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Some Syntax-Only Text Feature Extraction and Analysis Methods for Social Media Data

机译:一些语法的文本特征提取和社交媒体数据分析方法

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Automated characterization of online social behavior is becoming increasingly important as day-to-day human interaction migrates from expensive "real world" encounters to less expensive virtual interactions over computing networks. The effective automated characterization of human interaction in social media has important political, economic, social applications. New analytic concepts are presented for the extraction and enhancement of salient numeric features from unstructured text. These concepts employ relatively simple syntactic metrics for characterizing and distinguishing human and automated social media posting behaviors. The concepts are domain agnostic, and are empirically demonstrated using posted text from a particular social medium (Twitter). An innovation uses a feature-imputation regression method to perform feature sensitivity analysis.
机译:随着日常的人类互动从昂贵的“现实世界”遭遇到计算网络的昂贵虚拟交互迁移到昂贵的“现实世界”迁移,自动表征正在变得越来越重要。社会媒体人类互动的有效自动表征具有重要的政治,经济,社会应用。提取新的分析概念,提取和增强了非结构化文本的突出数字特征。这些概念采用了相对简单的句法指标,用于表征和区分人类和自动化社交媒体发布行为。概念是域名不可知论者,并且经过从特定社交媒介(Twitter)的发布文本的经验证明。创新使用特征估算回归方法来执行特征灵敏度分析。

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