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Analyzing Linguistic Differences between Owner and Staff Attributed Tweets

2019-07-01ACL 2019Code Available0· sign in to hype

Daniel Preo{\c{t}}iuc-Pietro, Rita Devlin Marier

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Abstract

Research on social media has to date assumed that all posts from an account are authored by the same person. In this study, we challenge this assumption and study the linguistic differences between posts signed by the account owner or attributed to their staff. We introduce a novel data set of tweets posted by U.S. politicians who self-reported their tweets using a signature. We analyze the linguistic topics and style features that distinguish the two types of tweets. Predictive results show that we are able to predict owner and staff attributed tweets with good accuracy, even when not using any training data from that account.

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