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Latent sentiment detection in Online Social Networks: A communications-oriented view

机译:在线社交网络中的潜在情感检测:面向通信的视图

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In this paper, we consider the problem of latent sentiment detection in Online Social Networks such as Twitter. Modeling the underlying social network as an Ising prior, we demonstrate the effect that the underlying social network structure has on the performance of a trivial sentiment detector. In doing so, we introduce a novel communications-oriented framework for characterizing the probability of error and the associated error exponent, based on information theoretic analysis. We study the variation of the calculated error exponent for several stylized network topologies such as the complete network, the star network and the closed-chain network, and show the importance of the network structure in determining detection performance.
机译:在本文中,我们考虑了诸如Twitter之类的在线社交网络中潜在情感检测的问题。将基础社交网络建模为Ising先验模型,我们演示了基础社交网络结构对琐碎的情感检测器的性能的影响。为此,我们基于信息理论分析,介绍了一种新颖的面向通信的框架,用于描述错误概率和相关的错误指数。我们研究了几种风格化网络拓扑(例如完整网络,星形网络和闭链网络)的计算误差指数的变化,并显示了网络结构在确定检测性能中的重要性。

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