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Detecting changes in content and posting time distributions in social media

机译:检测社交媒体内容和发布时间分布的变化

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We address a problem of detecting changes in information posted to social media taking both content and posting time distributions into account. To this end, we introduce a generative model consisting of two components, one for a content distribution and the other for a timing distribution, approximating the shape of the parameter change by a series of step functions. We then propose an efficient algorithm to detect change points by maximizing the likelihood of generating the observed sequence data, which has time complexity almost proportional to the length of observed sequence (possible change points). We experimentally evaluate the method on synthetic data streams and demonstrate the importance of considering both distributions to improve the accuracy. We, further, apply our method to real scoring stream data extracted from a Japanese word-of-mouth communication site for cosmetics and show that it can detect change points and the detected parameter change patterns are interpretable through an in-depth investigation of actual reviews.
机译:我们讨论的检测发布到社交媒体以内容和发布时间分布到账户信息发生变化的问题。为此,我们引入一个生成模型包括两个部件,一个用于为定时分配的内容分发和其他的,由一系列的阶梯函数近似参数变化的形状。然后,我们提出了一种高效的算法通过最大化产生所观察到的序列数据,它具有时间复杂度几乎正比于观察到的序列(可能的变化点)的长度的可能性,以检测变化点。我们通过实验评估对合成数据流的方法,并证明同时考虑分布来提高精度的重要性。我们进一步,运用我们的方法,从日本字的口碑现场提取的化妆品,并表明它可以检测变化点和检测参数的变化规律可解释通过实际审查的深入调查真正的得分数据流。

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