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A topic sentiment based method for friend recommendation in online social networks via matrix factorization

机译:基于主题情感的基于矩阵分解的在线社交网络好友推荐方法

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Data sparsity and prediction quality have been recognized as the crucial challenges in recommender system. With the expansion of social network data, social network analysis is becoming more and more important. Traditional Recommendation System assumes that users are independent and distributed equally, which ignores the social interaction or connection among users. In order to solve the prediction quality of friend recommendation in social networks, a user recommendation algorithm for social networks based on sentiment analysis and matrix factorization is proposed in this paper. This method is based on the traditional matrix factorization model. By integrating Sentiment (S), Important (I) and Objective (O) of user topic content in the social network, this paper proposes the approach base on sentiment analysis and matrix factorization to solve the poor prediction accuracy by employing social network. SIO model solves the problem that users in social networks can't score the content of topics. Usertopic matrix is constructed by SIO model. Combining the SIO model with matrix factorization, algorithm called SIO-TMF algorithm is proposed. Applying this method on social network, comparing with some traditional recommendation algorithms from four aspects: accuracy, diversity, novelty and coverage, the experimental results show that the proposed method improves the prediction quality of recommender system. (C) 2019 Published by Elsevier Inc.
机译:数据稀疏性和预测质量已被视为推荐系统中的关键挑战。随着社交网络数据的扩展,社交网络分析变得越来越重要。传统的推荐系统假定用户是独立的且分布均匀的,这忽略了用户之间的社交互动或联系。为了解决社交网络中好友推荐的预测质量问题,提出了一种基于情感分析和矩阵分解的社交网络用户推荐算法。该方法基于传统的矩阵分解模型。通过在社交网络中整合用户主题内容的情感(S),重要(I)和目标(O),提出了一种基于情感分析和矩阵分解的方法,以利用社交网络解决较差的预测精度。 SIO模型解决了社交网络用户无法对主题内容进行评分的问题。用户主题矩阵由SIO模型构建。将SIO模型与矩阵分解相结合,提出了SIO-TMF算法。该方法在社交网络上的应用,从准确性,多样性,新颖性和覆盖率四个方面与一些传统推荐算法进行比较,实验结果表明,该方法提高了推荐系统的预测质量。 (C)2019由Elsevier Inc.发布

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