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Estimating political leanings from mass media via graph-signal restoration with negative edges

机译:通过带有负边缘的图形信号恢复来估计大众媒体的政治倾向

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Politicians in the same political party often share the same views on social issues and legislative agendas. By mining patterns in TV news co-appearances and Twitter followers, in this paper we estimate political leanings (left / right) of unknown individuals, and detect outlier politicians who have views different from their colleagues in the same party, from a graph signal processing (GSP) perspective. Specifically, we first construct a similarity graph with politicians as nodes, where a positive edge connects two politicians with sizable shared Twitter followers, and a negative edge connects two politicians appearing in the same TV news segment (and thus likely take opposite stands on the same issue). Given a graph with both positive and negative edges, we propose a new graph-signal smoothness prior based on a constructed generalized graph Laplacian matrix that is guaranteed to be positive semi-definite. We formulate a graph-signal restoration problem that can be solved in closed form. Experimental results show that political leanings of unknown individuals can be reliably estimated and outlier politicians can be detected.
机译:同一政党中的政客在社会问题和立法议程上往往有相同的看法。通过挖掘电视新闻共同出场和Twitter追随者中的模式,在本文中,我们估计了未知个人的政治倾向(左/右),并从图形信号处理中发现了与同党同事观点不同的离群政治人物。 (GSP)角度。具体来说,我们首先构建一个以政客为节点的相似度图,其中,积极的一面将两个政客与大量共享的Twitter追随者联系起来,消极的一面将出现在同一电视新闻片段中的两个政客联系起来(因此很可能在同一新闻立场上采取相反的立场问题)。给定一个同时具有正边缘和负边缘的图,我们基于构造的广义图Laplacian矩阵提出了一种新的图信号平滑度先验,该矩阵保证是正半定的。我们制定了可以以封闭形式解决的图形信号恢复问题。实验结果表明,可以可靠地估计未知个人的政治倾向,并可以发现异常的政治人物。

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