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User Similarity Determination in Social Networks

机译:社交网络中的用户相似性确定

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Online social networks have provided a promising communication platform for an activity inherently dear to the human heart, to find friends. People are recommended to each other as potential future friends by comparing their profiles which require numerical quantifiers to determine the extent of user similarity. From similarity-based methods to artificial intelligent machine learning methods, several metrics enable us to characterize social networks from different perspectives. This research focuses on the collaborative employment of neighbor based and graphical distance-based similarity measurement methods with text classification tools such as the feature matrix and feature vector. Likeminded nodes are predicted accurately and effectively as compared to other methods.
机译:在线社交网络提供了一个有希望的交流平台,可以开展人心固有的一项活动来寻找朋友。通过比较需要数字量词来确定用户相似程度的个人资料,将人们推荐为潜在的未来朋友。从基于相似度的方法到人工智能机器学习方法,多种指标使我们能够从不同角度表征社交网络。这项研究的重点是通过文本分类工具(例如特征矩阵和特征向量)协同使用基于邻居和基于图形距离的相似性度量方法。与其他方法相比,可以准确,有效地预测相似节点。

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