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Estimating Tie Strength in Follower Networks to Measure Brand Perceptions

机译:估算跟随网络中的绑架力量以测量品牌看法

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As public entities like brands and politicians increasingly rely on social media to engage their constituents, analyzing who follows them can reveal information about how they are perceived. Whereas most prior work considers following networks as unweighted directed graphs, in this paper we use a tie strength model to place weights on follow links to estimate the strength of relationship between users. We use conversational signals (retweets, mentions) as a proxy class label for a binary classification problem, using social and linguistic features to estimate tie strength. We then apply this approach to a case study estimating how brands are perceived with respect to certain issues (e.g., how environmentally friendly is Patagonia perceived to be?). We compute weighted follower overlap scores to measure the similarity between brands and exemplar accounts (e.g., environmental non-profits), finding that the tie strength scores can provide more nuanced estimates of consumer perception.
机译:作为像品牌和政客一样的公共实体越来越依赖社交媒体来吸引他们的成分,遵循他们的分析可以透露他们如何被感知的信息。然而,大多数事先工作都认为随着未加权的指示图,而在本文中考虑了未加权的针对性图,我们使用绑架强度模型来放置权重,以遵循链接来估计用户之间的关系强度。我们使用社会和语言特征来估算绑定力的人工和语言特征来使用会话信号(转发,提到)作为代理类标签。然后,我们将这种方法应用于案例研究,估计品牌如何对某些问题感知(例如,对环境友好是如何感知的巴塔哥尼亚?)。我们计算加权跟随器重叠分数以衡量品牌和示例账户之间的相似性(例如,环境非营利性),发现领带强度分数可以提供更细微的消费者感知估计。

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