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Matrix Factorization Based Recommendation Algorithm for Sharing Patent Resource

机译:基于矩阵分解的共享专利资源推荐算法

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As scientific and technological resources are experiencing information overload, it is quite expensive to find resources that users are interested in exactly. The personalized recommendation system is a good candidate to solve this problem, but data sparseness and the cold starting problem still prevent the application of the recommendation system. Sparse data affects the quality of the similarity measurement and consequently the quality of the recommender system. In this paper, we propose a matrix factorization recommendation algorithm based on similarity calculation(SCMF), which introduces potential similarity relationships to solve the problem of data sparseness. A penalty factor is adopted in the latent item similarity matrix calculation to capture more real relationships furthermore. We compared our approach with other 6 recommendation algorithms and conducted experiments on 5 public data sets. According to the experimental results, the recommendation precision can improve by 2% to 9% versus the traditional best algorithm. As for sparse data sets, the prediction accuracy can also improve by 0.17% to 18%. Besides, our approach was applied to patent resource exploitation provided by the wanfang patents retrieval system. Experimental results show that our method performs better than commonly used algorithms, especially under the cold starting condition.
机译:由于科学和技术资源正在经历信息过载,找到用户对用户感兴趣的资源非常昂贵。个性化推荐系统是解决这个问题的好候选人,但数据稀疏和冷启动问题仍然可以防止推荐系统的应用。稀疏数据会影响相似性测量的质量,从而影响推荐系统的质量。在本文中,我们提出了一种基于相似性计算(SCMF)的矩阵分解推荐算法,这引入了解决数据稀疏问题的潜在相似关系。在潜在的项目相似性矩阵计算中采用了惩罚因素,以捕获更多实际关系。我们将我们的方法与其他6个推荐算法进行了比较,并在5个公共数据集中进行了实验。根据实验结果,建议精度可以提高2%至9%与传统最佳算法相比。对于稀疏数据集,预测精度也可以提高0.17%至18%。此外,我们的方法适用于万芳专利检索系统提供的专利资源开发。实验结果表明,我们的方法比常用算法更好,尤其是在冷启动条件下。

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