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A hybrid recommendation model in social media based on deep emotion analysis and multi-source view fusion

机译:基于深度情感分析和多源视图融合的社交媒体混合推荐模型

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The recommendation system is an effective means to solve the information overload problem that exists in social networks, which is also one of the most common applications of big data technology. Thus, the matrix decomposition recommendation model based on scoring data has been extensively studied and applied in recent years, but the data sparsity problem affects the recommendation quality of the model. To this end, this paper proposes a hybrid recommendation model based on deep emotion analysis and multi-source view fusion which makes a personalized recommendation with user-post interaction ratings, implicit feedback and auxiliary information in a hybrid recommendation system. Specifically, the HITS algorithm is used to process the data set, which can filter out the users and posts with high influence and eliminate most of the low-quality users and posts. Secondly, the calculation method of measuring the similarity of candidate posts and the method of calculating K nearest neighbors are designed, which solves the problem that the text description information of post content in the recommendation system is difficult to mine and utilize. Then, the cooperative training strategy is used to achieve the fusion of two recommended views, which eliminates the data distribution deviation added to the training data pool in the iterative training. Finally, the performance of the DMHR algorithm proposed in this paper is compared with other state-of-art algorithms based on the Twitter dataset. The experimental results show that the DMHR algorithm has significant improvements in score prediction and recommendation performance.
机译:推荐系统是解决社交网络中存在的信息过载问题的有效手段,这也是大数据技术最常见的应用之一。因此,近年来,基于评分数据的基于评分数据的矩阵分解推荐模型已被广泛研究和应用,但数据稀疏问题会影响模型的推荐质量。为此,本文提出了一种基于深度情感分析和多源视图融合的混合推荐模型,其在混合推荐系统中具有用户后交互额定值,隐性反馈和辅助信息的个性化推荐。具体而言,命中符算法用于处理数据集,可以将用户和帖子滤除高影响力并消除大多数低质量用户和帖子。其次,设计了测量候选帖子相似性的计算方法和计算k最近邻居的计算方法,这解决了推荐系统中帖子内容的文本描述信息难以挖掘和利用的问题。然后,合作培训策略用于实现两个推荐视图的融合,这消除了在迭代培训中添加到培训数据池中的数据分发偏差。最后,将本文提出的DMHR算法的性能与基于Twitter数据集的其他最先义的算法进行比较。实验结果表明,DMHR算法在得分预测和推荐性能方面具有显着的改进。

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