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Link Prediction Based on Random Forest in Signed Social Networks

机译:签约社交网络中基于随机森林的链接预测

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The social network considering both positive (like, support, trust, etc.) and negative (dislike, opposition, distrust, etc.) relationships is called signed social network, the edge sign prediction problem of which has an important application value in the friend recommendation system. We, for the first time, apply random forest to predicting the signs of edges in the signed network drawn from Wikipedia, and achieve the accuracy over 85% (balanced data), which improves the prediction accuracy by nearly 5% over traditional algorithm, indeed, our result has outperformed most existing methods.
机译:同时考虑正面(如支持,信任等)和负面(不喜欢,对立,不信任等)关系的社交网络称为有符号社交网络,其边缘符号预测问题在朋友中具有重要的应用价值。推荐系统。我们第一次将随机森林应用于从Wikipedia提取的签名网络中边缘的符号预测,实现了超过85%的精度(平衡数据),这比传统算法的预测精度提高了近5%。 ,我们的结果优于大多数现有方法。

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