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Augmenting Semantic Lexicons Using Word Embeddings and Transfer Learning
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In: Front Artif Intell (2022)
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Quantifying language changes surrounding mental health on Twitter ...
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The incel lexicon: Deciphering the emergent cryptolect of a global misogynistic community ...
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Augmenting semantic lexicons using word embeddings and transfer learning ...
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Generalized word shift graphs: a method for visualizing and explaining pairwise comparisons between texts
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In: Springer Berlin Heidelberg (2021)
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Local information sources received the most attention from Puerto Ricans during the aftermath of Hurricane Maria
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In: PLoS One (2021)
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Storywrangler: A massive exploratorium for sociolinguistic, cultural, socioeconomic, and political timelines using Twitter
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In: Sci Adv (2021)
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The growing amplification of social media: measuring temporal and social contagion dynamics for over 150 languages on Twitter for 2009–2020
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In: EPJ Data Sci (2021)
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How the world’s collective attention is being paid to a pandemic: COVID-19 related n-gram time series for 24 languages on Twitter
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In: PLoS One (2021)
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Local information sources received the most attention from Puerto Ricans during the aftermath of Hurricane María ...
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Storywrangler: A massive exploratorium for sociolinguistic, cultural, socioeconomic, and political timelines using Twitter ...
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Hahahahaha, Duuuuude, Yeeessss!: A two-parameter characterization of stretchable words and the dynamics of mistypings and misspellings
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In: PLoS One (2020)
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Fame and Ultrafame: Measuring and comparing daily levels of `being talked about' for United States' presidents, their rivals, God, countries, and K-pop ...
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Forecasting the onset and course of mental illness with Twitter data
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The Lexicocalorimeter: Gauging public health through caloric input and output on social media
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Forecasting the onset and course of mental illness with Twitter data
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Forecasting the onset and course of mental illness with Twitter data ...
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What we write about when we write about causality: Features of causal statements across large-scale social discourse ...
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