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Prediction of Age, Sentiment, and Connectivity from Social Media Text

机译:通过社交媒体文本预测年龄,情感和连通性

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Social media corpora, including the textual output of blogs, forums, and messaging applications, provide fertile ground for linguistic analysis material diverse in topic and style, and at Web scale. We investigate manifest properties of textual messages, including latent topics, psy-cholinguistic features, and author mood, of a large corpus of blog posts, to analyze the impact of age, emotion, and social connectivity. These properties are found to be significantly different across the examined cohorts, which suggest discriminative features for a number of useful classification tasks. We build binary classifiers for old versus young bloggers, social versus solo bloggers, and happy versus sad posts with high performance. Analysis of discriminative features shows that age turns upon choice of topic, whereas sentiment orientation is evidenced by linguistic style. Good prediction is achieved for social connectivity using topic and linguistic features, leaving tagged mood a modest role in all classifications.
机译:社交媒体语料库,包括博客,论坛和消息传递应用程序的文本输出,为主题和样式以及网络规模不同的语言分析材料提供了沃土。我们调查了大量博客文章的文本消息的明显属性,包括潜在主题,心理-语言特征和作者情绪,以分析年龄,情感和社交联系的影响。发现这些属性在所检查的同类人群中有显着差异,这为许多有用的分类任务提供了区别特征。我们针对老年和年轻博客作者,社交博客与个人博客作者以及幸福与悲伤的高性能博客建立二进制分类器。对歧视性特征的分析表明,年龄取决于话题的选择,而情感倾向则由语言风格证明。使用主题和语言功能,可以很好地预测社交联系,而在所有分类中,带标签的情绪都不起眼。

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