Spoiler alert: Machine learning approaches to detect social media posts with revelatory information
Author(s) -
BoydGraber Jordan,
Glasgow Kimberly,
Zajac Jackie Sauter
Publication year - 2013
Publication title -
proceedings of the american society for information science and technology
Language(s) - English
Resource type - Journals
eISSN - 1550-8390
pISSN - 0044-7870
DOI - 10.1002/meet.14505001073
Subject(s) - social media , computer science , metadata , task (project management) , artificial intelligence , world wide web , the internet , natural language processing , information retrieval , human–computer interaction , machine learning , engineering , systems engineering
Spoilers—critical plot information about works of fiction that “spoil” a viewer's enjoyment—have prompted elaborate conventions on social media to allow readers to insulate themselves from spoilers. However, these solutions depend on the conscientiousness and rigor of Internet posters and are thus an imperfect system. We create an automatic alternative that could alert users when a piece of text contains a spoiler. An automated spoiler detector serves not only as an additional protection against spoilers, but it also contributes to important problems in computational linguistics. We develop a new dataset of spoilers gathered from social media and create automatic classifiers using machine learning techniques. After establishing baseline performance using lexical features, we develop metadata‐based features that substantially improve performance on the spoiler detection task.
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