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Dynamic Time Warping Distance for Message Propagation Classification in Twitter

机译:Twitter中的消息传播分类的动态时间翘曲距离

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Social messages classification is a research domain that has attracted the attention of many researchers in these last years. Indeed, the social message is different from ordinary text because it has some special characteristics like its shortness. Then the development of new approaches for the processing of the social message is now essential to make its classification more efficient. In this paper, we are mainly interested in the classification of social messages based on their spreading on online social networks (OSN). We proposed a new distance metric based on the Dynamic Time Warping distance and we use it with the probabilistic and the evidential k Nearest Neighbors (k-NN) classifiers to classify propagation networks (PrNets) of messages. The propagation network is a directed acyclic graph (DAG) that is used to record propagation traces of the message, the traversed links and their types. We tested the proposed metric with the chosen k-NN classifiers on real world propagation traces that were collected from Twitter social network and we got good classification accuracies.
机译:社交信息分类是一项研究领域,它在过去几年中引起了许多研究人员的注意。实际上,社交信息与普通文本不同,因为它具有一些特殊特征,如它的短缺。然后,开发社会信息处理的新方法现在必须更有效地进行分类。在本文中,我们主要对社交信息的分类基于对在线社交网络(OSN)的传播。我们提出了基于动态时间弯曲距离的新的距离度量,我们用概率及证据K最近邻(K-NN)分类的消息进行分类传播网络(PrNets)使用它。传播网络是一个定向的非循环图(DAG),用于记录消息的传播痕迹,遍历链接及其类型。我们在从Twitter社交网络收集的真实世界传播迹线上使用所选的K-NN分类器测试了所提出的公制,我们得到了良好的分类精度。

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