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Network Quantification Despite Biased Labels

机译:标签偏重的网络量化

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The increasing availability of participatory web and social media presents enormous opportunities to study human relations and collective behaviors. Many applications involving decision making want to obtain certain generalized properties about the population in a network, such as the proportion of actors given a category, instead of the category of individuals. While data mining and machine learning researchers have developed many methods for link-based classification or relational learning, most are optimized to classify individual nodes in a network. In order to accurately estimate the prevalence of one class in a network, some quantification method has to be used. In this work, two kinds of approaches are presented: quantification based on classification or quantification based on link analysis. Extensive experiments are conducted on several representative network data, with interesting findings reported concerning efficacy and robustness of different quantification methods, providing insights to further quantify the ebb and flow of online collective behaviors at macro-level.
机译:参与性网络和社交媒体的可用性不断提高,为研究人际关系和集体行为提供了巨大的机会。许多涉及决策的应用程序都希望获得有关网络中人口的某些通用属性,例如指定类别的参与者比例,而不是个人类别。尽管数据挖掘和机器学习研究人员开发了许多用于基于链接的分类或关系学习的方法,但大多数方法都经过优化以对网络中的各个节点进行分类。为了准确地估计网络中一种类别的流行,必须使用某种量化方法。在这项工作中,提出了两种方法:基于分类的量化或基于链接分析的量化。在几个有代表性的网络数据上进行了广泛的实验,报告了有趣的发现,涉及不同量化方法的功效和鲁棒性,这些见解为进一步量化宏观集体在线行为的潮起潮落提供了见识。

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