation. Experiments on real data set show that the proposed method could predict the review expert rating more effectively, and improve the recommendation effect of review experts. © 2014 Chinese Association of Automation.
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关键词
Algorithms
Collaborative
filtering
FACTORIZATION
RATING
STATISTICS
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职称材料
题名
Review Expert Collaborative Recommendation Algorithm Based on Topic Relationship
被引量:
4
1
作者
Shengxiang Gao
Zhengtao Yu
linbin shi
Xin Yan
Haixia Song
机构
School of Information Engineering and Automation and Key Laboratory of Intelligent Information Processing
出处
《IEEE/CAA Journal of Automatica Sinica》
SCIE
EI
2015年第4期403-411,共9页
基金
supported by National Natural Science Foundation of China(611750 68,61472168,61163004)
Natural Science Foundation of Yunnan Province(2013FA130)
Talent Promotion Project of Ministry of Science and Technology(2014HE001)
文摘
The project review information plays an important role in the recommendation of review experts. In this paper, we aim to determine review expert's rating by using the historical rating records and the final decision results on the previous projects, and by means of some rules, we construct a rating matrix for projects and experts. For the data sparseness problem of the rating matrix and the 'cold start' problem of new expert recommendation, we assume that those projects/experts with similar topics have similar feature vectors and propose a review expert collaborative recommendation algorithm based on topic relationship. Firstly, we obtain topics of projects/experts based on latent Dirichlet allocation (LDA) model, and build the topic relationship network of projects/experts. Then, through the topic relationship between projects/experts, we find a neighbor collection which shares the largest similarity with target project/expert, and integrate the collection into the collaborative filtering recommendation algorithm based on matrix factorization. Finally, by learning the rating matrix to get feature vectors of the projects and experts, we can predict the ratings that a target project will give candidate review experts, and thus achieve the review expert recommendation. Experiments on real data set show that the proposed method could predict the review expert rating more effectively, and improve the recommendation effect of review experts. © 2014 Chinese Association of Automation.
关键词
Algorithms
Collaborative
filtering
FACTORIZATION
RATING
STATISTICS
Keywords
Review expert recommendation
topic relationship
collaborative filtering
matrix factorization
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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Review Expert Collaborative Recommendation Algorithm Based on Topic Relationship
Shengxiang Gao
Zhengtao Yu
linbin shi
Xin Yan
Haixia Song
《IEEE/CAA Journal of Automatica Sinica》
SCIE
EI
2015
4
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下载PDF
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